SAM3-DMS: Decoupled Memory Selection for Multi-target Video Segmentation of SAM3
By: Ruiqi Shen, Chang Liu, Henghui Ding
Segment Anything 3 (SAM3) has established a powerful foundation that robustly detects, segments, and tracks specified targets in videos. However, in its original implementation, its group-level collective memory selection is suboptimal for complex multi-object scenarios, as it employs a synchronized decision across all concurrent targets conditioned on their average performance, often overlooking individual reliability. To this end, we propose SAM3-DMS, a training-free decoupled strategy that utilizes fine-grained memory selection on individual objects. Experiments demonstrate that our approach achieves robust identity preservation and tracking stability. Notably, our advantage becomes more pronounced with increased target density, establishing a solid foundation for simultaneous multi-target video segmentation in the wild.
Similar Papers
Rethinking Memory Design in SAM-Based Visual Object Tracking
CV and Pattern Recognition
Helps computers remember objects better when they disappear.
Distractor-Aware Memory-Based Visual Object Tracking
CV and Pattern Recognition
Helps computers track moving objects better.
Memory-Augmented SAM2 for Training-Free Surgical Video Segmentation
CV and Pattern Recognition
Helps robots see and track tools in surgery.