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# coding=utf-8
# Copyright 2021 The Deeplab2 Authors.
#
# 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.
"""This file contains code to build MaX-DeepLab output heads.
Reference:
MaX-DeepLab: "End-to-End Panoptic Segmentation with Mask Transformers",
CVPR 2021. https://arxiv.org/abs/2012.00759
Huiyu Wang, Yukun Zhu, Hartwig Adam, Alan Yuille, Liang-Chieh Chen.
"""
import math
import tensorflow as tf
from deeplab2 import common
from deeplab2.model.decoder import panoptic_deeplab
from deeplab2.model.layers import convolutions
_PIXEL_SPACE_FEATURE_KEY = 'pixel_space_feature'
def _get_transformer_class_head_num_classes(
auxiliary_semantic_head_output_channels,
ignore_label):
"""Computes the num of classes for the transformer class head.
The transformer class head predicts non-void classes (i.e., thing classes and
stuff classes) and a void (i.e., ∅, no object) class. If the auxiliary
semantic head output channel includes the void class, e.g., on COCO, we
directly use the semantic output channel. Otherwise, e.g., on Cityscapes, we
add 1 (the void class) to the transformer class head.
Args:
auxiliary_semantic_head_output_channels: An integer, the number of output
channels of the auxiliary semantic head (it should be the same as the
num_classes field of the dataset information).
ignore_label: An integer specifying the ignore label. Default to 255.
Returns:
num_classes: An integer, the num of classes for the transformer class head.
"""
if ignore_label >= auxiliary_semantic_head_output_channels:
return auxiliary_semantic_head_output_channels + 1
else:
return auxiliary_semantic_head_output_channels
def add_bias_towards_void(transformer_class_logits, void_prior_prob=0.9):
"""Adds init bias towards the void (no object) class to the class logits.
We initialize the void class with a large probability, similar to Section 3.3
of the Focal Loss paper.
Reference:
Focal Loss for Dense Object Detection, ICCV 2017.
https://arxiv.org/abs/1708.02002
Tsung-Yi Lin, Priya Goyal, Ross Girshick, Kaiming He, Piotr Dollár.
Args:
transformer_class_logits: A [batch, num_mask_slots, num_classes] tensor, the
class logits predicted by the transformer. It concats (num_classes - 1)
non-void classes, including both thing classes and stuff classes, and the
void class (the last channel). If the dataset class IDs do not follow this
order, MaX-DeepLab loss functions will handle the mapping and thus the
architecture still supports any dataset.
void_prior_prob: A float, the desired probability (after softmax) of the
void class at initialization. Defaults to 0.9 as in MaX-DeepLab.
Returns:
updated_transformer_class_logits: A [batch, num_mask_slots, num_classes]
Raises:
ValueError: If the rank of transformer_class_logits is not 3.
"""
class_logits_shape = transformer_class_logits.get_shape().as_list()
if len(class_logits_shape) != 3:
raise ValueError('Input transformer_class_logits should have rank 3.')
init_bias = [0.0] * class_logits_shape[-1]
init_bias[-1] = math.log(
(class_logits_shape[-1] - 1) * void_prior_prob / (1 - void_prior_prob))
# Broadcasting the 1D init_bias to the 3D transformer_class_logits.
return transformer_class_logits + tf.constant(init_bias, dtype=tf.float32)
def batch_norm_on_an_extra_axis(inputs, bn_layer):
"""Applies a batch norm layer on an extra axis.
This batch norm will be used on the pixel space mask logits in MaX-DeepLab to
avoid careful initialization of previous layers and careful scaling of the
resulting outputs. In addition, applying batch norm on an extra axis does not
introduce an extra gamma and beta for each mask slot. Instead, the current
gamma and beta are shared for all mask slots and do not introduce biases on
mask slots.
Args:
inputs: A [batch, height, width, num_mask_slots] tensor.
bn_layer: A batch norm tf.keras.layers.Layer on the last axis.
Returns:
outputs: A [batch, height, width, num_mask_slots] tensor.
"""
expanded_inputs = tf.expand_dims(inputs, axis=-1)
outputs = bn_layer(expanded_inputs)
return tf.squeeze(outputs, axis=-1)
class MaXDeepLab(tf.keras.layers.Layer):
"""A MaX-DeepLab head layer."""
def __init__(self,
decoder_options,
max_deeplab_options,
ignore_label,
bn_layer=tf.keras.layers.BatchNormalization):
"""Initializes a MaX-DeepLab head.
