CVMar 26

RS-SSM: Refining Forgotten Specifics in State Space Model for Video Semantic Segmentation

arXiv:2603.2429539.7h-index: 13Has Code
AI Analysis

This work addresses the challenge of maintaining temporal consistency in video semantic segmentation for applications like autonomous driving or video analysis, representing an incremental improvement over existing state space models.

The paper tackles the problem of state space models forgetting specific information during video semantic segmentation, which limits pixel-level spatiotemporal modeling, and proposes RS-SSM to refine these forgotten specifics, achieving state-of-the-art performance on four benchmarks while maintaining high computational efficiency.

Recently, state space models have demonstrated efficient video segmentation through linear-complexity state space compression. However, Video Semantic Segmentation (VSS) requires pixel-level spatiotemporal modeling capabilities to maintain temporal consistency in segmentation of semantic objects. While state space models can preserve common semantic information during state space compression, the fixed-size state space inevitably forgets specific information, which limits the models' capability for pixel-level segmentation. To tackle the above issue, we proposed a Refining Specifics State Space Model approach (RS-SSM) for video semantic segmentation, which performs complementary refining of forgotten spatiotemporal specifics. Specifically, a Channel-wise Amplitude Perceptron (CwAP) is designed to extract and align the distribution characteristics of specific information in the state space. Besides, a Forgetting Gate Information Refiner (FGIR) is proposed to adaptively invert and refine the forgetting gate matrix in the state space model based on the specific information distribution. Consequently, our RS-SSM leverages the inverted forgetting gate to complementarily refine the specific information forgotten during state space compression, thereby enhancing the model's capability for spatiotemporal pixel-level segmentation. Extensive experiments on four VSS benchmarks demonstrate that our RS-SSM achieves state-of-the-art performance while maintaining high computational efficiency. The code is available at https://github.com/zhoujiahuan1991/CVPR2026-RS-SSM.

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