Improve Temporal Reasoning in Multimodal Large Language Models via Video Contrastive Decoding
–Neural Information Processing Systems
A major distinction between video and image understanding is that the former requires reasoning over time. Existing Video Large Language Models (VLLMs) demonstrate promising performance in general video understanding, such as brief captioning or object recognition within individual frames. However, they often struggle with temporal reasoning such as understanding continuous actions or tracking object transformations over time--which typically demands the integration of multiple frames in a temporally coherent manner. We first explore and explain such failures in Video LLMs from the perspective of \textit{language and ``image'' priors.} While existing research has attempted to enhance the temporal understanding of VLLMs through various training strategies, the demand for expensive computational resources and training data often presents significant barriers.
Neural Information Processing Systems
Jun-14-2026, 06:51:21 GMT
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