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Cross-Vehicle 3D Geometric Consistency for Self-Supervised Surround Depth Estimation on Articulated Vehicles
by
Meng, Joshua H
, Wang, Wenjun
, Qiu, Jiyuan
, Liu, Weimin
in
Cameras
/ Datasets
/ Ground plane
/ Motion simulation
/ Regularization
/ Robotics
/ Segments
/ Space perception
/ Vehicles
2026
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Cross-Vehicle 3D Geometric Consistency for Self-Supervised Surround Depth Estimation on Articulated Vehicles
by
Meng, Joshua H
, Wang, Wenjun
, Qiu, Jiyuan
, Liu, Weimin
in
Cameras
/ Datasets
/ Ground plane
/ Motion simulation
/ Regularization
/ Robotics
/ Segments
/ Space perception
/ Vehicles
2026
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Do you wish to request the book?
Cross-Vehicle 3D Geometric Consistency for Self-Supervised Surround Depth Estimation on Articulated Vehicles
by
Meng, Joshua H
, Wang, Wenjun
, Qiu, Jiyuan
, Liu, Weimin
in
Cameras
/ Datasets
/ Ground plane
/ Motion simulation
/ Regularization
/ Robotics
/ Segments
/ Space perception
/ Vehicles
2026
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Cross-Vehicle 3D Geometric Consistency for Self-Supervised Surround Depth Estimation on Articulated Vehicles
Paper
Cross-Vehicle 3D Geometric Consistency for Self-Supervised Surround Depth Estimation on Articulated Vehicles
2026
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Overview
Surround depth estimation provides a cost-effective alternative to LiDAR for 3D perception in autonomous driving. While recent self-supervised methods explore multi-camera settings to improve scale awareness and scene coverage, they are primarily designed for passenger vehicles and rarely consider articulated vehicles or robotics platforms. The articulated structure introduces complex cross-segment geometry and motion coupling, making consistent depth reasoning across views more challenging. In this work, we propose ArticuSurDepth, a self-supervised framework for surround-view depth estimation on articulated vehicles that enhances depth learning through cross-view and cross-vehicle geometric consistency guided by structural priors from vision foundation model. Specifically, we introduce multi-view spatial context enrichment strategy and a cross-view surface normal constraint to improve structural coherence across spatial and temporal contexts. We further incorporate camera height regularization with ground plane-awareness to encourage metric depth estimation, together with cross-vehicle pose consistency that bridges motion estimation between articulated segments. To validate our proposed method, an articulated vehicle experiment platform was established with a dataset collected over it. Experiment results demonstrate state-of-the-art (SoTA) performance of depth estimation on our self-collected dataset as well as on DDAD, nuScenes, and KITTI benchmarks.
Publisher
Cornell University Library, arXiv.org
Subject
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