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Autori principali: Sun, Yang-Che, Sun, Cheng, Lin, Chin-Yang, Yang, Fu-En, Chen, Min-Hung, Lin, Yen-Yu, Liu, Yu-Lun
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2601.08831
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author Sun, Yang-Che
Sun, Cheng
Lin, Chin-Yang
Yang, Fu-En
Chen, Min-Hung
Lin, Yen-Yu
Liu, Yu-Lun
author_facet Sun, Yang-Che
Sun, Cheng
Lin, Chin-Yang
Yang, Fu-En
Chen, Min-Hung
Lin, Yen-Yu
Liu, Yu-Lun
contents Video object segmentation methods like SAM2 achieve strong performance through memory-based architectures but struggle under large viewpoint changes due to reliance on appearance features. Traditional 3D instance segmentation methods address viewpoint consistency but require camera poses, depth maps, and expensive preprocessing. We introduce 3AM, a training-time enhancement that integrates 3D-aware features from MUSt3R into SAM2. Our lightweight Feature Merger fuses multi-level MUSt3R features that encode implicit geometric correspondence. Combined with SAM2's appearance features, the model achieves geometry-consistent recognition grounded in both spatial position and visual similarity. We propose a field-of-view aware sampling strategy ensuring frames observe spatially consistent object regions for reliable 3D correspondence learning. Critically, our method requires only RGB input at inference, with no camera poses or preprocessing. On challenging datasets with wide-baseline motion (ScanNet++, Replica), 3AM substantially outperforms SAM2 and extensions, achieving 90.6% IoU and 71.7% Tracking Recall on ScanNet++'s Selected Subset, improving over state-of-the-art VOS methods by +15.9 and +30.4 points. Project page: https://jayisaking.github.io/3AM-Page/
format Preprint
id arxiv_https___arxiv_org_abs_2601_08831
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle 3AM: 3egment Anything with Geometric Consistency in Videos
Sun, Yang-Che
Sun, Cheng
Lin, Chin-Yang
Yang, Fu-En
Chen, Min-Hung
Lin, Yen-Yu
Liu, Yu-Lun
Computer Vision and Pattern Recognition
Video object segmentation methods like SAM2 achieve strong performance through memory-based architectures but struggle under large viewpoint changes due to reliance on appearance features. Traditional 3D instance segmentation methods address viewpoint consistency but require camera poses, depth maps, and expensive preprocessing. We introduce 3AM, a training-time enhancement that integrates 3D-aware features from MUSt3R into SAM2. Our lightweight Feature Merger fuses multi-level MUSt3R features that encode implicit geometric correspondence. Combined with SAM2's appearance features, the model achieves geometry-consistent recognition grounded in both spatial position and visual similarity. We propose a field-of-view aware sampling strategy ensuring frames observe spatially consistent object regions for reliable 3D correspondence learning. Critically, our method requires only RGB input at inference, with no camera poses or preprocessing. On challenging datasets with wide-baseline motion (ScanNet++, Replica), 3AM substantially outperforms SAM2 and extensions, achieving 90.6% IoU and 71.7% Tracking Recall on ScanNet++'s Selected Subset, improving over state-of-the-art VOS methods by +15.9 and +30.4 points. Project page: https://jayisaking.github.io/3AM-Page/
title 3AM: 3egment Anything with Geometric Consistency in Videos
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2601.08831