""" Functions for identifying peaks in signals. """ import math import numpy as np from scipy.signal.wavelets import cwt, ricker from scipy.stats import scoreatpercentile from ._peak_finding_utils import ( _local_maxima_1d, _select_by_peak_distance, _peak_prominences, _peak_widths ) __all__ = ['argrelmin', 'argrelmax', 'argrelextrema', 'peak_prominences', 'peak_widths', 'find_peaks', 'find_peaks_cwt'] def _boolrelextrema(data, comparator, axis=0, order=1, mode='clip'): """ Calculate the relative extrema of `data`. Relative extrema are calculated by finding locations where ``comparator(data[n], data[n+1:n+order+1])`` is True. Parameters ---------- data : ndarray Array in which to find the relative extrema. comparator : callable Function to use to compare two data points. Should take two arrays as arguments. axis : int, optional Axis over which to select from `data`. Default is 0. order : int, optional How many points on each side to use for the comparison to consider ``comparator(n,n+x)`` to be True. mode : str, optional How the edges of the vector are treated. 'wrap' (wrap around) or 'clip' (treat overflow as the same as the last (or first) element). Default 'clip'. See numpy.take. Returns ------- extrema : ndarray Boolean array of the same shape as `data` that is True at an extrema, False otherwise. See also -------- argrelmax, argrelmin Examples -------- >>> testdata = np.array([1,2,3,2,1]) >>> _boolrelextrema(testdata, np.greater, axis=0) array([False, False, True, False, False], dtype=bool) """ if((int(order) != order) or (order < 1)): raise ValueError('Order must be an int >= 1') datalen = data.shape[axis] locs = np.arange(0, datalen) results = np.ones(data.shape, dtype=bool) main = data.take(locs, axis=axis, mode=mode) for shift in range(1, order + 1): plus = data.take(locs + shift, axis=axis, mode=mode) minus = data.take(locs - shift, axis=axis, mode=mode) results &= comparator(main, plus) results &= comparator(main, minus) if(~results.any()): return results return results def argrelmin(data, axis=0, order=1, mode='clip'): """ Calculate the relative minima of `data`. Parameters ---------- data : ndarray Array in which to find the relative minima. axis : int, optional Axis over which to select from `data`. Default is 0. order : int, optional How many points on each side to use for the comparison to consider ``comparator(n, n+x)`` to be True. mode : str, optional How the edges of the vector are treated. Available options are 'wrap' (wrap around) or 'clip' (treat overflow as the same as the last (or first) element). Default 'clip'. See numpy.take. Returns ------- extrema : tuple of ndarrays Indices of the minima in arrays of integers. ``extrema[k]`` is the array of indices of axis `k` of `data`. Note that the return value is a tuple even when `data` is 1-D. See Also -------- argrelextrema, argrelmax, find_peaks Notes ----- This function uses `argrelextrema` with np.less as comparator. Therefore, it requires a strict inequality on both sides of a value to consider it a minimum. This means flat minima (more than one sample wide) are not detected. In case of 1-D `data` `find_peaks` can be used to detect all local minima, including flat ones, by calling it with negated `data`. .. versionadded:: 0.11.0 Examples -------- >>> from scipy.signal import argrelmin >>> x = np.array([2, 1, 2, 3, 2, 0, 1, 0]) >>> argrelmin(x) (array([1, 5]),) >>> y = np.array([[1, 2, 1, 2], ... [2, 2, 0, 0], ... [5, 3, 4, 4]]) ... >>> argrelmin(y, axis=1) (array([0, 2]), array([2, 1])) """ return argrelextrema(data, np.less, axis, order, mode) def argrelmax(data, axis=0, order=1, mode='clip'): """ Calculate the relative maxima of `data`. Parameters ---------- data : ndarray Array in which to find the relative maxima. axis : int, optional Axis over which to select from `data`. Default is 0. order : int, optional How many points on each side to use for the comparison to consider ``comparator(n, n+x)`` to be True. mode : str, optional How the edges of the vector are treated. Available options are 'wrap' (wrap around) or 'clip' (treat overflow as the same as the last (or first) element). Default 'clip'. See `numpy.take`. Returns ------- extrema : tuple of ndarrays Indices of the maxima in arrays of integers. ``extrema[k]`` is the array of indices of axis `k` of `data`. Note that the return value is a tuple even when `data` is 1-D. See Also -------- argrelextrema, argrelmin, find_peaks Notes ----- This function uses `argrelextrema` with np.greater as comparator. Therefore, it requires a strict inequality on both sides of a value to consider it a maximum. This means flat maxima (more than one sample wide) are not detected. In case of 1-D `data` `find_peaks` can be used to detect all local maxima, including flat ones. .. versionadded:: 0.11.0 Examples -------- >>> from scipy.signal import argrelmax >>> x = np.array([2, 1, 2, 3, 2, 0, 1, 0]) >>> argrelmax(x) (array([3, 6]),) >>> y = np.array([[1, 2, 1, 2], ... [2, 2, 0, 0], ... [5, 3, 4, 4]]) ... >>> argrelmax(y, axis=1) (array([0]), array([1])) """ return argrelextrema(data, np.greater, axis, order, mode) def argrelextrema(data, comparator, axis=0, order=1, mode='clip'): """ Calculate the relative extrema of `data`. Parameters ---------- data : ndarray Array in which to find the relative extrema. comparator : callable Function to use to compare two data points. Should take two arrays as arguments. axis : int, optional Axis over which to select from `data`. Default is 0. order : int, optional How many points on each side to use for the comparison to consider ``comparator(n, n+x)`` to be True. mode : str, optional How the edges of the vector are treated. 