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Memory Consolidation Enables Long-Context Video Understanding

About

Most transformer-based video encoders are limited to short temporal contexts due to their quadratic complexity. While various attempts have been made to extend this context, this has often come at the cost of both conceptual and computational complexity. We propose to instead re-purpose existing pre-trained video transformers by simply fine-tuning them to attend to memories derived non-parametrically from past activations. By leveraging redundancy reduction, our memory-consolidated vision transformer (MC-ViT) effortlessly extends its context far into the past and exhibits excellent scaling behavior when learning from longer videos. In doing so, MC-ViT sets a new state-of-the-art in long-context video understanding on EgoSchema, Perception Test, and Diving48, outperforming methods that benefit from orders of magnitude more parameters.

Ivana Bala\v{z}evi\'c, Yuge Shi, Pinelopi Papalampidi, Rahma Chaabouni, Skanda Koppula, Olivier J. H\'enaff• 2024

Related benchmarks

TaskDatasetResultRank
Video Question AnsweringEgoSchema (Full)
Accuracy55.6
193
Video Question AnsweringNExT-QA (val)
Overall Acc65
176
Action RecognitionDiving-48
Top-1 Acc91
82
Video Question AnsweringEgoSchema (test)
Accuracy44.4
80
Video Question AnsweringPerception (test)
Test Accuracy48.1
59
Video Question AnsweringEgoSchema 500-question subset
Accuracy63.5
50
Video Question AnsweringEgoSchema 5031 videos (test)
Top-1 Accuracy44.4
26
Video Question AnsweringNext-QA v1 (test)
Overall Acc65
24
Video Question AnsweringPerception Test zero-shot few-shot
Accuracy48.1
6
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