CVMar 16

Question-guided Visual Compression with Memory Feedback for Long-Term Video Understanding

arXiv:2603.1516768.4h-index: 4
Predicted impact top 45% in CV · last 90 daysOriginality Highly original
AI Analysis

This addresses the challenge of understanding complete events in long videos for applications in multimodal AI, representing an incremental improvement over existing memory-augmented approaches.

The paper tackles the problem of long-term video understanding by proposing a feedback-driven framework that uses past visual contexts to enhance perception, achieving significant performance gains such as 6.1% on MLVU test and 18.3% on VNBench Long.

In the context of long-term video understanding with large multimodal models, many frameworks have been proposed. Although transformer-based visual compressors and memory-augmented approaches are often used to process long videos, they usually compress each frame independently and therefore fail to achieve strong performance on tasks that require understanding complete events, such as temporal ordering tasks in MLVU and VNBench. This motivates us to rethink the conventional one-way scheme from perception to memory, and instead establish a feedbackdriven process in which past visual contexts stored in the context memory can benefit ongoing perception. To this end, we propose Question-guided Visual Compression with Memory Feedback (QViC-MF), a framework for long-term video understanding. At its core is a Question-guided Multimodal Selective Attention (QMSA), which learns to preserve visual information related to the given question from both the current clip and the past related frames from the memory. The compressor and memory feedback work iteratively for each clip of the entire video. This simple yet effective design yields large performance gains on longterm video understanding tasks. Extensive experiments show that our method achieves significant improvement over current state-of-the-art methods by 6.1% on MLVU test, 8.3% on LVBench, 18.3% on VNBench Long, and 3.7% on VideoMME Long. The code will be released publicly.

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