'wrap' (wrap around) or 'clip' (treat overflow as the same as the last (or first) element). Default is 'clip'. See `numpy.take`. Returns ------- extrema : tuple of ndarrays Indices of the maxima in arrays of integers. ``extrema[k]`` is the array of indices of axis `k` of `data`. Note that the return value is a tuple even when `data` is 1-D. See Also -------- argrelmin, argrelmax Notes ----- .. versionadded:: 0.11.0 Examples -------- >>> from scipy.signal import argrelextrema >>> x = np.array([2, 1, 2, 3, 2, 0, 1, 0]) >>> argrelextrema(x, np.greater) (array([3, 6]),) >>> y = np.array([[1, 2, 1, 2], ... [2, 2, 0, 0], ... [5, 3, 4, 4]]) ... >>> argrelextrema(y, np.less, axis=1) (array([0, 2]), array([2, 1])) """ results = _boolrelextrema(data, comparator, axis, order, mode) return np.nonzero(results) def _arg_x_as_expected(value): """Ensure argument `x` is a 1-D C-contiguous array of dtype('float64'). Used in `find_peaks`, `peak_prominences` and `peak_widths` to make `x` compatible with the signature of the wrapped Cython functions. Returns ------- value : ndarray A 1-D C-contiguous array with dtype('float64'). """ value = np.asarray(value, order='C', dtype=np.float64) if value.ndim != 1: raise ValueError('`x` must be a 1-D array') return value def _arg_peaks_as_expected(value): """Ensure argument `peaks` is a 1-D C-contiguous array of dtype('intp'). Used in `peak_prominences` and `peak_widths` to make `peaks` compatible with the signature of the wrapped Cython functions. Returns ------- value : ndarray A 1-D C-contiguous array with dtype('intp'). """ value = np.asarray(value) if value.size == 0: # Empty arrays default to np.float64 but are valid input value = np.array([], dtype=np.intp) try: # Safely convert to C-contiguous array of type np.intp value = value.astype(np.intp, order='C', casting='safe', subok=False, copy=False) except TypeError: raise TypeError("cannot safely cast `peaks` to dtype('intp')") if value.ndim != 1: raise ValueError('`peaks` must be a 1-D array') return value def _arg_wlen_as_expected(value): """Ensure argument `wlen` is of type `np.intp` and larger than 1. Used in `peak_prominences` and `peak_widths`. Returns ------- value : np.intp The original `value` rounded up to an integer or -1 if `value` was None. """ if value is None: # _peak_prominences expects an intp; -1 signals that no value was # supplied by the user value = -1 elif 1 < value: # Round up to a positive integer if not np.can_cast(value, np.intp, "safe"): value = math.ceil(value) value = np.intp(value) else: raise ValueError('`wlen` must be larger than 1, was {}' .format(value)) return value def peak_prominences(x, peaks, wlen=None): """ Calculate the prominence of each peak in a signal. The prominence of a peak measures how much a peak stands out from the surrounding baseline of the signal and is defined as the vertical distance between the peak and its lowest contour line. Parameters ---------- x : sequence A signal with peaks. peaks : sequence Indices of peaks in `x`. wlen : int, optional A window length in samples that optionally limits the evaluated area for each peak to a subset of `x`. The peak is always placed in the middle of the window therefore the given length is rounded up to the next odd integer. This parameter can speed up the calculation (see Notes). Returns ------- prominences : ndarray The calculated prominences for each peak in `peaks`. left_bases, right_bases : ndarray The peaks' bases as indices in `x` to the left and right of each peak. The higher base of each pair is a peak's lowest contour line. Raises ------ ValueError If a value in `peaks` is an invalid index for `x`. Warns ----- PeakPropertyWarning For indices in `peaks` that don't point to valid local maxima in `x`, the returned prominence will be 0 and this warning is raised. This also happens if `wlen` is smaller than the plateau size of a peak. Warnings -------- This function may return unexpected results for data containing NaNs. To avoid this, NaNs should either be removed or replaced. See Also -------- find_peaks Find peaks inside a signal based on peak properties. peak_widths Calculate the width of peaks. Notes ----- Strategy to compute a peak's prominence: 1. Extend a horizontal line from the current peak to the left and right until the line either reaches the window border (see `wlen`) or intersects the signal again at the slope of a higher peak. An intersection with a peak of the same height is ignored. 2. On each side find the minimal signal value within the interval defined above. These points are the peak's bases. 