tensorflow中函数及变量解释

函数:

初始化函数:

1. tf.variance_scaling_initializer():

功能性函数:

1. batch_normalization实现有两个函数:

① tf.layers.batch_normalization,这个功能更全面,输入参数也很多

② tf.nn.batch_normalization(x, mean, variance, offset, scale, variance_epsilon, name=None):

    这个用起来比较简单

2. padding的实现:

 tf.pad(tensor, paddings, mode='CONSTANT', name=None, constant_values=0)

    paddings: 维数为D*2,D为tensor的维数。paddings[i][0]表示在第i维的方向上前面补0的个数,paddings[i][1]表示在第i维的方向上后面补0的个数。

    mode: 三个属性可以选择,默认为constant,值为0

3. 二维卷积操作:

conv2d(inputs, filters, kernel_size, strides=(1, 1), padding='valid', data_format='channels_last', \
dilation_rate=(1, 1), activation=None, use_bias=True, kernel_initializer=None,\
bias_initializer=<tensorflow.python.ops.init_ops.Zeros object at 0x00000211F42F2CF8>, \
kernel_regularizer=None, bias_regularizer=None, activity_regularizer=None, \
kernel_constraint=None, bias_constraint=None, trainable=True, name=None, reuse=None)

strides: 滤波器移动步长参数 

4. tf.identity

tf.identity理解

stackoverflow上的解释:stackoverflow



概念:

1. 卷积中常见的概念:channel.

对2D数据,"channels_last"假定维度顺序为(rows,cols,channels)

                      "channels_first"假定维度顺序为(channels, rows, cols)。

对3D数据,"channels_last"假定(batch_num, conv_dim1, conv_dim2, channels),tf.nn.batch_normalization

                      "channels_first"则是(batch_num, channels, conv_dim1, conv_dim2)



完善中。。。。

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转载自blog.csdn.net/qq_31761357/article/details/80256162