TinySAM 2 reaches 90% of SAM 2.1 performance on DAVIS and SA-V using 7% of the memory tokens and 3% of the training data via frame selection, spatial average pooling, temporal similarity-based token pruning, and a RepViT image encoder.
Scalable video object seg- mentation with identification mechanism.IEEE Transac- tions on Pattern Analysis and Machine Intelligence, 46(9): 6247–6262, 2024
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TinySAM 2: Extreme Memory Compression for Efficient Track Anything Model
TinySAM 2 reaches 90% of SAM 2.1 performance on DAVIS and SA-V using 7% of the memory tokens and 3% of the training data via frame selection, spatial average pooling, temporal similarity-based token pruning, and a RepViT image encoder.