3. The higher one of the two bases marks the peak's lowest contour line. The prominence can then be calculated as the vertical difference between the peaks height itself and its lowest contour line. Searching for the peak's bases can be slow for large `x` with periodic behavior because large chunks or even the full signal need to be evaluated for the first algorithmic step. This evaluation area can be limited with the parameter `wlen` which restricts the algorithm to a window around the current peak and can shorten the calculation time if the window length is short in relation to `x`. However, this may stop the algorithm from finding the true global contour line if the peak's true bases are outside this window. Instead, a higher contour line is found within the restricted window leading to a smaller calculated prominence. In practice, this is only relevant for the highest set of peaks in `x`. This behavior may even be used intentionally to calculate "local" prominences. .. versionadded:: 1.1.0 References ---------- .. [1] Wikipedia Article for Topographic Prominence: https://en.wikipedia.org/wiki/Topographic_prominence Examples -------- >>> from scipy.signal import find_peaks, peak_prominences >>> import matplotlib.pyplot as plt Create a test signal with two overlayed harmonics >>> x = np.linspace(0, 6 * np.pi, 1000) >>> x = np.sin(x) + 0.6 * np.sin(2.6 * x) Find all peaks and calculate prominences >>> peaks, _ = find_peaks(x) >>> prominences = peak_prominences(x, peaks)[0] >>> prominences array([1.24159486, 0.47840168, 0.28470524, 3.10716793, 0.284603 , 0.47822491, 2.48340261, 0.47822491]) Calculate the height of each peak's contour line and plot the results >>> contour_heights = x[peaks] - prominences >>> plt.plot(x) >>> plt.plot(peaks, x[peaks], "x") >>> plt.vlines(x=peaks, ymin=contour_heights, ymax=x[peaks]) >>> plt.show() Let's evaluate a second example that demonstrates several edge cases for one peak at index 5. >>> x = np.array([0, 1, 0, 3, 1, 3, 0, 4, 0]) >>> peaks = np.array([5]) >>> plt.plot(x) >>> plt.plot(peaks, x[peaks], "x") >>> plt.show() >>> peak_prominences(x, peaks) # -> (prominences, left_bases, right_bases) (array([3.]), array([2]), array([6])) Note how the peak at index 3 of the same height is not considered as a border while searching for the left base. Instead, two minima at 0 and 2 are found in which case the one closer to the evaluated peak is always chosen. On the right side, however, the base must be placed at 6 because the higher peak represents the right border to the evaluated area. >>> peak_prominences(x, peaks, wlen=3.1) (array([2.]), array([4]), array([6])) Here, we restricted the algorithm to a window from 3 to 7 (the length is 5 samples because `wlen` was rounded up to the next odd integer). Thus, the only two candidates in the evaluated area are the two neighboring samples and a smaller prominence is calculated. """ x = _arg_x_as_expected(x) peaks = _arg_peaks_as_expected(peaks) wlen = _arg_wlen_as_expected(wlen) return _peak_prominences(x, peaks, wlen) def peak_widths(x, peaks, rel_height=0.5, prominence_data=None, wlen=None): """ Calculate the width of each peak in a signal. This function calculates the width of a peak in samples at a relative distance to the peak's height and prominence. Parameters ---------- x : sequence A signal with peaks. peaks : sequence Indices of peaks in `x`. rel_height : float, optional Chooses the relative height at which the peak width is measured as a percentage of its prominence. 1.0 calculates the width of the peak at its lowest contour line while 0.5 evaluates at half the prominence height. Must be at least 0. See notes for further explanation. prominence_data : tuple, optional A tuple of three arrays matching the output of `peak_prominences` when called with the same arguments `x` and `peaks`. This data are calculated internally if not provided. wlen : int, optional A window length in samples passed to `peak_prominences` as an optional argument for internal calculation of `prominence_data`. This argument is ignored if `prominence_data` is given. Returns ------- widths : ndarray The widths for each peak in samples. width_heights : ndarray The height of the contour lines at which the `widths` where evaluated. left_ips, right_ips : ndarray Interpolated positions of left and right intersection points of a horizontal line at the respective evaluation height. Raises ------ ValueError If `prominence_data` is supplied but doesn't satisfy the condition ``0 <= left_base <= peak <= right_base < x.shape[0]`` for each peak, has the wrong dtype, is not C-contiguous or does not have the same shape. Warns ----- PeakPropertyWarning Raised if any calculated width is 0. This may stem from the supplied `prominence_data` or if `rel_height` is set to 0. Warnings -------- This function may return unexpected results for data containing NaNs. To avoid this, NaNs should either be removed or replaced. See Also -------- find_peaks Find peaks inside a signal based on peak properties. peak_prominences Calculate the prominence of peaks. Notes ----- The basic algorithm to calculate a peak's width is as follows: * Calculate the evaluation height :math:`h_{eval}` with the formula :math:`h_{eval} = h_{Peak} - P \\cdot R`, where :math:`h_{Peak}` is the height of the peak itself, :math:`P` is the