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#! /usr/bin/python
# -*- coding: utf-8 -*-
"""A file containing various activation functions."""
import tensorflow as tf
from tensorflow.python.util.deprecation import deprecated
__all__ = [
'identity',
'ramp',
'leaky_relu',
'swish',
'sign',
'pixel_wise_softmax',
'linear',
'lrelu',
]
@deprecated("2018-06-30", "This API will be deprecated soon as tf.identity can do the same thing.")
def identity(x):
"""Identity activation function.
Shortcut is ``linear``.
Parameters
----------
x : Tensor
input.
Returns
-------
Tensor
A ``Tensor`` in the same type as ``x``.
"""
return x
def ramp(x, v_min=0, v_max=1, name=None):
"""Ramp activation function.
Parameters
----------
x : Tensor
input.
v_min : float
cap input to v_min as a lower bound.
v_max : float
cap input to v_max as a upper bound.
name : str
The function name (optional).
Returns
-------
Tensor
A ``Tensor`` in the same type as ``x``.
"""
return tf.clip_by_value(x, clip_value_min=v_min, clip_value_max=v_max, name=name)
def leaky_relu(x, alpha=0.1, name="lrelu"):
"""LeakyReLU, Shortcut is ``lrelu``.
Modified version of ReLU, introducing a nonzero gradient for negative input.
Parameters
----------
x : Tensor
Support input type ``float``, ``double``, ``int32``, ``int64``, ``uint8``, ``int16``, or ``int8``.
alpha : float
Slope.
name : str
The function name (optional).
Examples
--------
>>> net = tl.layers.DenseLayer(net, 100, act=lambda x : tl.act.lrelu(x, 0.2), name='dense')
Returns
-------
Tensor
A ``Tensor`` in the same type as ``x``.
References
----------
- `Rectifier Nonlinearities Improve Neural Network Acoustic Models, Maas et al. (2013)`
http://web.stanford.edu/~awni/papers/relu_hybrid_icml2013_final.pdf
"""
# with tf.name_scope(name) as scope:
# x = tf.nn.relu(x)
# m_x = tf.nn.relu(-x)
# x -= alpha * m_x
x = tf.maximum(x, alpha * x, name=name)
return x
def swish(x, name='swish'):
"""Swish function.
See `Swish: a Self-Gated Activation Function <https://arxiv.org/abs/1710.05941>`__.
Parameters
----------
x : Tensor
input.
name: str
function name (optional).
Returns
-------
Tensor
A ``Tensor`` in the same type as ``x``.
"""
with tf.name_scope(name):
x = tf.nn.sigmoid(x) * x
return x
@tf.RegisterGradient("QuantizeGrad")
def _sign_grad(unused_op, grad):
return tf.clip_by_value(tf.identity(grad), -1, 1)
def sign(x):
"""Sign function.
Clip and binarize tensor using the straight through estimator (STE) for the gradient, usually be used for
quantizing values in `Binarized Neural Networks`: https://arxiv.org/abs/1602.02830.
Parameters
----------
x : Tensor
input.
Examples
--------
>>> net = tl.layers.DenseLayer(net, 100, act=lambda x : tl.act.lrelu(x, 0.2), name='dense')
Returns
-------
Tensor
A ``Tensor`` in the same type as ``x``.
References
----------
- `Rectifier Nonlinearities Improve Neural Network Acoustic Models, Maas et al. (2013)`
http://web.stanford.edu/~awni/papers/relu_hybrid_icml2013_final.pdf
- `BinaryNet: Training Deep Neural Networks with Weights and Activations Constrained to +1 or -1, \
Courbariaux et al. (2016)` https://arxiv.org/abs/1602.02830
"""
with tf.get_default_graph().gradient_override_map({"sign": "QuantizeGrad"}):
return tf.sign(x, name='sign')
# if tf.__version__ > "1.7":
# @tf.custom_gradient
# def sign(x): # https://www.tensorflow.org/versions/master/api_docs/python/tf/custom_gradient?hl=ES#top_of_page
# """Differentiable sign function using sigmoid as the derivation function,
# see `tf.sign <https://www.tensorflow.org/api_docs/python/tf/sign>`__ and `tf.custom_gradient
# <https://www.tensorflow.org/versions/master/api_docs/python/tf/custom_gradient?hl=ES#top_of_page>`__.
#
# Parameters
# ----------
# x : Tensor
# input.
#
# Returns
# -------
# Tensor
# A ``Tensor`` in the same type as ``x``.
#
# """
# tao = tf.nn.sigmoid(x)
# def grad():
# return tao * (1 - tao)
# return tf.sign(x), grad
def hard_tanh(x, name='htanh'):
"""Hard tanh activation function.
Which is a ramp function with low bound of -1 and upper bound of 1, shortcut is `htanh`.
Parameters
----------
x : Tensor
input.
name : str
The function name (optional).
Returns
-------
Tensor
A ``Tensor`` in the same type as ``x``.
"""
# with tf.variable_scope("hard_tanh"):
return tf.clip_by_value(x, -1, 1, name=name)
@deprecated("2018-06-30", "This API will be deprecated soon as tf.nn.softmax can do the same thing.")
def pixel_wise_softmax(x, name='pixel_wise_softmax'):
"""Return the softmax outputs of images, every pixels have multiple label, the sum of a pixel is 1.
Usually be used for image segmentation.
Parameters
----------
x : Tensor
input.
- For 2d image, 4D tensor (batch_size, height, weight, channel), where channel >= 2.
- For 3d image, 5D tensor (batch_size, depth, height, weight, channel), where channel >= 2.
name : str
function name (optional)
Returns
-------
Tensor
A ``Tensor`` in the same type as ``x``.
Examples
--------
>>> outputs = pixel_wise_softmax(network.outputs)
>>> dice_loss = 1 - dice_coe(outputs, y_, epsilon=1e-5)
References
----------
- `tf.reverse <https://www.tensorflow.org/versions/master/api_docs/python/array_ops.html#reverse>`__
"""
with tf.name_scope(name):
return tf.nn.softmax(x)
# Alias
linear = identity
lrelu = leaky_relu
htanh = hard_tanh