Tensorflow之构建自己的图片数据集TFrecords的方法

学习谷歌的深度学习终于有点眉目了,给大家分享我的Tensorflow学习历程。

tensorflow的官方中文文档比较生涩,数据集一直采用的MNIST二进制数据集。并没有过多讲述怎么构建自己的图片数据集tfrecords。

流程是:制作数据集—读取数据集—-加入队列

先贴完整的代码:

#encoding=utf-8
import os
import tensorflow as tf
from PIL import Image

cwd = os.getcwd()

classes = {'test','test1','test2'}
#制作二进制数据
def create_record():
  writer = tf.python_io.TFRecordWriter("train.tfrecords")
  for index, name in enumerate(classes):
    class_path = cwd +"/"+ name+"/"
    for img_name in os.listdir(class_path):
      img_path = class_path + img_name
      img = Image.open(img_path)
      img = img.resize((64, 64))
      img_raw = img.tobytes() #将图片转化为原生bytes
      print index,img_raw
      example = tf.train.Example(
        features=tf.train.Features(feature={
          "label": tf.train.Feature(int64_list=tf.train.Int64List(value=[index])),
          'img_raw': tf.train.Feature(bytes_list=tf.train.BytesList(value=[img_raw]))
        }))
      writer.write(example.SerializeToString())
  writer.close()

data = create_record()

#读取二进制数据
def read_and_decode(filename):
  # 创建文件队列,不限读取的数量
  filename_queue = tf.train.string_input_producer([filename])
  # create a reader from file queue
  reader = tf.TFRecordReader()
  # reader从文件队列中读入一个序列化的样本
  _, serialized_example = reader.read(filename_queue)
  # get feature from serialized example
  # 解析符号化的样本
  features = tf.parse_single_example(
    serialized_example,
    features={
      'label': tf.FixedLenFeature([], tf.int64),
      'img_raw': tf.FixedLenFeature([], tf.string)
    }
  )
  label = features['label']
  img = features['img_raw']
  img = tf.decode_raw(img, tf.uint8)
  img = tf.reshape(img, [64, 64, 3])
  img = tf.cast(img, tf.float32) * (1. / 255) - 0.5
  label = tf.cast(label, tf.int32)
  return img, label

if __name__ == '__main__':
  if 0:
    data = create_record("train.tfrecords")
  else:
    img, label = read_and_decode("train.tfrecords")
    print "tengxing",img,label
    #使用shuffle_batch可以随机打乱输入 next_batch挨着往下取
    # shuffle_batch才能实现[img,label]的同步,也即特征和label的同步,不然可能输入的特征和label不匹配
    # 比如只有这样使用,才能使img和label一一对应,每次提取一个image和对应的label
    # shuffle_batch返回的值就是RandomShuffleQueue.dequeue_many()的结果
    # Shuffle_batch构建了一个RandomShuffleQueue,并不断地把单个的[img,label],送入队列中
    img_batch, label_batch = tf.train.shuffle_batch([img, label],
                          batch_size=4, capacity=2000,
                          min_after_dequeue=1000)

    # 初始化所有的op
    init = tf.initialize_all_variables()

    with tf.Session() as sess:
      sess.run(init)
      # 启动队列
      threads = tf.train.start_queue_runners(sess=sess)
      for i in range(5):
        print img_batch.shape,label_batch
        val, l = sess.run([img_batch, label_batch])
        # l = to_categorical(l, 12)
        print(val.shape, l)

制作数据集

#制作二进制数据
def create_record():
  cwd = os.getcwd()
  classes = {'1','2','3'}
  writer = tf.python_io.TFRecordWriter("train.tfrecords")
  for index, name in enumerate(classes):
    class_path = cwd +"/"+ name+"/"
    for img_name in os.listdir(class_path):
      img_path = class_path + img_name
      img = Image.open(img_path)
      img = img.resize((28, 28))
      img_raw = img.tobytes() #将图片转化为原生bytes
      #print index,img_raw
      example = tf.train.Example(
        features=tf.train.Features(
          feature={
            "label": tf.train.Feature(int64_list=tf.train.Int64List(value=[index])),
            'img_raw': tf.train.Feature(bytes_list=tf.train.BytesList(value=[img_raw]))
          }
        )
      )
      writer.write(example.SerializeToString())
  writer.close()