peak's prominence and :math:`R` a positive ratio specified with the argument `rel_height`. * Draw a horizontal line at the evaluation height to both sides, starting at the peak's current vertical position until the lines either intersect a slope, the signal border or cross the vertical position of the peak's base (see `peak_prominences` for an definition). For the first case, intersection with the signal, the true intersection point is estimated with linear interpolation. * Calculate the width as the horizontal distance between the chosen endpoints on both sides. As a consequence of this the maximal possible width for each peak is the horizontal distance between its bases. As shown above to calculate a peak's width its prominence and bases must be known. You can supply these yourself with the argument `prominence_data`. Otherwise, they are internally calculated (see `peak_prominences`). .. versionadded:: 1.1.0 Examples -------- >>> from scipy.signal import chirp, find_peaks, peak_widths >>> import matplotlib.pyplot as plt Create a test signal with two overlayed harmonics >>> x = np.linspace(0, 6 * np.pi, 1000) >>> x = np.sin(x) + 0.6 * np.sin(2.6 * x) Find all peaks and calculate their widths at the relative height of 0.5 (contour line at half the prominence height) and 1 (at the lowest contour line at full prominence height). >>> peaks, _ = find_peaks(x) >>> results_half = peak_widths(x, peaks, rel_height=0.5) >>> results_half[0] # widths array([ 64.25172825, 41.29465463, 35.46943289, 104.71586081, 35.46729324, 41.30429622, 181.93835853, 45.37078546]) >>> results_full = peak_widths(x, peaks, rel_height=1) >>> results_full[0] # widths array([181.9396084 , 72.99284945, 61.28657872, 373.84622694, 61.78404617, 72.48822812, 253.09161876, 79.36860878]) Plot signal, peaks and contour lines at which the widths where calculated >>> plt.plot(x) >>> plt.plot(peaks, x[peaks], "x") >>> plt.hlines(*results_half[1:], color="C2") >>> plt.hlines(*results_full[1:], color="C3") >>> plt.show() """ x = _arg_x_as_expected(x) peaks = _arg_peaks_as_expected(peaks) if prominence_data is None: # Calculate prominence if not supplied and use wlen if supplied. wlen = _arg_wlen_as_expected(wlen) prominence_data = _peak_prominences(x, peaks, wlen) return _peak_widths(x, peaks, rel_height, *prominence_data) def _unpack_condition_args(interval, x, peaks): """ Parse condition arguments for `find_peaks`. Parameters ---------- interval : number or ndarray or sequence Either a number or ndarray or a 2-element sequence of the former. The first value is always interpreted as `imin` and the second, if supplied, as `imax`. x : ndarray The signal with `peaks`. peaks : ndarray An array with indices used to reduce `imin` and / or `imax` if those are arrays. Returns ------- imin, imax : number or ndarray or None Minimal and maximal value in `argument`. Raises ------ ValueError : If interval border is given as array and its size does not match the size of `x`. Notes ----- .. versionadded:: 1.1.0 """ try: imin, imax = interval except (TypeError, ValueError): imin, imax = (interval, None) # Reduce arrays if arrays if isinstance(imin, np.ndarray): if imin.size != x.size: raise ValueError('array size of lower interval border must match x') imin = imin[peaks] if isinstance(imax, np.ndarray): if imax.size != x.size: raise ValueError('array size of upper interval border must match x') imax = imax[peaks] return imin, imax def _select_by_property(peak_properties, pmin, pmax): """ Evaluate where the generic property of peaks confirms to an interval. Parameters ---------- peak_properties : ndarray An array with properties for each peak. pmin : None or number or ndarray Lower interval boundary for `peak_properties`. ``None`` is interpreted as an open border. pmax : None or number or ndarray Upper interval boundary for `peak_properties`. ``None`` is interpreted as an open border. Returns ------- keep : bool A boolean mask evaluating to true where `peak_properties` confirms to the interval. See Also -------- find_peaks Notes ----- .. versionadded:: 1.1.0 """ keep = np.ones(peak_properties.size, dtype=bool) if pmin is not None: keep &= (pmin <= peak_properties) if pmax is not None: keep &= (peak_properties <= pmax) return keep def _select_by_peak_threshold(x, peaks, tmin, tmax): """ Evaluate which peaks fulfill the threshold condition. Parameters ---------- x : ndarray A 1-D array which is indexable by `peaks`. peaks : ndarray Indices of peaks in `x`. tmin, tmax : scalar or ndarray or None Minimal and / or maximal required thresholds. If supplied as ndarrays their size must match `peaks`. ``None`` is interpreted as an open border. Returns ------- keep : bool A boolean mask evaluating to true where `peaks` fulfill the threshold condition. left_thresholds, right_thresholds : ndarray Array matching `peak` containing the thresholds of each peak on both sides. Notes ----- .. versionadded:: 1.1.0 """ # Stack thresholds on both sides to make min / max operations easier: # tmin is compared with the smaller, and tmax with the greater thresold to # each peak's side stacked_thresholds = np.vstack([x[peaks] - x[peaks - 1], x[peaks] - x[peaks + 1]]) keep = np.ones(peaks.size, dtype=bool) if tmin is not None: min_thresholds = np.min(stacked_thresholds, axis=0) keep &= (tmin <= min_thresholds) if tmax is not None: max_thresholds = np.max(stacked_thresholds, axis=0) keep &= (max_thresholds <= tmax) return keep, stacked_thresholds[0], stacked_thresholds[1] def find_peaks(x, height=None, threshold=None, distance=None, prominence=None, width=None, wlen=None, rel_height=0.5, plateau_size=None): """ Find peaks inside a signal based on peak properties. This function takes a 1-D array and finds all local maxima by simple comparison of neighboring values. Optionally, a subset of these peaks can be selected by specifying conditions for a peak's properties. Parameters ---------- x : sequence A signal with peaks. height : number or ndarray or sequence, optional Required height of peaks. Either a number, ``None``, an array matching `x` or a 2-element sequence of the former. The first element is always interpreted as the minimal and the second, if supplied, as the maximal required height. threshold : number or ndarray or sequence, optional Required threshold of peaks, the vertical distance to its neighboring samples. Either a number, ``None``, an array matching `x` or a 2-element sequence of the former. The first element is always interpreted as the minimal and the second, if supplied, as the maximal required threshold. distance : number, optional Required minimal horizontal distance (>= 1) in samples between neighbouring peaks. Smaller peaks are removed first until the condition is fulfilled for all remaining peaks. prominence : number or ndarray or sequence, optional Required prominence of peaks. Either a number, ``None``, an array matching `x` or a 2-element sequence of the former. The first element is always interpreted as the minimal and the second, if supplied, as the maximal required prominence. width : number or ndarray or sequence, optional Required width of peaks in samples. Either a number, ``None``, an array matching `x` or a 2-element sequence of the former. The first element is always interpreted as the minimal and the second, if supplied, as the maximal required width. wlen : int, optional Used for calculation of the peaks prominences, thus it is only used if one of the arguments `prominence` or `width` is given. See argument `wlen` in `peak_prominences` for a full description of its effects. rel_height : float, optional Used for calculation of the peaks width, thus it is only used if `width` is given. See argument `rel_height` in `peak_widths` for a full description of its effects. plateau_size : number or ndarray or sequence, optional Required size of the flat top of peaks in samples. Either a number, ``None``, an array matching `x` or a 2-element sequence of the former. The first element is always interpreted as the minimal and the second, if supplied as the maximal required plateau size. .. versionadded:: 1.2.0 Returns ------- peaks : ndarray Indices of peaks in `x` that satisfy all given conditions. properties : dict A dictionary containing properties of the returned peaks which were calculated as intermediate results during evaluation of the specified conditions: * 'peak_heights' If `height` is given, the height of each peak in `x`. * 'left_thresholds', 'right_thresholds' If `threshold` is given, these keys contain a peaks vertical distance to its neighbouring samples. * 'prominences', 'right_bases', 'left_bases' If `prominence` is given, these keys are accessible. See `peak_prominences` for a description of their content. * 'width_heights', 'left_ips', 'right_ips' If `width` is given, these keys are accessible. See `peak_widths` for a description of their content. * 'plateau_sizes', left_edges', 'right_edges' If `plateau_size` is given, these keys are accessible and contain the indices of a peak's edges (edges are still part of the plateau) and the calculated plateau sizes. .. versionadded:: 1.2.0 To calculate and return properties without excluding peaks, provide the open interval ``(None, None)`` as a value to the appropriate argument (excluding `distance`). Warns ----- PeakPropertyWarning Raised if a peak's properties have unexpected values (see `peak_prominences` and `peak_widths`). Warnings -------- This function may return unexpected results for data containing NaNs. To avoid this, NaNs should either be removed or replaced. See Also -------- find_peaks_cwt Find peaks using the wavelet transformation. peak_prominences Directly calculate the prominence of peaks. peak_widths Directly calculate the width of peaks. Notes ----- In the context of this function, a peak or local maximum is defined as any sample whose two direct neighbours have a smaller amplitude. For flat peaks (more than one sample of equal amplitude wide) the index of the middle sample is returned (rounded down in case the number of samples is even). For noisy signals the peak locations can be off because the noise might change the position of local maxima. In those cases consider smoothing the signal before searching for peaks or use other peak finding and fitting methods (like `find_peaks_cwt`). Some additional comments on specifying conditions: * Almost all conditions (excluding `distance`) can be given as half-open or closed intervals, e.g., ``1`` or ``(1, None)`` defines the half-open interval :math:`[1, \\infty]` while ``(None, 1)`` defines the interval :math:`[-\\infty, 1]`. The open interval ``(None, None)`` can be specified as well, which returns the matching properties without exclusion of peaks. * The border is always included in the interval used to select valid peaks. * For several conditions the interval borders can be specified with arrays matching `x` in shape which enables dynamic constrains based on the sample position. * The conditions are evaluated in the following order: `plateau_size`, `height`, `threshold`, `distance`, `prominence`, `width`. In most cases this order is the fastest one because faster operations are applied first to reduce the number of peaks that need to be evaluated later. * While indices in `peaks` are guaranteed to be at least `distance` samples apart, edges of flat peaks may be closer than the allowed `distance`. * Use `wlen` to reduce the time it takes to evaluate the conditions for `prominence` or `width` if `x` is large or has many local maxima (see `peak_prominences`). .. versionadded:: 1.1.0 Examples -------- To demonstrate this function's usage we use a signal `x` supplied with SciPy (see `scipy.misc.electrocardiogram`). Let's find all peaks (local maxima) in `x` whose amplitude lies above 0. >>> import matplotlib.pyplot as plt >>> from scipy.misc import electrocardiogram >>> from scipy.signal import find_peaks >>> x = electrocardiogram()[2000:4000] >>> peaks, _ = find_peaks(x, height=0) >>> plt.plot(x) >>> plt.plot(peaks, x[peaks], "x") >>> plt.plot(np.zeros_like(x), "--", color="gray") >>> plt.show() We can select peaks below 0 with ``height=(None, 0)`` or use arrays matching `x` in size to reflect a changing condition for different parts of the signal. >>> border = np.sin(np.linspace(0, 3 * np.pi, x.size)) >>> peaks, _ = find_peaks(x, height=(-border, border)) >>> plt.plot(x) >>> plt.plot(-border, "--", color="gray") >>> plt.plot(border, ":", color="gray") >>> plt.plot(peaks, x[peaks], "x") >>> plt.show() Another useful condition for periodic signals can be given with the `distance` argument. In this case, we can easily select the positions of QRS complexes within the electrocardiogram (ECG) by demanding a distance of at least 150 samples. >>> peaks, _ = find_peaks(x, distance=150) >>> np.diff(peaks) array([186, 180, 177, 171, 177, 169, 167, 164, 158, 162, 172]) >>> plt.plot(x) >>> plt.plot(peaks, x[peaks], "x") >>> plt.show() Especially for noisy signals peaks can be easily grouped by their prominence (see `peak_prominences`). E.g., we can select all peaks except for the mentioned QRS complexes by limiting the allowed prominence to 0.6. >>> peaks, properties = find_peaks(x, prominence=(None, 0.6)) >>> properties["prominences"].max() 0.5049999999999999 >>> plt.plot(x) >>> plt.plot(peaks, x[peaks], "x") >>> plt.show() And, finally, let's examine a different section of the ECG which contains beat forms of different shape. To select only the atypical heart beats, we combine two conditions: a minimal prominence of 1 and width of at least 20 samples. >>> x = electrocardiogram()[17000:18000] >>> peaks, properties = find_peaks(x, prominence=1, width=20) >>> properties["prominences"], properties["widths"] (array([1.495, 2.3 ]), array([36.93773946, 39.32723577])) >>> plt.plot(x) >>> plt.plot(peaks, x[peaks], "x") >>> plt.vlines(x=peaks, ymin=x[peaks] - properties["prominences"], ... ymax = x[peaks], color = "C1") >>> plt.hlines(y=properties["width_heights"], xmin=properties["left_ips"], ... xmax=properties["right_ips"], color = "C1") >>> plt.show() """ # _argmaxima1d expects array of dtype 'float64' x = _arg_x_as_expected(x) if distance is not None and distance < 1: raise ValueError('`distance` must be greater or equal to 1') peaks, left_edges, right_edges = _local_maxima_1d(x) properties = {} if plateau_size is not None: # Evaluate plateau size plateau_sizes = right_edges - left_edges + 1 pmin, pmax = _unpack_condition_args(plateau_size, x, peaks) keep = _select_by_property(plateau_sizes, pmin, pmax) peaks = peaks[keep] properties["plateau_sizes"] = plateau_sizes properties["left_edges"] = left_edges properties["right_edges"] = right_edges properties = {key: array[keep] for key, array in properties.items()} if height is not None: # Evaluate height condition peak_heights = x[peaks] hmin, hmax = _unpack_condition_args(height, x, peaks) keep = _select_by_property(peak_heights, hmin, hmax) peaks = peaks[keep] properties["peak_heights"] = peak_heights properties = {key: array[keep] for key, array in properties.items()} if threshold is not None: # Evaluate threshold condition tmin, tmax = _unpack_condition_args(threshold, x, peaks) keep, left_thresholds, right_thresholds = _select_by_peak_threshold( x, peaks, tmin, tmax) peaks = peaks[keep] properties["left_thresholds"] = left_thresholds properties["right_thresholds"] = right_thresholds properties = {key: array[keep] for key, array in properties.items()} if distance is not None: # Evaluate distance condition keep = _select_by_peak_distance(peaks, x[peaks], distance) peaks = peaks[keep] properties = {key: array[keep] for key, array in properties.items()} if prominence is not None or width is not None: # Calculate prominence (required for both conditions) wlen = _arg_wlen_as_expected(wlen) properties.update(zip( ['prominences', 'left_bases', 'right_bases'], _peak_prominences(x, peaks, wlen=wlen) )) if prominence is not None: # Evaluate prominence condition pmin, pmax = _unpack_condition_args(prominence, x, peaks) keep = _select_by_property(properties['prominences'], pmin, pmax) peaks = peaks[keep] properties = {key: array[keep] for key, array in properties.items()} if width is not None: # Calculate widths properties.update(zip( ['widths', 'width_heights', 'left_ips', 'right_ips'], _peak_widths(x, peaks, rel_height, properties['prominences'], properties['left_bases'], properties['right_bases']) )) # Evaluate width condition wmin, wmax = _unpack_condition_args(width, x, peaks) keep = _select_by_property(properties['widths'], wmin, wmax) peaks = peaks[keep] properties = {key: array[keep] for key, array in properties.items()} return peaks, properties def _identify_ridge_lines(matr, max_distances, gap_thresh): """ Identify ridges in the 2-D matrix. Expect that the width of the wavelet feature increases with increasing row number. Parameters ---------- matr : 2-D ndarray Matrix in which to identify ridge lines. max_distances : 1-D sequence At each row, a ridge line is only connected if the relative max at row[n] is within `max_distances`[n] from the relative max at row[n+1]. gap_thresh : int If a relative maximum is not found within `max_distances`, there will be a gap. A ridge line is discontinued if there are more than `gap_thresh` points without connecting a new relative maximum. Returns ------- ridge_lines : tuple Tuple of 2 1-D sequences. `ridge_lines`[ii][0] are the rows of the ii-th ridge-line, `ridge_lines`[ii][1] are the columns. Empty if none found. Each ridge-line will be sorted by row (increasing), but the order of the ridge lines is not specified. References ---------- .. [1] Bioinformatics (2006) 22 (17): 2059-2065. :doi:`10.1093/bioinformatics/btl355` Examples -------- >>> data = np.random.rand(5,5) >>> ridge_lines = _identify_ridge_lines(data, 1, 1) Notes ----- This function is intended to be used in conjunction with `cwt` as part of `find_peaks_cwt`. """ if(len(max_distances) < matr.shape[0]): raise ValueError('Max_distances must have at least as many rows ' 'as matr') all_max_cols = _boolrelextrema(matr, np.greater, axis=1, order=1) # Highest row for which there are any relative maxima has_relmax = np.nonzero(all_max_cols.any(axis=1))[0] if(len(has_relmax) == 0): return [] start_row = has_relmax[-1] # Each ridge line is a 3-tuple: # rows, cols,Gap number ridge_lines = [[[start_row], [col], 0] for col in np.nonzero(all_max_cols[start_row])[0]] final_lines = [] rows = np.arange(start_row - 1, -1, -1) cols = np.arange(0, matr.shape[1]) for row in rows: this_max_cols = cols[all_max_cols[row]] # Increment gap number of each line, # set it to zero later if appropriate for line in ridge_lines: line[2] += 1 # XXX These should always be all_max_cols[row] # But the order might be different. Might be an efficiency gain # to make sure the order is the same and avoid this iteration prev_ridge_cols = np.array([line[1][-1] for line in ridge_lines]) # Look through every relative maximum found at current row # Attempt to connect them with existing ridge lines. for ind, col in enumerate(this_max_cols): # If there is a previous ridge line within # the max_distance to connect to, do so. # Otherwise start a new one. line = None if(len(prev_ridge_cols) > 0): diffs = np.abs(col - prev_ridge_cols) closest = np.argmin(diffs) if diffs[closest] <= max_distances[row]: line = ridge_lines[closest] if(line is not None): # Found a point close enough, extend current ridge line line[1].append(col) line[0].append(row) line[2] = 0 else: new_line = [[row], [col], 0] ridge_lines.append(new_line) # Remove the ridge lines with gap_number too high # XXX Modifying a list while iterating over it. # Should be safe, since we iterate backwards, but # still tacky. for ind in range(len(ridge_lines) - 1, -1, -1): line = ridge_lines[ind] if line[2] > gap_thresh: final_lines.append(line) del ridge_lines[ind] out_lines = [] for line in (final_lines + ridge_lines): sortargs = np.array(np.argsort(line[0])) rows, cols = np.zeros_like(sortargs), np.zeros_like(sortargs) rows[sortargs] = line[0] cols[sortargs] = line[1] out_lines.append([rows, cols]) return out_lines def _filter_ridge_lines(cwt, ridge_lines, window_size=None, min_length=None, min_snr=1, noise_perc=10): """ Filter ridge lines according to prescribed criteria. Intended to be used for finding relative maxima. Parameters ---------- cwt : 2-D ndarray Continuous wavelet transform from which the `ridge_lines` were defined. ridge_lines : 1-D sequence Each element should contain 2 sequences, the rows and columns of the ridge line (respectively). window_size : int, optional Size of window to use to calculate noise floor. Default is ``cwt.shape[1] / 20``. min_length : int, optional Minimum length a ridge line needs to be acceptable. Default is ``cwt.shape[0] / 4``, ie 1/4-th the