From 6eb6bc486027d3d5304a94cfb417a2257f2b6fd9 Mon Sep 17 00:00:00 2001 From: Mario Mulansky Date: Tue, 3 Feb 2015 12:19:53 +0100 Subject: moved cython functions to subdirectory --- pyspike/cython/python_backend.py | 485 +++++++++++++++++++++++++++++++++++++++ 1 file changed, 485 insertions(+) create mode 100644 pyspike/cython/python_backend.py (limited to 'pyspike/cython/python_backend.py') diff --git a/pyspike/cython/python_backend.py b/pyspike/cython/python_backend.py new file mode 100644 index 0000000..481daf9 --- /dev/null +++ b/pyspike/cython/python_backend.py @@ -0,0 +1,485 @@ +""" python_backend.py + +Collection of python functions that can be used instead of the cython +implementation. + +Copyright 2014, Mario Mulansky + +Distributed under the BSD License + +""" + +import numpy as np + + +############################################################ +# isi_distance_python +############################################################ +def isi_distance_python(s1, s2): + """ Plain Python implementation of the isi distance. + """ + # compute the interspike interval + nu1 = s1[1:] - s1[:-1] + nu2 = s2[1:] - s2[:-1] + + # compute the isi-distance + spike_events = np.empty(len(nu1) + len(nu2)) + spike_events[0] = s1[0] + # the values have one entry less - the number of intervals between events + isi_values = np.empty(len(spike_events) - 1) + # add the distance of the first events + # isi_values[0] = nu1[0]/nu2[0] - 1.0 if nu1[0] <= nu2[0] \ + # else 1.0 - nu2[0]/nu1[0] + isi_values[0] = abs(nu1[0] - nu2[0]) / max(nu1[0], nu2[0]) + index1 = 0 + index2 = 0 + index = 1 + while True: + # check which spike is next - from s1 or s2 + if s1[index1+1] < s2[index2+1]: + index1 += 1 + # break condition relies on existence of spikes at T_end + if index1 >= len(nu1): + break + spike_events[index] = s1[index1] + elif s1[index1+1] > s2[index2+1]: + index2 += 1 + if index2 >= len(nu2): + break + spike_events[index] = s2[index2] + else: # s1[index1 + 1] == s2[index2 + 1] + index1 += 1 + index2 += 1 + if (index1 >= len(nu1)) or (index2 >= len(nu2)): + break + spike_events[index] = s1[index1] + # compute the corresponding isi-distance + isi_values[index] = abs(nu1[index1] - nu2[index2]) / \ + max(nu1[index1], nu2[index2]) + index += 1 + # the last event is the interval end + spike_events[index] = s1[-1] + # use only the data added above + # could be less than original length due to equal spike times + return spike_events[:index + 1], isi_values[:index] + + +############################################################ +# get_min_dist +############################################################ +def get_min_dist(spike_time, spike_train, start_index=0): + """ Returns the minimal distance |spike_time - spike_train[i]| + with i>=start_index. + """ + d = abs(spike_time - spike_train[start_index]) + start_index += 1 + while start_index < len(spike_train): + d_temp = abs(spike_time - spike_train[start_index]) + if d_temp > d: + break + else: + d = d_temp + start_index += 1 + return d + + +############################################################ +# spike_distance_python +############################################################ +def spike_distance_python(spikes1, spikes2): + """ Computes the instantaneous spike-distance S_spike (t) of the two given + spike trains. The spike trains are expected to have auxiliary spikes at the + beginning and end of the interval. Use the function add_auxiliary_spikes to + add those spikes to the spike train. + Args: + - spikes1, spikes2: ordered arrays of spike times with auxiliary spikes. + Returns: + - PieceWiseLinFunc describing the spike-distance. + """ + # check for auxiliary spikes - first and last spikes should be identical + assert spikes1[0] == spikes2[0], \ + "Given spike trains seems not to have auxiliary spikes!" + assert spikes1[-1] == spikes2[-1], \ + "Given spike trains seems not to have auxiliary spikes!" + # shorter variables + t1 = spikes1 + t2 = spikes2 + + spike_events = np.empty(len(t1) + len(t2) - 2) + spike_events[0] = t1[0] + y_starts = np.empty(len(spike_events) - 1) + y_ends = np.empty(len(spike_events) - 1) + + index1 = 0 + index2 = 0 + index = 1 + dt_p1 = 0.0 + dt_f1 = get_min_dist(t1[1], t2, 0) + dt_p2 = 0.0 + dt_f2 = get_min_dist(t2[1], t1, 0) + isi1 = max(t1[1]-t1[0], t1[2]-t1[1]) + isi2 = max(t2[1]-t2[0], t2[2]-t2[1]) + s1 = dt_f1*(t1[1]-t1[0])/isi1 + s2 = dt_f2*(t2[1]-t2[0])/isi2 + y_starts[0] = (s1*isi2 + s2*isi1) / ((isi1+isi2)**2/2) + while True: + # print(index, index1, index2) + if t1[index1+1] < t2[index2+1]: + index1 += 1 + # break condition relies on existence of spikes at T_end + if index1+1 >= len(t1): + break + spike_events[index] = t1[index1] + # first calculate the previous interval end value + dt_p1 = dt_f1 # the previous time was the following time before + s1 = dt_p1 + s2 = (dt_p2*(t2[index2+1]-t1[index1]) + + dt_f2*(t1[index1]-t2[index2])) / isi2 + y_ends[index-1] = (s1*isi2 + s2*isi1) / ((isi1+isi2)**2/2) + # now the next interval start value + dt_f1 = get_min_dist(t1[index1+1], t2, index2) + isi1 = t1[index1+1]-t1[index1] + # s2 is the same as above, thus we can compute y2 immediately + y_starts[index] = (s1*isi2 + s2*isi1) / ((isi1+isi2)**2/2) + elif t1[index1+1] > t2[index2+1]: + index2 += 1 + if index2+1 >= len(t2): + break + spike_events[index] = t2[index2] + # first calculate the previous interval end value + dt_p2 = dt_f2 # the previous time was the following time before + s1 = (dt_p1*(t1[index1+1]-t2[index2]) + + dt_f1*(t2[index2]-t1[index1])) / isi1 + s2 = dt_p2 + y_ends[index-1] = (s1*isi2 + s2*isi1) / ((isi1+isi2)**2/2) + # now the next interval start value + dt_f2 = get_min_dist(t2[index2+1], t1, index1) + #s2 = dt_f2 + isi2 = t2[index2+1]-t2[index2] + # s2 is the same as above, thus we can compute y2 immediately + y_starts[index] = (s1*isi2 + s2*isi1) / ((isi1+isi2)**2/2) + else: # t1[index1+1] == t2[index2+1] - generate only one event + index1 += 1 + index2 += 1 + if (index1+1 >= len(t1)) or (index2+1 >= len(t2)): + break + assert dt_f2 == 0.0 + assert dt_f1 == 0.0 + spike_events[index] = t1[index1] + y_ends[index-1] = 0.0 + y_starts[index] = 0.0 + dt_p1 = 0.0 + dt_p2 = 0.0 + dt_f1 = get_min_dist(t1[index1+1], t2, index2) + dt_f2 = get_min_dist(t2[index2+1], t1, index1) + isi1 = t1[index1+1]-t1[index1] + isi2 = t2[index2+1]-t2[index2] + index += 1 + # the last event is the interval end + spike_events[index] = t1[-1] + # the ending value of the last interval + isi1 = max(t1[-1]-t1[-2], t1[-2]-t1[-3]) + isi2 = max(t2[-1]-t2[-2], t2[-2]-t2[-3]) + s1 = dt_p1*(t1[-1]-t1[-2])/isi1 + s2 = dt_p2*(t2[-1]-t2[-2])/isi2 + y_ends[index-1] = (s1*isi2 + s2*isi1) / ((isi1+isi2)**2/2) + # use only the data added above + # could be less than original length due to equal spike times + return spike_events[:index+1], y_starts[:index], y_ends[:index] + + +############################################################ +# cumulative_sync_python +############################################################ +def cumulative_sync_python(spikes1, spikes2): + + def get_tau(spikes1, spikes2, i, j): + return 0.5*min([spikes1[i]-spikes1[i-1], spikes1[i+1]-spikes1[i], + spikes2[j]-spikes2[j-1], spikes2[j+1]-spikes2[j]]) + N1 = len(spikes1) + N2 = len(spikes2) + i = 0 + j = 0 + n = 0 + st = np.zeros(N1 + N2 - 2) + c = np.zeros(N1 + N2 - 3) + c[0] = 0 + st[0] = 0 + while n < N1 + N2: + if spikes1[i+1] < spikes2[j+1]: + i += 1 + n += 1 + tau = get_tau(spikes1, spikes2, i, j) + st[n] = spikes1[i] + if spikes1[i]-spikes2[j] > tau: + c[n] = c[n-1] + else: + c[n] = c[n-1]+1 + elif spikes1[i+1] > spikes2[j+1]: + j += 1 + n += 1 + tau = get_tau(spikes1, spikes2, i, j) + st[n] = spikes2[j] + if spikes2[j]-spikes1[i] > tau: + c[n] = c[n-1] + else: + c[n] = c[n-1]+1 + else: # spikes1[i+1] = spikes2[j+1] + j += 1 + i += 1 + if i == N1-1 or j == N2-1: + break + n += 1 + st[n] = spikes1[i] + c[n] = c[n-1] + n += 1 + st[n] = spikes1[i] + c[n] = c[n-1]+1 + c[0] = 0 + st[0] = spikes1[0] + st[-1] = spikes1[-1] + + return st, c + + +############################################################ +# coincidence_python +############################################################ +def coincidence_python(spikes1, spikes2): + + def get_tau(spikes1, spikes2, i, j): + m = 1E100 # some huge number + if i < len(spikes1)-2: + m = min(m, spikes1[i+1]-spikes1[i]) + if j < len(spikes2)-2: + m = min(m, spikes2[j+1]-spikes2[j]) + if i > 1: + m = min(m, spikes1[i]-spikes1[i-1]) + if j > 1: + m = min(m, spikes2[j]-spikes2[j-1]) + return 0.5*m + N1 = len(spikes1) + N2 = len(spikes2) + i = 0 + j = 0 + n = 0 + st = np.zeros(N1 + N2 - 2) # spike times + c = np.zeros(N1 + N2 - 2) # coincidences + mp = np.ones(N1 + N2 - 2) # multiplicity + while n < N1 + N2 - 2: + if spikes1[i+1] < spikes2[j+1]: + i += 1 + n += 1 + tau = get_tau(spikes1, spikes2, i, j) + st[n] = spikes1[i] + if j > 0 and spikes1[i]-spikes2[j] < tau: + # coincidence between the current spike and the previous spike + # both get marked with 1 + c[n] = 1 + c[n-1] = 1 + elif spikes1[i+1] > spikes2[j+1]: + j += 1 + n += 1 + tau = get_tau(spikes1, spikes2, i, j) + st[n] = spikes2[j] + if i > 0 and spikes2[j]-spikes1[i] < tau: + # coincidence between the current spike and the previous spike + # both get marked with 1 + c[n] = 1 + c[n-1] = 1 + else: # spikes1[i+1] = spikes2[j+1] + # advance in both spike trains + j += 1 + i += 1 + if i == N1-1 or j == N2-1: + break + n += 1 + # add only one event, but with coincidence 2 and multiplicity 2 + st[n] = spikes1[i] + c[n] = 2 + mp[n] = 2 + + st = st[:n+2] + c = c[:n+2] + mp = mp[:n+2] + + st[0] = spikes1[0] + st[-1] = spikes1[-1] + c[0] = c[1] + c[-1] = c[-2] + mp[0] = mp[1] + mp[-1] = mp[-2] + + return st, c, mp + + +############################################################ +# add_piece_wise_const_python +############################################################ +def add_piece_wise_const_python(x1, y1, x2, y2): + x_new = np.empty(len(x1) + len(x2)) + y_new = np.empty(len(x_new)-1) + x_new[0] = x1[0] + y_new[0] = y1[0] + y2[0] + index1 = 0 + index2 = 0 + index = 0 + while (index1+1 < len(y1)) and (index2+1 < len(y2)): + index += 1 + # print(index1+1, x1[index1+1], y1[index1+1], x_new[index]) + if x1[index1+1] < x2[index2+1]: + index1 += 1 + x_new[index] = x1[index1] + elif x1[index1+1] > x2[index2+1]: + index2 += 1 + x_new[index] = x2[index2] + else: # x1[index1+1] == x2[index2+1]: + index1 += 1 + index2 += 1 + x_new[index] = x1[index1] + y_new[index] = y1[index1] + y2[index2] + # one array reached the end -> copy the contents of the other to the end + if index1+1 < len(y1): + x_new[index+1:index+1+len(x1)-index1-1] = x1[index1+1:] + y_new[index+1:index+1+len(y1)-index1-1] = y1[index1+1:] + y2[-1] + index += len(x1)-index1-2 + elif index2+1 < len(y2): + x_new[index+1:index+1+len(x2)-index2-1] = x2[index2+1:] + y_new[index+1:index+1+len(y2)-index2-1] = y2[index2+1:] + y1[-1] + index += len(x2)-index2-2 + else: # both arrays reached the end simultaneously + # only the last x-value missing + x_new[index+1] = x1[-1] + # the last value is again the end of the interval + # x_new[index+1] = x1[-1] + # only use the data that was actually filled + + return x_new[:index+2], y_new[:index+1] + + +############################################################ +# add_piece_lin_const_python +############################################################ +def add_piece_wise_lin_python(x1, y11, y12, x2, y21, y22): + x_new = np.empty(len(x1) + len(x2)) + y1_new = np.empty(len(x_new)-1) + y2_new = np.empty_like(y1_new) + x_new[0] = x1[0] + y1_new[0] = y11[0] + y21[0] + index1 = 0 # index for self + index2 = 0 # index for f + index = 0 # index for new + while (index1+1 < len(y11)) and (index2+1 < len(y21)): + # print(index1+1, x1[index1+1], self.y[index1+1], x_new[index]) + if x1[index1+1] < x2[index2+1]: + # first compute the end value of the previous