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BOLT: Boost Large Vision-Language Model Without Training for Long-form Video Understanding

About

Large video-language models (VLMs) have demonstrated promising progress in various video understanding tasks. However, their effectiveness in long-form video analysis is constrained by limited context windows. Traditional approaches, such as uniform frame sampling, often inevitably allocate resources to irrelevant content, diminishing their effectiveness in real-world scenarios. In this paper, we introduce BOLT, a method to BOost Large VLMs without additional Training through a comprehensive study of frame selection strategies. First, to enable a more realistic evaluation of VLMs in long-form video understanding, we propose a multi-source retrieval evaluation setting. Our findings reveal that uniform sampling performs poorly in noisy contexts, underscoring the importance of selecting the right frames. Second, we explore several frame selection strategies based on query-frame similarity and analyze their effectiveness at inference time. Our results show that inverse transform sampling yields the most significant performance improvement, increasing accuracy on the Video-MME benchmark from 53.8% to 56.1% and MLVU benchmark from 58.9% to 63.4%. Our code is available at https://github.com/sming256/BOLT.

Shuming Liu, Chen Zhao, Tianqi Xu, Bernard Ghanem• 2025

Related benchmarks

TaskDatasetResultRank
Video Question AnsweringEgoSchema (Full)
Accuracy60.7
221
Long Video UnderstandingLongVideoBench (val)
Accuracy54.55
210
Video Question AnsweringLongVideoBench
Accuracy59.6
180
Video Question AnsweringEgoSchema
Accuracy64
161
Video Question AnsweringMLVU
Accuracy66.8
143
Video Question AnsweringEgoSchema subset
Accuracy64
114
Video Question AnsweringNEXT-QA
Overall Accuracy79.5
105
Video UnderstandingVideo-MME
Overall Score68.74
96
Video Question AnsweringNextQA
Accuracy79.5
78
Video Question AnsweringLongVideoBench (val)
Accuracy59.6
55
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Code

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