CVOct 21, 2024

SAM2Long: Enhancing SAM 2 for Long Video Segmentation with a Training-Free Memory Tree

arXiv:2410.16268v381 citationsh-index: 32Has Code
Originality Incremental advance
AI Analysis

This work addresses segmentation robustness in long-term videos for computer vision applications, representing an incremental improvement over SAM 2.

The paper tackles the error accumulation problem in SAM 2's memory module for long video segmentation by introducing SAM2Long, a training-free strategy that uses a memory tree with multiple segmentation pathways and heuristic search, achieving an average improvement of 3.0 points in J&F on benchmarks like SA-V and LVOS.

The Segment Anything Model 2 (SAM 2) has emerged as a powerful foundation model for object segmentation in both images and videos, paving the way for various downstream video applications. The crucial design of SAM 2 for video segmentation is its memory module, which prompts object-aware memories from previous frames for current frame prediction. However, its greedy-selection memory design suffers from the "error accumulation" problem, where an errored or missed mask will cascade and influence the segmentation of the subsequent frames, which limits the performance of SAM 2 toward complex long-term videos. To this end, we introduce SAM2Long, an improved training-free video object segmentation strategy, which considers the segmentation uncertainty within each frame and chooses the video-level optimal results from multiple segmentation pathways in a constrained tree search manner. In practice, we maintain a fixed number of segmentation pathways throughout the video. For each frame, multiple masks are proposed based on the existing pathways, creating various candidate branches. We then select the same fixed number of branches with higher cumulative scores as the new pathways for the next frame. After processing the final frame, the pathway with the highest cumulative score is chosen as the final segmentation result. Benefiting from its heuristic search design, SAM2Long is robust toward occlusions and object reappearances, and can effectively segment and track objects for complex long-term videos. Notably, SAM2Long achieves an average improvement of 3.0 points across all 24 head-to-head comparisons, with gains of up to 5.3 points in J&F on long-term video object segmentation benchmarks such as SA-V and LVOS. The code is released at https://github.com/Mark12Ding/SAM2Long.

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