Rethinking Cross-Entropy Loss for Stereo Matching Networks

06/27/2023
by   Peng Xu, et al.
0

Despite the great success of deep learning in stereo matching, recovering accurate and clearly-contoured disparity map is still challenging. Currently, L1 loss and cross-entropy loss are the two most widely used loss functions for training the stereo matching networks. Comparing with the former, the latter can usually achieve better results thanks to its direct constraint to the the cost volume. However, how to generate reasonable ground-truth distribution for this loss function remains largely under exploited. Existing works assume uni-modal distributions around the ground-truth for all of the pixels, which ignores the fact that the edge pixels may have multi-modal distributions. In this paper, we first experimentally exhibit the importance of correct edge supervision to the overall disparity accuracy. Then a novel adaptive multi-modal cross-entropy loss which encourages the network to generate different distribution patterns for edge and non-edge pixels is proposed. We further optimize the disparity estimator in the inference stage to alleviate the bleeding and misalignment artifacts at the edge. Our method is generic and can help classic stereo matching models regain competitive performance. GANet trained by our loss ranks 1st on the KITTI 2015 and 2012 benchmarks and outperforms state-of-the-art methods by a large margin. Meanwhile, our method also exhibits superior cross-domain generalization ability and outperforms existing generalization-specialized methods on four popular real-world datasets.

READ FULL TEXT

page 1

page 3

page 5

page 8

page 10

page 12

research
05/18/2020

Niose-Sampling Cross Entropy Loss: Improving Disparity Regression Via Cost Volume Aware Regularizer

Recent end-to-end deep neural networks for disparity regression have ach...
research
09/04/2017

Self-Supervised Learning for Stereo Matching with Self-Improving Ability

Exiting deep-learning based dense stereo matching methods often rely on ...
research
06/05/2018

Practical Deep Stereo (PDS): Toward applications-friendly deep stereo matching

End-to-end deep-learning networks recently demonstrated extremely good p...
research
04/05/2018

CBMV: A Coalesced Bidirectional Matching Volume for Disparity Estimation

Recently, there has been a paradigm shift in stereo matching with learni...
research
11/01/2022

Self-Supervised Intensity-Event Stereo Matching

Event cameras are novel bio-inspired vision sensors that output pixel-le...
research
08/12/2018

Open-World Stereo Video Matching with Deep RNN

Deep Learning based stereo matching methods have shown great successes a...
research
04/09/2020

AdaStereo: A Simple and Efficient Approach for Adaptive Stereo Matching

In this paper, we attempt to solve the domain adaptation problem for dee...

Please sign up or login with your details

Forgot password? Click here to reset