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5 months ago

VideoLLaMA 2: Advancing Spatial-Temporal Modeling and Audio Understanding in Video-LLMs

VideoLLaMA 2: Advancing Spatial-Temporal Modeling and Audio
  Understanding in Video-LLMs

Abstract

In this paper, we present the VideoLLaMA 2, a set of Video Large LanguageModels (Video-LLMs) designed to enhance spatial-temporal modeling and audiounderstanding in video and audio-oriented tasks. Building upon its predecessor,VideoLLaMA 2 incorporates a tailor-made Spatial-Temporal Convolution (STC)connector, which effectively captures the intricate spatial and temporaldynamics of video data. Additionally, we integrate an Audio Branch into themodel through joint training, thereby enriching the multimodal understandingcapabilities of the model by seamlessly incorporating audio cues. Comprehensiveevaluations on multiple-choice video question answering (MC-VQA), open-endedvideo question answering (OE-VQA), and video captioning (VC) tasks demonstratethat VideoLLaMA 2 consistently achieves competitive results among open-sourcemodels and even gets close to some proprietary models on several benchmarks.Furthermore, VideoLLaMA 2 exhibits reasonable improvements in audio-only andaudio-video question-answering (AQA & OE-AVQA) benchmarks over existing models.These advancements underline VideoLLaMA 2's superior performance in multimodalcomprehension, setting a new standard for intelligent video analysis systems.All models are public to facilitate further research.

Code Repositories

damo-nlp-sg/videollama2
Official
pytorch
Mentioned in GitHub
damo-nlp-sg/videollama3
pytorch
Mentioned in GitHub
damo-nlp-sg/inf-clip
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
temporal-relation-extraction-on-vinogroundVideoLLaMA2-72B
Group Score: 8.4
Text Score: 36.2
Video Score: 21.8
video-question-answering-on-mvbenchVideoLLaMA2 (72B)
Avg.: 62.0
video-question-answering-on-next-qaVideoLLaMA2.1(7B)
Accuracy: 75.6
video-question-answering-on-perception-testVideoLLaMA2 (72B)
Accuracy (Top-1): 57.5
video-question-answering-on-tvbenchVideoLLaMA2 72B
Average Accuracy: 48.4
video-question-answering-on-tvbenchVideoLLaMA2 7B
Average Accuracy: 42.9
video-question-answering-on-tvbenchVideoLLaMA2.1
Average Accuracy: 42.1
zero-shot-video-question-answer-on-egoschema-1VideoLLaMA2 (72B)
Accuracy: 63.9
zero-shot-video-question-answer-on-video-mmeVideoLLaMA2 (72B)
Accuracy (%): 60.9
zero-shot-video-question-answer-on-video-mme-1VideoLLaMA2 (72B)
Accuracy (%): 63.1

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