lab3 / code /provided /preprocessing.py
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import os
import sys
import numpy as np
import json
import joblib
import logging
from os.path import join, dirname
import pickle
def make_delayed(stim, delays, circpad=False):
"""Creates non-interpolated concatenated delayed versions of [stim] with the given [delays]
(in samples).
If [circpad], instead of being padded with zeros, [stim] will be circularly shifted.
"""
nt,ndim = stim.shape
dstims = []
for di,d in enumerate(delays):
dstim = np.zeros((nt, ndim))
if d<0: ## negative delay
dstim[:d,:] = stim[-d:,:]
if circpad:
dstim[d:,:] = stim[:-d,:]
elif d>0:
dstim[d:,:] = stim[:-d,:]
if circpad:
dstim[:d,:] = stim[-d:,:]
else: ## d==0
dstim = stim.copy()
dstims.append(dstim)
return np.hstack(dstims)
def lanczosfun(cutoff, t, window=3):
"""Compute the lanczos function with some cutoff frequency [B] at some time [t].
[t] can be a scalar or any shaped numpy array.
If given a [window], only the lowest-order [window] lobes of the sinc function
will be non-zero.
"""
t = t * cutoff
val = window * np.sin(np.pi*t) * np.sin(np.pi*t/window) / (np.pi**2 * t**2)
val[t==0] = 1.0
val[np.abs(t)>window] = 0.0
return val# / (val.sum() + 1e-10)
def lanczosinterp2D(data, oldtime, newtime, window=3, cutoff_mult=1.0, rectify=False):
"""Interpolates the columns of [data], assuming that the i'th row of data corresponds to
oldtime(i). A new matrix with the same number of columns and a number of rows given
by the length of [newtime] is returned.
The time points in [newtime] are assumed to be evenly spaced, and their frequency will
be used to calculate the low-pass cutoff of the interpolation filter.
[window] lobes of the sinc function will be used. [window] should be an integer.
"""
## Find the cutoff frequency ##
cutoff = 1/np.mean(np.diff(newtime)) * cutoff_mult
# print "Doing lanczos interpolation with cutoff=%0.3f and %d lobes." % (cutoff, window)
## Build up sinc matrix ##
sincmat = np.zeros((len(newtime), len(oldtime)))
for ndi in range(len(newtime)):
sincmat[ndi,:] = lanczosfun(cutoff, newtime[ndi]-oldtime, window)
if rectify:
newdata = np.hstack([np.dot(sincmat, np.clip(data, -np.inf, 0)),
np.dot(sincmat, np.clip(data, 0, np.inf))])
else:
## Construct new signal by multiplying the sinc matrix by the data ##
newdata = np.dot(sincmat, data)
return newdata
def downsample_word_vectors(stories, word_vectors, wordseqs):
"""Get Lanczos downsampled word_vectors for specified stories.
Args:
stories: List of stories to obtain vectors for.
word_vectors: Dictionary of {story: <float32>[num_story_words, vector_size]}
wordseqs: Dictionary of {story: <object>}
Returns:
Dictionary of {story: downsampled vectors}
"""
downsampled_semanticseqs = dict()
for story in stories:
downsampled_semanticseqs[story] = lanczosinterp2D(
word_vectors[story], wordseqs[story].data_times,
wordseqs[story].tr_times, window=3)
return downsampled_semanticseqs
if __name__ == "__main__":
raw_stories = pickle.load(open('raw_stories.pkl', 'rb'))