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Main Authors: Wang, Jiahui, Zhu, Haiyue, Guo, Haoren, Mamun, Abdullah Al, Xiang, Cheng, Lee, Tong Heng
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.21927
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author Wang, Jiahui
Zhu, Haiyue
Guo, Haoren
Mamun, Abdullah Al
Xiang, Cheng
Lee, Tong Heng
author_facet Wang, Jiahui
Zhu, Haiyue
Guo, Haoren
Mamun, Abdullah Al
Xiang, Cheng
Lee, Tong Heng
contents Recent 6D pose estimation methods demonstrate notable performance but still face some practical limitations. For instance, many of them rely heavily on sensor depth, which may fail with challenging surface conditions, such as transparent or highly reflective materials. In the meantime, RGB-based solutions provide less robust matching performance in low-light and texture-less scenes due to the lack of geometry information. Motivated by these, we propose SingRef6D, a lightweight pipeline requiring only a single RGB image as a reference, eliminating the need for costly depth sensors, multi-view image acquisition, or training view synthesis models and neural fields. This enables SingRef6D to remain robust and capable even under resource-limited settings where depth or dense templates are unavailable. Our framework incorporates two key innovations. First, we propose a token-scaler-based fine-tuning mechanism with a novel optimization loss on top of Depth-Anything v2 to enhance its ability to predict accurate depth, even for challenging surfaces. Our results show a 14.41% improvement (in $δ_{1.05}$) on REAL275 depth prediction compared to Depth-Anything v2 (with fine-tuned head). Second, benefiting from depth availability, we introduce a depth-aware matching process that effectively integrates spatial relationships within LoFTR, enabling our system to handle matching for challenging materials and lighting conditions. Evaluations of pose estimation on the REAL275, ClearPose, and Toyota-Light datasets show that our approach surpasses state-of-the-art methods, achieving a 6.1% improvement in average recall.
format Preprint
id arxiv_https___arxiv_org_abs_2509_21927
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SingRef6D: Monocular Novel Object Pose Estimation with a Single RGB Reference
Wang, Jiahui
Zhu, Haiyue
Guo, Haoren
Mamun, Abdullah Al
Xiang, Cheng
Lee, Tong Heng
Computer Vision and Pattern Recognition
Recent 6D pose estimation methods demonstrate notable performance but still face some practical limitations. For instance, many of them rely heavily on sensor depth, which may fail with challenging surface conditions, such as transparent or highly reflective materials. In the meantime, RGB-based solutions provide less robust matching performance in low-light and texture-less scenes due to the lack of geometry information. Motivated by these, we propose SingRef6D, a lightweight pipeline requiring only a single RGB image as a reference, eliminating the need for costly depth sensors, multi-view image acquisition, or training view synthesis models and neural fields. This enables SingRef6D to remain robust and capable even under resource-limited settings where depth or dense templates are unavailable. Our framework incorporates two key innovations. First, we propose a token-scaler-based fine-tuning mechanism with a novel optimization loss on top of Depth-Anything v2 to enhance its ability to predict accurate depth, even for challenging surfaces. Our results show a 14.41% improvement (in $δ_{1.05}$) on REAL275 depth prediction compared to Depth-Anything v2 (with fine-tuned head). Second, benefiting from depth availability, we introduce a depth-aware matching process that effectively integrates spatial relationships within LoFTR, enabling our system to handle matching for challenging materials and lighting conditions. Evaluations of pose estimation on the REAL275, ClearPose, and Toyota-Light datasets show that our approach surpasses state-of-the-art methods, achieving a 6.1% improvement in average recall.
title SingRef6D: Monocular Novel Object Pose Estimation with a Single RGB Reference
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2509.21927