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LoadRawMNISTData.py
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45 lines (33 loc) · 1.4 KB
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#!/python
# found at http://g.sweyla.com/blog/2012/mnist-numpy/
# Adapted from: http://abel.ee.ucla.edu/cvxopt/_downloads/mnist.py
import pickle, gzip, numpy
import os, struct
from array import array as pyarray
from numpy import append, array, int8, uint8, zeros
def load_mnist(dataset="training", digits=numpy.arange(10), path="."):
if dataset == "training":
fname_img = os.path.join(path, 'train-images-idx3-ubyte')
fname_lbl = os.path.join(path, 'train-labels-idx1-ubyte')
elif dataset == "testing":
fname_img = os.path.join(path, 't10k-images-idx3-ubyte')
fname_lbl = os.path.join(path, 't10k-labels-idx1-ubyte')
else:
raise ValueError("dataset must be 'testing' or 'training'")
flbl = open(fname_lbl, 'rb')
magic_nr, size = struct.unpack(">II", flbl.read(8))
lbl = pyarray("b", flbl.read())
flbl.close()
fimg = open(fname_img, 'rb')
magic_nr, size, rows, cols = struct.unpack(">IIII", fimg.read(16))
img = pyarray("B", fimg.read())
fimg.close()
ind = [ k for k in range(size) if lbl[k] in digits ]
N = len(ind)
images = zeros((N, rows, cols), dtype=uint8)
labels = zeros((N, 1), dtype=int8)
for i in range(len(ind)):
images[i] = array(img[ ind[i]*rows*cols : (ind[i]+1)*rows*cols ]).reshape((rows, cols))
labels[i] = lbl[ind[i]]
return images, labels
images, labels = load_mnist()