number of widths. min_snr : float, optional Minimum SNR ratio. Default 1. The signal is the value of the cwt matrix at the shortest length scale (``cwt[0, loc]``), the noise is the `noise_perc`th percentile of datapoints contained within a window of `window_size` around ``cwt[0, loc]``. noise_perc : float, optional When calculating the noise floor, percentile of data points examined below which to consider noise. Calculated using scipy.stats.scoreatpercentile. References ---------- .. [1] Bioinformatics (2006) 22 (17): 2059-2065. :doi:`10.1093/bioinformatics/btl355` """ num_points = cwt.shape[1] if min_length is None: min_length = np.ceil(cwt.shape[0] / 4) if window_size is None: window_size = np.ceil(num_points / 20) window_size = int(window_size) hf_window, odd = divmod(window_size, 2) # Filter based on SNR row_one = cwt[0, :] noises = np.zeros_like(row_one) for ind, val in enumerate(row_one): window_start = max(ind - hf_window, 0) window_end = min(ind + hf_window + odd, num_points) noises[ind] = scoreatpercentile(row_one[window_start:window_end], per=noise_perc) def filt_func(line): if len(line[0]) < min_length: return False snr = abs(cwt[line[0][0], line[1][0]] / noises[line[1][0]]) if snr < min_snr: return False return True return list(filter(filt_func, ridge_lines)) def find_peaks_cwt(vector, widths, wavelet=None, max_distances=None, gap_thresh=None, min_length=None, min_snr=1, noise_perc=10, window_size=None): """ Find peaks in a 1-D array with wavelet transformation. The general approach is to smooth `vector` by convolving it with `wavelet(width)` for each width in `widths`. Relative maxima which appear at enough length scales, and with sufficiently high SNR, are accepted. Parameters ---------- vector : ndarray 1-D array in which to find the peaks. widths : sequence 1-D array of widths to use for calculating the CWT matrix. In general, this range should cover the expected width of peaks of interest. wavelet : callable, optional Should take two parameters and return a 1-D array to convolve with `vector`. The first parameter determines the number of points of the returned wavelet array, the second parameter is the scale (`width`) of the wavelet. Should be normalized and symmetric. Default is the ricker wavelet. max_distances : ndarray, optional At each row, a ridge line is only connected if the relative max at row[n] is within ``max_distances[n]`` from the relative max at ``row[n+1]``. Default value is ``widths/4``. gap_thresh : float, optional If a relative maximum is not found within `max_distances`, there will be a gap. A ridge line is discontinued if there are more than `gap_thresh` points without connecting a new relative maximum. Default is the first value of the widths array i.e. widths[0]. min_length : int, optional Minimum length a ridge line needs to be acceptable. Default is ``cwt.shape[0] / 4``, ie 1/4-th the number of widths. min_snr : float, optional Minimum SNR ratio. Default 1. The signal is the value of the cwt matrix at the shortest length scale (``cwt[0, loc]``), the noise is the `noise_perc`th percentile of datapoints contained within a window of `window_size` around ``cwt[0, loc]``. noise_perc : float, optional When calculating the noise floor, percentile of data points examined below which to consider noise. Calculated using `stats.scoreatpercentile`. Default is 10. window_size : int, optional Size of window to use to calculate noise floor. Default is ``cwt.shape[1] / 20``. Returns ------- peaks_indices : ndarray Indices of the locations in the `vector` where peaks were found. The list is sorted. See Also -------- cwt Continuous wavelet transform. find_peaks Find peaks inside a signal based on peak properties. Notes ----- This approach was designed for finding sharp peaks among noisy data, however with proper parameter selection it should function well for different peak shapes. The algorithm is as follows: 1. Perform a continuous wavelet transform on `vector`, for the supplied `widths`. This is a convolution of `vector` with `wavelet(width)` for each width in `widths`. See `cwt`. 2. Identify "ridge lines" in the cwt matrix. These are relative maxima at each row, connected across adjacent rows. See identify_ridge_lines 3. Filter the ridge_lines using filter_ridge_lines. .. versionadded:: 0.11.0 References ---------- .. [1] Bioinformatics (2006) 22 (17): 2059-2065. :doi:`10.1093/bioinformatics/btl355` Examples -------- >>> from scipy import signal >>> xs = np.arange(0, np.pi, 0.05) >>> data = np.sin(xs) >>> peakind = signal.find_peaks_cwt(data, np.arange(1,10)) >>> peakind, xs[peakind], data[peakind] ([32], array([ 1.6]), array([ 0.9995736])) """ widths = np.asarray(widths) if gap_thresh is None: gap_thresh = np.ceil(widths[0]) if max_distances is None: max_distances = widths / 4.0 if wavelet is None: wavelet = ricker cwt_dat = cwt(vector, wavelet, widths, window_size=window_size) ridge_lines = _identify_ridge_lines(cwt_dat, max_distances, gap_thresh) filtered = _filter_ridge_lines(cwt_dat, ridge_lines, min_length=min_length, window_size=window_size, min_snr=min_snr, noise_perc=noise_perc) max_locs = np.asarray([x[1][0] for x in filtered]) max_locs.sort() return max_locs