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AdaStereo: A Simple and Efficient Approach for Adaptive Stereo Matching

About

Recently, records on stereo matching benchmarks are constantly broken by end-to-end disparity networks. However, the domain adaptation ability of these deep models is quite poor. Addressing such problem, we present a novel domain-adaptive pipeline called AdaStereo that aims to align multi-level representations for deep stereo matching networks. Compared to previous methods for adaptive stereo matching, our AdaStereo realizes a more standard, complete and effective domain adaptation pipeline. Firstly, we propose a non-adversarial progressive color transfer algorithm for input image-level alignment. Secondly, we design an efficient parameter-free cost normalization layer for internal feature-level alignment. Lastly, a highly related auxiliary task, self-supervised occlusion-aware reconstruction is presented to narrow down the gaps in output space. Our AdaStereo models achieve state-of-the-art cross-domain performance on multiple stereo benchmarks, including KITTI, Middlebury, ETH3D, and DrivingStereo, even outperforming disparity networks finetuned with target-domain ground-truths.

Xiao Song, Guorun Yang, Xinge Zhu, Hui Zhou, Zhe Wang, Jianping Shi• 2020

Related benchmarks

TaskDatasetResultRank
Stereo MatchingKITTI 2015 (test)
D1 Error (Overall)3.08
144
Stereo MatchingMiddlebury (test)--
47
Stereo MatchingETH3D (test)--
30
Stereo MatchingMiddlebury 2014 (test)
Bad Pixel Rate (Thresh 2.0)13.7
11
Stereo MatchingETH3D low-res two-view stereo (test)
Bad Pixel Rate (1.0)3.09
10
Stereo MatchingETH3D two view
EPE (px)0.26
8
Stereo MatchingETH3D two-view stereo (test)
Error Rate (0.5px)10.22
6
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