TFRecords文件包含了tf.train.Example 协议内存块(protocol buffer)(协议内存块包含了字段 Features)。我们可以写一段代码获取你的数据, 将数据填入到Example协议内存块(protocol buffer),将协议内存块序列化为一个字符串, 并且通过tf.python_io.TFRecordWriter 写入到TFRecords文件。

读取数据集

#读取二进制数据
def read_and_decode(filename):
  # 创建文件队列,不限读取的数量
  filename_queue = tf.train.string_input_producer([filename])
  # create a reader from file queue
  reader = tf.TFRecordReader()
  # reader从文件队列中读入一个序列化的样本
  _, serialized_example = reader.read(filename_queue)
  # get feature from serialized example
  # 解析符号化的样本
  features = tf.parse_single_example(
    serialized_example,
    features={
      'label': tf.FixedLenFeature([], tf.int64),
      'img_raw': tf.FixedLenFeature([], tf.string)
    }
  )
  label = features['label']
  img = features['img_raw']
  img = tf.decode_raw(img, tf.uint8)
  img = tf.reshape(img, [64, 64, 3])
  img = tf.cast(img, tf.float32) * (1. / 255) - 0.5
  label = tf.cast(label, tf.int32)
  return img, label

一个Example中包含Features,Features里包含Feature(这里没s)的字典。最后,Feature里包含有一个 FloatList, 或者ByteList,或者Int64List

加入队列

with tf.Session() as sess:
      sess.run(init)
      # 启动队列
      threads = tf.train.start_queue_runners(sess=sess)
      for i in range(5):
        print img_batch.shape,label_batch
        val, l = sess.run([img_batch, label_batch])
        # l = to_categorical(l, 12)
        print(val.shape, l)

这样就可以的到和tensorflow官方的二进制数据集了,

注意:

  1. 启动队列那条code不要忘记,不然卡死
  2. 使用的时候记得使用val和l,不然会报类型错误:TypeError: The value of a feed cannot be a tf.Tensor object. Acceptable feed values include Python scalars, strings, lists, or numpy ndarrays.
  3. 算交叉熵时候:cross_entropy=tf.nn.sparse_softmax_cross_entropy_with_logits(logits,labels)算交叉熵
  4. 最后评估的时候用tf.nn.in_top_k(logits,labels,1)选logits最大的数的索引和label比较
  5. cross_entropy = -tf.reduce_sum(y_*tf.log(y_conv))算交叉熵,所以label必须转成one-hot向量

实例2:将图片文件夹下的图片转存tfrecords的数据集。

############################################################################################ 
#!/usr/bin/python2.7 
# -*- coding: utf-8 -*- 
#Author : zhaoqinghui 
#Date  : 2016.5.10 
#Function: image convert to tfrecords  
############################################################################################# 
 
import tensorflow as tf 
import numpy as np 
import cv2 
import os 
import os.path 
from PIL import Image 
 
#参数设置 
############################################################################################### 
train_file = 'train.txt' #训练图片 
name='train'   #生成train.tfrecords 
output_directory='./tfrecords' 
resize_height=32 #存储图片高度 
resize_width=32 #存储图片宽度 
############################################################################################### 
def _int64_feature(value): 
  return tf.train.Feature(int64_list=tf.train.Int64List(value=[value])) 
 
def _bytes_feature(value): 
  return tf.train.Feature(bytes_list=tf.train.BytesList(value=[value])) 
 
def load_file(examples_list_file): 
  lines = np.genfromtxt(examples_list_file, delimiter=" ", dtype=[('col1', 'S120'), ('col2', 'i8')]) 
  examples = [] 
  labels = [] 
  for example, label in lines: 
    examples.append(example) 
    labels.append(label) 
  return np.asarray(examples), np.asarray(labels), len(lines) 
 
def extract_image(filename, resize_height, resize_width): 
  image = cv2.imread(filename) 
  image = cv2.resize(image, (resize_height, resize_width)) 
  b,g,r = cv2.split(image)     
  rgb_image = cv2.merge([r,g,b])    
  return rgb_image 
 