interval + # linear interpolation of the interval + y = y21[index2] + (y22[index2]-y21[index2]) * \ + (x1[index1+1]-x2[index2]) / (x2[index2+1]-x2[index2]) + y2_new[index] = y12[index1] + y + index1 += 1 + index += 1 + x_new[index] = x1[index1] + # and the starting value for the next interval + y1_new[index] = y11[index1] + y + elif x1[index1+1] > x2[index2+1]: + # first compute the end value of the previous interval + # linear interpolation of the interval + y = y11[index1] + (y12[index1]-y11[index1]) * \ + (x2[index2+1]-x1[index1]) / \ + (x1[index1+1]-x1[index1]) + y2_new[index] = y22[index2] + y + index2 += 1 + index += 1 + x_new[index] = x2[index2] + # and the starting value for the next interval + y1_new[index] = y21[index2] + y + else: # x1[index1+1] == x2[index2+1]: + y2_new[index] = y12[index1] + y22[index2] + index1 += 1 + index2 += 1 + index += 1 + x_new[index] = x1[index1] + y1_new[index] = y11[index1] + y21[index2] + # one array reached the end -> copy the contents of the other to the end + if index1+1 < len(y11): + # compute the linear interpolations values + y = y21[index2] + (y22[index2]-y21[index2]) * \ + (x1[index1+1:-1]-x2[index2]) / (x2[index2+1]-x2[index2]) + x_new[index+1:index+1+len(x1)-index1-1] = x1[index1+1:] + y1_new[index+1:index+1+len(y11)-index1-1] = y11[index1+1:]+y + y2_new[index:index+len(y12)-index1-1] = y12[index1:-1] + y + index += len(x1)-index1-2 + elif index2+1 < len(y21): + # compute the linear interpolations values + y = y11[index1] + (y12[index1]-y11[index1]) * \ + (x2[index2+1:-1]-x1[index1]) / \ + (x1[index1+1]-x1[index1]) + x_new[index+1:index+1+len(x2)-index2-1] = x2[index2+1:] + y1_new[index+1:index+1+len(y21)-index2-1] = y21[index2+1:] + y + y2_new[index:index+len(y22)-index2-1] = y22[index2:-1] + y + index += len(x2)-index2-2 + else: # both arrays reached the end simultaneously + # only the last x-value missing + x_new[index+1] = x1[-1] + # finally, the end value for the last interval + y2_new[index] = y12[-1]+y22[-1] + # only use the data that was actually filled + return x_new[:index+2], y1_new[:index+1], y2_new[:index+1] + + +############################################################ +# add_discrete_function_python +############################################################ +def add_discrete_function_python(x1, y1, mp1, x2, y2, mp2): + + x_new = np.empty(len(x1) + len(x2)) + y_new = np.empty_like(x_new) + mp_new = np.empty_like(x_new) + x_new[0] = x1[0] + index1 = 0 + index2 = 0 + index = 0 + while (index1+1 < len(y1)) and (index2+1 < len(y2)): + if x1[index1+1] < x2[index2+1]: + index1 += 1 + index += 1 + x_new[index] = x1[index1] + y_new[index] = y1[index1] + mp_new[index] = mp1[index1] + elif x1[index1+1] > x2[index2+1]: + index2 += 1 + index += 1 + x_new[index] = x2[index2] + y_new[index] = y2[index2] + mp_new[index] = mp2[index2] + else: # x1[index1+1] == x2[index2+1] + index1 += 1 + index2 += 1 + index += 1 + x_new[index] = x1[index1] + y_new[index] = y1[index1] + y2[index2] + mp_new[index] = mp1[index1] + mp2[index2] + # one array reached the end -> copy the contents of the other to the end + if index1+1 < len(y1): + x_new[index+1:index+1+len(x1)-index1-1] = x1[index1+1:] + y_new[index+1:index+1+len(x1)-index1-1] = y1[index1+1:] + mp_new[index+1:index+1+len(x1)-index1-1] = mp1[index1+1:] + index += len(x1)-index1-1 + elif index2+1 < len(y2): + x_new[index+1:index+1+len(x2)-index2-1] = x2[index2+1:] + y_new[index+1:index+1+len(x2)-index2-1] = y2[index2+1:] + mp_new[index+1:index+1+len(x2)-index2-1] = mp2[index2+1:] + index += len(x2)-index2-1 + # else: # both arrays reached the end simultaneously + # x_new[index+1] = x1[-1] + # y_new[index+1] = y1[-1] + y2[-1] + # mp_new[index+1] = mp1[-1] + mp2[-1] + + y_new[0] = y_new[1] + mp_new[0] = mp_new[1] + + # the last value is again the end of the interval + # only use the data that was actually filled + return x_new[:index+1], y_new[:index+1], mp_new[:index+1] + -- cgit v1.2.3