# Copyright 2015 The TensorFlow Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. # ============================================================================= """Contains layer utilities for input validation and format conversion.""" from tensorflow.python.framework import smart_cond as smart_module from tensorflow.python.ops import cond from tensorflow.python.ops import variables def convert_data_format(data_format, ndim): if data_format == 'channels_last': if ndim == 3: return 'NWC' elif ndim == 4: return 'NHWC' elif ndim == 5: return 'NDHWC' else: raise ValueError(f'Input rank: {ndim} not supported. We only support ' 'input rank 3, 4 or 5.') elif data_format == 'channels_first': if ndim == 3: return 'NCW' elif ndim == 4: return 'NCHW' elif ndim == 5: return 'NCDHW' else: raise ValueError(f'Input rank: {ndim} not supported. We only support ' 'input rank 3, 4 or 5.') else: raise ValueError(f'Invalid data_format: {data_format}. We only support ' '"channels_first" or "channels_last"') def normalize_tuple(value, n, name): """Transforms a single integer or iterable of integers into an integer tuple. Args: value: The value to validate and convert. Could an int, or any iterable of ints. n: The size of the tuple to be returned. name: The name of the argument being validated, e.g. "strides" or "kernel_size". This is only used to format error messages. Returns: A tuple of n integers. Raises: ValueError: If something else than an int/long or iterable thereof was passed. """ if isinstance(value, int): return (value,) * n else: try: value_tuple = tuple(value) except TypeError: raise ValueError(f'Argument `{name}` must be a tuple of {str(n)} ' f'integers. Received: {str(value)}') if len(value_tuple) != n: raise ValueError(f'Argument `{name}` must be a tuple of {str(n)} ' f'integers. Received: {str(value)}') for single_value in value_tuple: try: int(single_value) except (ValueError, TypeError): raise ValueError(f'Argument `{name}` must be a tuple of {str(n)} ' f'integers. Received: {str(value)} including element ' f'{str(single_value)} of type ' f'{str(type(single_value))}') return value_tuple def normalize_data_format(value): data_format = value.lower() if data_format not in {'channels_first', 'channels_last'}: raise ValueError('The `data_format` argument must be one of ' '"channels_first", "channels_last". Received: ' f'{str(value)}.') return data_format def normalize_padding(value): padding = value.lower() if padding not in {'valid', 'same'}: raise ValueError('The `padding` argument must be one of "valid", "same". ' f'Received: {str(padding)}.') return padding def conv_output_length(input_length, filter_size, padding, stride, dilation=1): """Determines output length of a convolution given input length. Args: input_length: integer. filter_size: integer. padding: one of "same", "valid", "full". stride: integer. dilation: dilation rate, integer. Returns: The output length (integer). """ if input_length is None: return None assert padding in {'same', 'valid', 'full'} dilated_filter_size = filter_size + (filter_size - 1) * (dilation - 1) if padding == 'same': output_length = input_length elif padding == 'valid': output_length = input_length - dilated_filter_size + 1 elif padding == 'full': output_length = input_length + dilated_filter_size - 1 return (output_length + stride - 1) // stride def conv_input_length(output_length, filter_size, padding, stride): """Determines input length of a convolution given output length. Args: output_length: integer. filter_size: integer. padding: one of "same", "valid", "full". stride: integer. Returns: The input length (integer). """ if output_length is None: return None assert padding in {'same', 'valid', 'full'} if padding == 'same': pad = filter_size // 2 elif padding == 'valid': pad = 0 elif padding == 'full': pad = filter_size - 1 return (output_length - 1) * stride - 2 * pad + filter_size def deconv_output_length(input_length, filter_size, padding, stride): """Determines output length of a transposed convolution given input length. Args: input_length: integer. filter_size: integer. padding: one of "same", "valid", "full". stride: integer. Returns: The output length (integer). """ if input_length is None: return None input_length *= stride if padding == 'valid': input_length += max(filter_size - stride, 0) elif padding == 'full': input_length -= (stride + filter_size - 2) return input_length def smart_cond(pred, true_fn=None, false_fn=None, name=None): """Return either `true_fn()` if predicate `pred` is true else `false_fn()`. If `pred` is a bool or has a constant value, we return either `true_fn()` or `false_fn()`, otherwise we use `tf.cond` to dynamically route to both. Args: pred: A scalar determining whether to return the result of `true_fn` or `false_fn`. true_fn: The callable to be performed if pred is true. false_fn: The callable to be performed if pred is false. name: Optional name prefix when using `tf.cond`. Returns: Tensors returned by the call to either `true_fn` or `false_fn`. Raises: TypeError: If `true_fn` or `false_fn` is not callable. """ if isinstance(pred, variables.Variable): return cond.cond( pred, true_fn=true_fn, false_fn=false_fn, name=name) return smart_module.smart_cond( pred, true_fn=true_fn, false_fn=false_fn, name=name) def constant_value(pred): """Return the bool value for `pred`, or None if `pred` had a dynamic value. Args: pred: A scalar, either a Python bool or a TensorFlow boolean variable or tensor, or the Python integer 1 or 0. Returns: True or False if `pred` has a constant boolean value, None otherwise. Raises: TypeError: If `pred` is not a Variable, Tensor or bool, or Python integer 1 or 0. """ # Allow integer booleans. if isinstance(pred, int): if pred == 1: pred = True elif pred == 0: pred = False if isinstance(pred, variables.Variable): return None return smart_module.smart_constant_value(pred)