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Enhancing Video-LLM Reasoning via Agent-of-Thoughts Distillation

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This paper tackles the problem of video question answering (VideoQA), a task that often requires multi-step reasoning and a profound understanding of spatial-temporal dynamics. While large video-language models perform well on benchmarks, they often lack explainability and spatial-temporal grounding. In this paper, we propose Agent-of-Thoughts Distillation (AoTD), a method that enhances models by incorporating automatically generated Chain-of-Thoughts (CoTs) into the instruction-tuning process. Specifically, we leverage an agent-based system to decompose complex questions into sub-tasks, and address them with specialized vision models, the intermediate results are then treated as reasoning chains. We also introduce a verification mechanism using a large language model (LLM) to ensure the reliability of generated CoTs. Extensive experiments demonstrate that AoTD improves the performance on multiple-choice and open-ended benchmarks.

Yudi Shi, Shangzhe Di, Qirui Chen, Weidi Xie• 2024

Related benchmarks

TaskDatasetResultRank
Spatial ReasoningVSI-Bench--
255
Spatial ReasoningBLINK
Spa. Score61.5
47
Spatial ReasoningAll-Angles Bench
Cam. Pose Est. Accuracy32.4
21
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