SemStereo: Semantic-Constrained Stereo Matching Network for Remote Sensing
Chen Chen, Liangjin Zhao, Yuanchun He, Yingxuan Long, Kaiqiang Chen,, Zhirui Wang, Yanfeng Hu, Xian Sun

TL;DR
This paper introduces SemStereo, a novel network that explicitly and implicitly integrates semantic segmentation with stereo matching for remote sensing, improving accuracy in both tasks.
Contribution
It proposes a new cascade structure and modules that enforce semantic constraints on stereo matching, capturing their inherent connections more effectively.
Findings
Achieves state-of-the-art results on US3D and WHU datasets.
Enhances stereo matching accuracy with semantic guidance.
Improves semantic segmentation performance through stereo constraints.
Abstract
Semantic segmentation and 3D reconstruction are two fundamental tasks in remote sensing, typically treated as separate or loosely coupled tasks. Despite attempts to integrate them into a unified network, the constraints between the two heterogeneous tasks are not explicitly modeled, since the pioneering studies either utilize a loosely coupled parallel structure or engage in only implicit interactions, failing to capture the inherent connections. In this work, we explore the connections between the two tasks and propose a new network that imposes semantic constraints on the stereo matching task, both implicitly and explicitly. Implicitly, we transform the traditional parallel structure to a new cascade structure termed Semantic-Guided Cascade structure, where the deep features enriched with semantic information are utilized for the computation of initial disparity maps, enhancing…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Remote Sensing and Land Use · Remote-Sensing Image Classification
