def create_inner_block(
incoming, scope, nonlinearity=tf.nn.elu,
weights_initializer=tf.truncated_normal_initializer(1e-3),
bias_initializer=tf.zeros_initializer(), regularizer=None,
increase_dim=False, summarize_activations=True):
n = incoming.get_shape().as_list()[-1]
stride = 1
if increase_dim:
n *= 2
stride = 2
incoming = slim.conv2d(
incoming, n, [3, 3], stride, activation_fn=nonlinearity, padding="SAME",
normalizer_fn=_batch_norm_fn, weights_initializer=weights_initializer,
biases_initializer=bias_initializer, weights_regularizer=regularizer,
scope=scope + "/1")
if summarize_activations:
tf.summary.histogram(incoming.name + "/activations", incoming)
incoming = slim.dropout(incoming, keep_prob=0.6)
incoming = slim.conv2d(
incoming, n, [3, 3], 1, activation_fn=None, padding="SAME",
normalizer_fn=None, weights_initializer=weights_initializer,
biases_initializer=bias_initializer, weights_regularizer=regularizer,
scope=scope + "/2")
return incoming
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