Args:
decoder_options: Decoder options as defined in config_pb2.DecoderOptions.
max_deeplab_options: Model options as defined in
config_pb2.ModelOptions.MaXDeepLabOptions.
ignore_label: An integer specifying the ignore label.
bn_layer: An optional tf.keras.layers.Layer that computes the
normalization (default: tf.keras.layers.BatchNormalization).
"""
super(MaXDeepLab, self).__init__(name='MaXDeepLab')
low_level_feature_keys = [
item.feature_key for item in max_deeplab_options.auxiliary_low_level
]
low_level_channels_project = [
item.channels_project
for item in max_deeplab_options.auxiliary_low_level
]
self._auxiliary_semantic_decoder = (
panoptic_deeplab.PanopticDeepLabSingleDecoder(
high_level_feature_name=decoder_options.feature_key,
low_level_feature_names=low_level_feature_keys,
low_level_channels_project=low_level_channels_project,
aspp_output_channels=decoder_options.aspp_channels,
decoder_output_channels=decoder_options.decoder_channels,
atrous_rates=decoder_options.atrous_rates,
name='auxiliary_semantic_decoder',
aspp_use_only_1x1_proj_conv=decoder_options
.aspp_use_only_1x1_proj_conv,
decoder_conv_type=decoder_options.decoder_conv_type,
bn_layer=bn_layer))
self._auxiliary_semantic_head = panoptic_deeplab.PanopticDeepLabSingleHead(
max_deeplab_options.auxiliary_semantic_head.head_channels,
max_deeplab_options.auxiliary_semantic_head.output_channels,
common.PRED_SEMANTIC_LOGITS_KEY,
name='auxiliary_semantic_head',
conv_type=max_deeplab_options.auxiliary_semantic_head.head_conv_type,
bn_layer=bn_layer)
self._pixel_space_head = panoptic_deeplab.PanopticDeepLabSingleHead(
max_deeplab_options.pixel_space_head.head_channels,
max_deeplab_options.pixel_space_head.output_channels,
_PIXEL_SPACE_FEATURE_KEY,
name='pixel_space_head',
conv_type=max_deeplab_options.pixel_space_head.head_conv_type,
bn_layer=bn_layer)
self._transformer_mask_head = convolutions.Conv1D(
output_channels=max_deeplab_options.pixel_space_head.output_channels,
name='transformer_mask_head',
use_bias=False,
# Use bn to avoid careful initialization.
use_bn=True,
bn_layer=bn_layer,
bn_gamma_initializer='ones',
activation=None,
kernel_initializer='he_normal',
kernel_size=1,
padding='valid')
# The transformer class head predicts non-void classes (i.e., thing classes
# and stuff classes) and a void (i.e., ∅, no object) class.
num_classes = _get_transformer_class_head_num_classes(
max_deeplab_options.auxiliary_semantic_head.output_channels,
ignore_label=ignore_label)
self._transformer_class_head = convolutions.Conv1D(
output_channels=num_classes,
name='transformer_class_head',
# Use conv bias rather than bn on this final class logit output.
use_bias=True,
use_bn=False,
activation=None,
# Follow common ImageNet class initlization with stddev 0.01.
kernel_initializer=tf.keras.initializers.TruncatedNormal(stddev=0.01),
kernel_size=1,
padding='valid')
self._pixel_space_feature_batch_norm = bn_layer(
axis=-1, name='pixel_space_feature_batch_norm',
gamma_initializer=tf.keras.initializers.Constant(1.0))
# Use a batch norm to avoid care initialization of the mask outputs.
self._pixel_space_mask_batch_norm = bn_layer(
axis=-1, name='pixel_space_mask_batch_norm',
# Initialize the pixel space mask with a low temperature.
gamma_initializer=tf.keras.initializers.Constant(0.1))
def reset_pooling_layer(self):
"""Resets the ASPP pooling layers to global average pooling."""
self._auxiliary_semantic_decoder.reset_pooling_layer()
def set_pool_size(self, pool_size):
"""Sets the pooling size of the ASPP pooling layers.
Args:
pool_size: A tuple specifying the pooling size of the ASPP pooling layers.
