在使用tensorflow中,我们常常需要获取某个变量的值,比如:打印某一层的权重,通常我们可以直接利用变量的name属性来获取,但是当我们利用一些第三方的库来构造神经网络的layer时,存在一种情况:就是我们自己无法定义该层的变量,因为是自动进行定义的。

比如用tensorflow的slim库时:

<span style="font-size:14px;">def resnet_stack(images, output_shape, hparams, scope=None):</span>
<span style="font-size:14px;"> """Create a resnet style transfer block.</span>
<span style="font-size:14px;"></span>
<span style="font-size:14px;"> Args:</span>
<span style="font-size:14px;"> images: [batch-size, height, width, channels] image tensor to feed as input</span>
<span style="font-size:14px;"> output_shape: output image shape in form [height, width, channels]</span>
<span style="font-size:14px;"> hparams: hparams objects</span>
<span style="font-size:14px;"> scope: Variable scope</span>
<span style="font-size:14px;"></span>
<span style="font-size:14px;"> Returns:</span>
<span style="font-size:14px;"> Images after processing with resnet blocks.</span>
<span style="font-size:14px;"> """</span>
<span style="font-size:14px;"> end_points = {}</span>
<span style="font-size:14px;"> if hparams.noise_channel:</span>
<span style="font-size:14px;"> # separate the noise for visualization</span>
<span style="font-size:14px;"> end_points['noise'] = images[:, :, :, -1]</span>
<span style="font-size:14px;"> assert images.shape.as_list()[1:3] == output_shape[0:2]</span>
<span style="font-size:14px;"></span>
<span style="font-size:14px;"> with tf.variable_scope(scope, 'resnet_style_transfer', [images]):</span>
<span style="font-size:14px;"> with slim.arg_scope(</span>
<span style="font-size:14px;">  [slim.conv2d],</span>
<span style="font-size:14px;">  normalizer_fn=slim.batch_norm,</span>
<span style="font-size:14px;">  kernel_size=[hparams.generator_kernel_size] * 2,</span>
<span style="font-size:14px;">  stride=1):</span>
<span style="font-size:14px;">  net = slim.conv2d(</span>
<span style="font-size:14px;">   images,</span>
<span style="font-size:14px;">   hparams.resnet_filters,</span>
<span style="font-size:14px;">   normalizer_fn=None,</span>
<span style="font-size:14px;">   activation_fn=tf.nn.relu)</span>
<span style="font-size:14px;">  for block in range(hparams.resnet_blocks):</span>
<span style="font-size:14px;">  net = resnet_block(net, hparams)</span>
<span style="font-size:14px;">  end_points['resnet_block_{}'.format(block)] = net</span>
<span style="font-size:14px;"></span>
<span style="font-size:14px;">  net = slim.conv2d(</span>
<span style="font-size:14px;">   net,</span>
<span style="font-size:14px;">   output_shape[-1],</span>
<span style="font-size:14px;">   kernel_size=[1, 1],</span>
<span style="font-size:14px;">   normalizer_fn=None,</span>
<span style="font-size:14px;">   activation_fn=tf.nn.tanh,</span>
<span style="font-size:14px;">   scope='conv_out')</span>
<span style="font-size:14px;">  end_points['transferred_images'] = net</span>
<span style="font-size:14px;"> return net, end_points</span>

我们希望获取第一个卷积层的权重weight,该怎么办呢??

在训练时,这些可训练的变量会被tensorflow保存在 tf.trainable_variables() 中,于是我们就可以通过打印 tf.trainable_variables() 来获取该卷积层的名称(或者你也可以自己根据scope来看出来该变量的name ),然后利用tf.get_default_grap().get_tensor_by_name 来获取该变量。

举个简单的例子:

<span style="font-size:14px;">import tensorflow as tf</span>
<span style="font-size:14px;">with tf.variable_scope("generate"):</span>
<span style="font-size:14px;"> with tf.variable_scope("resnet_stack"):</span>
<span style="font-size:14px;">  #简单起见,这里没有用第三方库来说明,</span>
<span style="font-size:14px;">  bias = tf.Variable(0.0,name="bias")</span>
<span style="font-size:14px;">  weight = tf.Variable(0.0,name="weight")</span>
<span style="font-size:14px;"></span>
<span style="font-size:14px;">for tv in tf.trainable_variables():</span>
<span style="font-size:14px;"> print (tv.name)</span>
<span style="font-size:14px;"></span>
<span style="font-size:14px;">b = tf.get_default_graph().get_tensor_by_name("generate/resnet_stack/bias:0")</span>
<span style="font-size:14px;">w = tf.get_default_graph().get_tensor_by_name("generate/resnet_stack/weight:0")</span>
<span style="font-size:14px;"></span>
<span style="font-size:14px;">with tf.Session() as sess:</span>
<span style="font-size:14px;"> tf.global_variables_initializer().run()</span>
<span style="font-size:14px;"> print(sess.run(b))</span>
<span style="font-size:14px;"> print(sess.run(w))
</span>

结果如下:

tensorflow 获取变量&打印权值的实例讲解

以上这篇tensorflow 获取变量&打印权值的实例讲解就是小编分享给大家的全部内容了,希望能给大家一个参考,也希望大家多多支持。

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