Основные понятия
MA-LMM introduces a long-term memory bank to efficiently and effectively model long-term video sequences by processing frames in an online manner and storing historical video information, addressing the limitations of current large multimodal models.
Аннотация
The paper introduces MA-LMM, a memory-augmented large multimodal model for efficient and effective long-term video understanding. The key contributions are:
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Long-term Memory Bank Design:
- MA-LMM processes video frames sequentially and stores the visual features and learned queries in two separate memory banks.
- The memory banks allow the model to reference historical video content for long-term analysis without exceeding the context length constraints or GPU memory limits of large language models (LLMs).
- The memory bank can be seamlessly integrated into current multimodal LLMs in an off-the-shelf manner.
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Online Video Processing:
- Unlike existing methods that process all video frames simultaneously, MA-LMM processes video frames in an online manner, significantly reducing the GPU memory footprint for long video sequences.
- This online processing approach effectively addresses the constraints posed by the limited context length in LLMs.
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Memory Bank Compression:
- To maintain the length of the memory bank constant relative to the input video length, MA-LMM proposes a memory bank compression method that selects and averages the most similar adjacent frame features.
- This compression technique preserves the temporal information while significantly reducing the redundancies in long videos.
The paper conducts extensive experiments on various video understanding tasks, including long-term video understanding, video question answering, and video captioning. MA-LMM achieves state-of-the-art performances across multiple datasets, demonstrating its superior capabilities in efficiently and effectively modeling long-term video sequences.
Статистика
The paper does not provide any specific numerical data or statistics to support the key logics. The focus is on the model design and architecture.