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將普通的圖像數據制作成類似於MNIST數據集的.gz文件(數據集制作)

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做完MNIST數據集的訓練之後,我們想把自己的數據也拿來做一下相關的訓練,那麽如果調用MNIST數據讀取的接口就需要按照他的數據格式來存取數據,首先來看看這個接口(input_data.read_data_set())):

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#coding=utf-8

#input_data.py的詳解
#學習讀取數據文件的方法,以便讀取自己需要的數據庫文件(二進制文件)
"""Functions for downloading and reading MNIST data."""
from __future__ import print_function
import gzip
import os
import
urllib import numpy import matplotlib.pyplot as plt SOURCE_URL = http://yann.lecun.com/exdb/mnist/ def maybe_download(filename, work_directory): """Download the data from Yann‘s website, unless it‘s already here.""" #判斷目錄文件是否存在,不存在則創建該目錄 if not os.path.exists(work_directory): os.mkdir(work_directory)
#需要讀取的文件路徑 filepath = os.path.join(work_directory, filename) if not os.path.exists(filepath): filepath, _ = urllib.urlretrieve(SOURCE_URL + filename, filepath) statinfo = os.stat(filepath) print(Succesfully downloaded, filename, statinfo.st_size, bytes.) return filepath def _read32(bytestream): dt
= numpy.dtype(numpy.uint32).newbyteorder(>) return numpy.frombuffer(bytestream.read(4), dtype=dt)[0] def extract_images(filename): """Extract the images into a 4D uint8 numpy array [index, y, x, depth].""" print(Extracting, filename) with gzip.open(filename) as bytestream: magic = _read32(bytestream) if magic != 2051: raise ValueError( Invalid magic number %d in MNIST image file: %s % (magic, filename)) num_images = _read32(bytestream) print(num_images) rows = _read32(bytestream) print(rows) cols = _read32(bytestream) print(cols) buf = bytestream.read(rows * cols * num_images) print(hhh) data = numpy.frombuffer(buf, dtype=numpy.uint8) data = data.reshape(num_images, rows, cols, 1) return data #將稠密標簽向量變成稀疏的標簽矩陣 #eg:若原向量的第i行為3,則對應稀疏矩陣的第i行下標為3的值為1,其余為0 def dense_to_one_hot(labels_dense, num_classes=10): """Convert class labels from scalars to one-hot vectors.""" num_labels = labels_dense.shape[0] index_offset = numpy.arange(num_labels) * num_classes labels_one_hot = numpy.zeros((num_labels, num_classes)) #labels_dense.ravel()將整個數組展成一個一維數組 #labels_dense.flat[i]即將labels_dense看成一個一維數組,取其第i個變量 labels_one_hot.flat[index_offset + labels_dense.ravel()] = 1#報錯? return labels_one_hot def extract_labels(filename, one_hot=False): """Extract the labels into a 1D uint8 numpy array [index].""" print(Extracting, filename) with gzip.open(filename) as bytestream: magic = _read32(bytestream) if magic != 2049: raise ValueError( Invalid magic number %d in MNIST label file: %s % (magic, filename)) num_items = _read32(bytestream) buf = bytestream.read(num_items) labels = numpy.frombuffer(buf, dtype=numpy.uint8) if one_hot: return dense_to_one_hot(labels) return labels class DataSet(object): def __init__(self, images, labels, fake_data=False): if fake_data: self._num_examples = 10000 else: assert images.shape[0] == labels.shape[0], ( "images.shape: %s labels.shape: %s" % (images.shape, labels.shape)) self._num_examples = images.shape[0] # Convert shape from [num examples, rows, columns, depth] # to [num examples, rows*columns] (assuming depth == 1) assert images.shape[3] == 1 images = images.reshape(images.shape[0], images.shape[1] * images.shape[2]) # Convert from [0, 255] -> [0.0, 1.0]. images = images.astype(numpy.float32) images = numpy.multiply(images, 1.0 / 255.0) self._images = images self._labels = labels self._epochs_completed = 0 self._index_in_epoch = 0 @property def images(self): return self._images @property def labels(self): return self._labels @property def num_examples(self): return self._num_examples @property def epochs_completed(self): return self._epochs_completed def next_batch(self, batch_size, fake_data=False): """Return the next `batch_size` examples from this data set.""" if fake_data: fake_image = [1.0 for _ in xrange(784)] fake_label = 0 return [fake_image for _ in xrange(batch_size)], [fake_label for _ in xrange(batch_size)] start = self._index_in_epoch self._index_in_epoch += batch_size #若當前訓練讀取的index>總體的images數時,則讀取讀取開始的batch_size大小的數據 if self._index_in_epoch > self._num_examples: # Finished epoch self._epochs_completed += 1 # Shuffle the data perm = numpy.arange(self._num_examples) numpy.random.shuffle(perm) self._images = self._images[perm] self._labels = self._labels[perm] # Start next epoch start = 0 self._index_in_epoch = batch_size assert batch_size <= self._num_examples end = self._index_in_epoch return self._images[start:end], self._labels[start:end] def read_data_sets(train_dir, fake_data=False, one_hot=False): class DataSets(object): pass data_sets = DataSets() if fake_data: data_sets.train = DataSet([], [], fake_data=True) data_sets.validation = DataSet([], [], fake_data=True) data_sets.test = DataSet([], [], fake_data=True) return data_sets TRAIN_IMAGES = train-images-idx3-ubyte.gz TRAIN_LABELS = train-labels-idx1-ubyte.gz TEST_IMAGES = t10k-images-idx3-ubyte.gz TEST_LABELS = t10k-labels-idx1-ubyte.gz VALIDATION_SIZE = 5000 local_file = maybe_download(TRAIN_IMAGES, train_dir) train_images = extract_images(local_file) local_file = maybe_download(TRAIN_LABELS, train_dir) train_labels = extract_labels(local_file, one_hot=one_hot) local_file = maybe_download(TEST_IMAGES, train_dir) test_images = extract_images(local_file) local_file = maybe_download(TEST_LABELS, train_dir) test_labels = extract_labels(local_file, one_hot=one_hot) validation_images = train_images[:VALIDATION_SIZE] validation_labels = train_labels[:VALIDATION_SIZE] train_images = train_images[VALIDATION_SIZE:] train_labels = train_labels[VALIDATION_SIZE:] data_sets.train = DataSet(train_images, train_labels) data_sets.validation = DataSet(validation_images, validation_labels) data_sets.test = DataSet(test_images, test_labels) return data_sets HHH = extract_images(D:\\train-images-idx3-ubyte.gz) Pic = HHH[1] print(type(HHH[1])) print(numpy.shape(HHH[1])) L = numpy.reshape(Pic, [28, 28]) plt.figure(1) plt.imshow(L)
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將普通的圖像數據制作成類似於MNIST數據集的.gz文件(數據集制作)