def transform2tfrecord(train_file, name, output_directory, resize_height, resize_width): 
  if not os.path.exists(output_directory) or os.path.isfile(output_directory): 
    os.makedirs(output_directory) 
  _examples, _labels, examples_num = load_file(train_file) 
  filename = output_directory + "/" + name + '.tfrecords' 
  writer = tf.python_io.TFRecordWriter(filename) 
  for i, [example, label] in enumerate(zip(_examples, _labels)): 
    print('No.%d' % (i)) 
    image = extract_image(example, resize_height, resize_width) 
    print('shape: %d, %d, %d, label: %d' % (image.shape[0], image.shape[1], image.shape[2], label)) 
    image_raw = image.tostring() 
    example = tf.train.Example(features=tf.train.Features(feature={ 
      'image_raw': _bytes_feature(image_raw), 
      'height': _int64_feature(image.shape[0]), 
      'width': _int64_feature(image.shape[1]), 
      'depth': _int64_feature(image.shape[2]), 
      'label': _int64_feature(label) 
    })) 
    writer.write(example.SerializeToString()) 
  writer.close() 
 
def disp_tfrecords(tfrecord_list_file): 
  filename_queue = tf.train.string_input_producer([tfrecord_list_file]) 
  reader = tf.TFRecordReader() 
  _, serialized_example = reader.read(filename_queue) 
  features = tf.parse_single_example( 
    serialized_example, 
 features={ 
     'image_raw': tf.FixedLenFeature([], tf.string), 
     'height': tf.FixedLenFeature([], tf.int64), 
     'width': tf.FixedLenFeature([], tf.int64), 
     'depth': tf.FixedLenFeature([], tf.int64), 
     'label': tf.FixedLenFeature([], tf.int64) 
   } 
  ) 
  image = tf.decode_raw(features['image_raw'], tf.uint8) 
  #print(repr(image)) 
  height = features['height'] 
  width = features['width'] 
  depth = features['depth'] 
  label = tf.cast(features['label'], tf.int32) 
  init_op = tf.initialize_all_variables() 
  resultImg=[] 
  resultLabel=[] 
  with tf.Session() as sess: 
    sess.run(init_op) 
    coord = tf.train.Coordinator() 
    threads = tf.train.start_queue_runners(sess=sess, coord=coord) 
    for i in range(21): 
      image_eval = image.eval() 
      resultLabel.append(label.eval()) 
      image_eval_reshape = image_eval.reshape([height.eval(), width.eval(), depth.eval()]) 
      resultImg.append(image_eval_reshape) 
      pilimg = Image.fromarray(np.asarray(image_eval_reshape)) 
      pilimg.show() 
    coord.request_stop() 
    coord.join(threads) 
    sess.close() 
  return resultImg,resultLabel 
 
def read_tfrecord(filename_queuetemp): 
  filename_queue = tf.train.string_input_producer([filename_queuetemp]) 
  reader = tf.TFRecordReader() 
  _, serialized_example = reader.read(filename_queue) 
  features = tf.parse_single_example( 
    serialized_example, 
    features={ 
     'image_raw': tf.FixedLenFeature([], tf.string), 
     'width': tf.FixedLenFeature([], tf.int64), 
     'depth': tf.FixedLenFeature([], tf.int64), 
     'label': tf.FixedLenFeature([], tf.int64) 
   } 
  ) 
  image = tf.decode_raw(features['image_raw'], tf.uint8) 
  # image 
  tf.reshape(image, [256, 256, 3]) 
  # normalize 
  image = tf.cast(image, tf.float32) * (1. /255) - 0.5 
  # label 
  label = tf.cast(features['label'], tf.int32) 
  return image, label 
 
def test(): 
  transform2tfrecord(train_file, name , output_directory, resize_height, resize_width) #转化函数   
  img,label=disp_tfrecords(output_directory+'/'+name+'.tfrecords') #显示函数 
  img,label=read_tfrecord(output_directory+'/'+name+'.tfrecords') #读取函数 
  print label 
 
if __name__ == '__main__': 
  test() 

这样就可以得到自己专属的数据集.tfrecords了  ,它可以直接用于tensorflow的数据集。

以上就是本文的全部内容,希望对大家的学习有所帮助,也希望大家多多支持呐喊教程。

声明:本文内容来源于网络,版权归原作者所有,内容由互联网用户自发贡献自行上传,本网站不拥有所有权,未作人工编辑处理,也不承担相关法律责任。如果您发现有涉嫌版权的内容,欢迎发送邮件至:notice#nhooo.com(发邮件时,请将#更换为@)进行举报,并提供相关证据,一经查实,本站将立刻删除涉嫌侵权内容。