Journal of Computer and Communications

Volume 11, Issue 3 (March 2023)

ISSN Print: 2327-5219   ISSN Online: 2327-5227

Google-based Impact Factor: 1.12  Citations  

Adaptive Recurrent Iterative Updating Stereo Matching Network

HTML  XML Download Download as PDF (Size: 2707KB)  PP. 83-98  
DOI: 10.4236/jcc.2023.113007    100 Downloads   388 Views  

ABSTRACT

When training a stereo matching network with a single training dataset, the network may overly rely on the learned features of the single training dataset due to differences in the training dataset scenes, resulting in poor performance on all datasets. Therefore, feature consistency between matched pixels is a key factor in solving the network’s generalization ability. To address this issue, this paper proposed a more widely applicable stereo matching network that introduced whitening loss into the feature extraction module of stereo matching, and significantly improved the applicability of the network model by constraining the variation between salient feature pixels. In addition, this paper used a GRU iterative update module in the disparity update calculation stage, which expanded the model’s receptive field at multiple resolutions, allowing for precise disparity estimation not only in rich texture areas but also in low texture areas. The model was trained only on the Scene Flow large-scale dataset, and the disparity estimation was conducted on mainstream datasets such as Middlebury, KITTI 2015, and ETH3D. Compared with earlier stereo matching algorithms, this method not only achieves more accurate disparity estimation but also has wider applicability and stronger robustness.

Share and Cite:

Kong, Q. , Zhang, L. , Wang, Z. , Qi, M. and Li, Y. (2023) Adaptive Recurrent Iterative Updating Stereo Matching Network. Journal of Computer and Communications, 11, 83-98. doi: 10.4236/jcc.2023.113007.

Cited by

No relevant information.

Copyright © 2024 by authors and Scientific Research Publishing Inc.

Creative Commons License

This work and the related PDF file are licensed under a Creative Commons Attribution 4.0 International License.