"""
self._auxiliary_semantic_decoder.set_pool_size(pool_size)
def get_pool_size(self):
return self._auxiliary_semantic_decoder.get_pool_size()
@property
def checkpoint_items(self):
items = {
common.CKPT_SEMANTIC_DECODER:
self._auxiliary_semantic_decoder,
common.CKPT_SEMANTIC_HEAD_WITHOUT_LAST_LAYER:
self._auxiliary_semantic_head.conv_block,
common.CKPT_SEMANTIC_LAST_LAYER:
self._auxiliary_semantic_head.final_conv,
common.CKPT_PIXEL_SPACE_HEAD:
self._pixel_space_head,
common.CKPT_TRANSFORMER_MASK_HEAD:
self._transformer_mask_head,
common.CKPT_TRANSFORMER_CLASS_HEAD:
self._transformer_class_head,
common.CKPT_PIXEL_SPACE_FEATURE_BATCH_NORM:
self._pixel_space_feature_batch_norm,
common.CKPT_PIXEL_SPACE_MASK_BATCH_NORM:
self._pixel_space_mask_batch_norm,
}
return items
def call(self, features, training=False):
"""Performs a forward pass.
Args:
features: An input dict of tf.Tensor with shape [batch, height, width,
channels] or [batch, length, channels]. Different keys should point to
different features extracted by the encoder, e.g., low-level or
high-level features.
training: A boolean flag indicating whether training behavior should be
used (default: False).
Returns:
A dictionary containing the auxiliary semantic segmentation logits, the
pixel space normalized feature, the pixel space mask logits, and the
mask transformer class logits.
"""
results = {}
semantic_features = features['feature_semantic']
panoptic_features = features['feature_panoptic']
transformer_class_feature = features['transformer_class_feature']
transformer_mask_feature = features['transformer_mask_feature']
# Auxiliary semantic head.
semantic_shape = semantic_features.get_shape().as_list()
panoptic_shape = panoptic_features.get_shape().as_list()
# MaX-DeepLab always predicts panoptic feature at high resolution (e.g.,
# stride 4 or stride 2), but the auxiliary semantic feature could be at low
# resolution (e.g., stride 16 or stride 32), in the absence of the stacked
# decoder (L == 0). In this case, we use an auxiliary semantic decoder on
# top of the semantic feature, in order to add the auxiliary semantic loss.
if semantic_shape[1:3] != panoptic_shape[1:3]:
semantic_features = self._auxiliary_semantic_decoder(
features, training=training)
auxiliary_semantic_results = self._auxiliary_semantic_head(
semantic_features, training=training)
results.update(auxiliary_semantic_results)
# Pixel space head.
pixel_space_feature = self._pixel_space_head(
panoptic_features, training=training)[_PIXEL_SPACE_FEATURE_KEY]
pixel_space_feature = self._pixel_space_feature_batch_norm(
pixel_space_feature)
pixel_space_normalized_feature = tf.math.l2_normalize(
pixel_space_feature, axis=-1)
results[common.PRED_PIXEL_SPACE_NORMALIZED_FEATURE_KEY] = (
pixel_space_normalized_feature)
# Transformer class head.
transformer_class_logits = self._transformer_class_head(
transformer_class_feature)
# Bias towards the void class at initialization.
transformer_class_logits = add_bias_towards_void(
transformer_class_logits)
results[common.PRED_TRANSFORMER_CLASS_LOGITS_KEY] = transformer_class_logits
# Transformer mask kernel.
transformer_mask_kernel = self._transformer_mask_head(
transformer_mask_feature)
# Convolutional mask head. The pixel space mask logits are the matrix
# multiplication (or convolution) of the pixel space normalized feature and
# the transformer mask kernel.
pixel_space_mask_logits = tf.einsum(
'bhwd,bid->bhwi',
pixel_space_normalized_feature,
transformer_mask_kernel)
# The above multiplication constructs a second-order operation which is
# sensitive to the feature scales and initializations. In order to avoid
# careful initialization or scaling of the layers, we apply batch norms on
# top of pixel_space_feature, transformer_mask_kernel, and the resulting
# pixel_space_mask_logits.
pixel_space_mask_logits = batch_norm_on_an_extra_axis(
pixel_space_mask_logits, self._pixel_space_mask_batch_norm)
results[common.PRED_PIXEL_SPACE_MASK_LOGITS_KEY] = (
pixel_space_mask_logits)
return results
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