关于tensorflow中Dataset图片的批量读取以及维度的操作

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三维的读取图片(w, h, c):


import tensorflow as tf

import glob
import os
 

def _parse_function(filename):
    # print(filename)
    image_string = tf.read_file(filename)
    image_decoded = tf.image.decode_image(image_string)  # (375, 500, 3)

    image_resized = tf.image.resize_image_with_crop_or_pad(image_decoded, 200, 200)
    return image_resized




with tf.Session() as sess:

    print( sess.run( img ).shape   )

读取批量图片的读取图片(b, w, h, c):


import tensorflow as tf

import glob
import os

'''
    Dataset 批量读取图片
'''

def _parse_function(filename):
    # print(filename)
    image_string = tf.read_file(filename)
    image_decoded = tf.image.decode_image(image_string)  # (375, 500, 3)

    image_decoded = tf.expand_dims(image_decoded, axis=0)

    image_resized = tf.image.resize_image_with_crop_or_pad(image_decoded, 200, 200)
    return image_resized



img = _parse_function('../pascal/VOCdevkit/VOC2012/JPEGImages/2007_000068.jpg')

# image_resized = tf.image.resize_image_with_crop_or_pad( tf.truncated_normal((1,220,300,3))*10, 200, 200)  这种四维 形式是可以的

with tf.Session() as sess:

    print( sess.run( img ).shape   )  #直接初始化就可以 ,转换成四维报错误,不知道为什么,若谁想明白,请留言  报错误
    #InvalidArgumentError (see above for traceback): Input shape axis 0 must equal 4, got shape [5]

Databae的操作:



import tensorflow as tf

import glob
import os

'''
    Dataset 批量读取图片:
    
        原因:
            1. 先定义图片名的list,存放在Dataset中  from_tensor_slices()
            2. 映射函数, 在函数中,对list中的图片进行读取,和resize,细节
                tf.read_file(filename) 返回的是三维的,因为这个每次取出一张图片,放进队列中的,不需要转化为四维
                然后对图片进行resize,  然后每个batch进行访问这个函数  ,所以get_next()  返回的是 [batch, w, h, c ]
            3. 进行shuffle , batch repeat的设置
            
            4. iterator = dataset.make_one_shot_iterator() 设置迭代器
            
            5. iterator.get_next()  获取每个batch的图片
'''

def _parse_function(filename):
    # print(filename)
    image_string = tf.read_file(filename)
    image_decoded = tf.image.decode_image(image_string) #(375, 500, 3)
    '''
        Tensor` with type `uint8` with shape `[height, width, num_channels]` for
          BMP, JPEG, and PNG images and shape `[num_frames, height, width, 3]` for
          GIF images.
    '''

    # image_resized = tf.image.resize_images(label, [200, 200])
    '''  images 三维,四维的都可以
         images: 4-D Tensor of shape `[batch, height, width, channels]` or
            3-D Tensor of shape `[height, width, channels]`.
        size: A 1-D int32 Tensor of 2 elements: `new_height, new_width`.  The
              new size for the images.
    
    '''
    image_resized = tf.image.resize_image_with_crop_or_pad(image_decoded, 200, 200)

    # return tf.squeeze(mage_resized,axis=0)
    return image_resized

filenames =  glob.glob( os.path.join('../pascal/VOCdevkit/VOC2012/JPEGImages', "*." + 'jpg') )


dataset = tf.data.Dataset.from_tensor_slices((filenames))

dataset = dataset.map(_parse_function)

dataset = dataset.shuffle(10).batch(2).repeat(10)
iterator = dataset.make_one_shot_iterator()

img = iterator.get_next()

with tf.Session() as sess:
    # print( sess.run(img).shape ) #(4, 200, 200, 3)
    for _ in range (10):
        print(  sess.run(img).shape )

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转载自blog.csdn.net/qq_30638831/article/details/83450136