tf.reduce_mean 函数用于计算张量tensor沿着指定的数轴(tensor的某一维度)上的的平均值,主要用作降维或者计算tensor(图像)的平均值。
reduce_mean(input_tensor,
axis=None,
keep_dims=False,
name=None,
reduction_indices=None)
以一个维度是2,形状是[2,3]的tensor举例:
import tensorflow as tf
x = [[1,2,3],
[1,2,3]]
xx = tf.cast(x,tf.float32)
mean_all = tf.reduce_mean(xx, keep_dims=False)
mean_0 = tf.reduce_mean(xx, axis=0, keep_dims=False)
mean_1 = tf.reduce_mean(xx, axis=1, keep_dims=False)
with tf.Session() as sess:
m_a,m_0,m_1 = sess.run([mean_all, mean_0, mean_1])
print m_a # output: 2.0
print m_0 # output: [ 1. 2. 3.]
print m_1 #output: [ 2. 2.]
如果设置保持原来的张量的维度,keep_dims=True ,结果:
print m_a # output: [[ 2.]]
print m_0 # output: [[ 1. 2. 3.]]
print m_1 #output: [[ 2.], [ 2.]]
类似函数还有:
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