Elysium: Exploring Object-level Perception in Videos via MLLM

25 Mar 2024  ยท  Han Wang, Yanjie Wang, YongJie Ye, Yuxiang Nie, Can Huang ยท

Multi-modal Large Language Models (MLLMs) have demonstrated their ability to perceive objects in still images, but their application in video-related tasks, such as object tracking, remains understudied. This lack of exploration is primarily due to two key challenges. Firstly, extensive pretraining on large-scale video datasets is required to equip MLLMs with the capability to perceive objects across multiple frames and understand inter-frame relationships. Secondly, processing a large number of frames within the context window of Large Language Models (LLMs) can impose a significant computational burden. To address the first challenge, we introduce ElysiumTrack-1M, a large-scale video dataset supported for three tasks: Single Object Tracking (SOT), Referring Single Object Tracking (RSOT), and Video Referring Expression Generation (Video-REG). ElysiumTrack-1M contains 1.27 million annotated video frames with corresponding object boxes and descriptions. Leveraging this dataset, we conduct training of MLLMs and propose a token-compression model T-Selector to tackle the second challenge. Our proposed approach, Elysium: Exploring Object-level Perception in Videos via MLLM, is an end-to-end trainable MLLM that attempts to conduct object-level tasks in videos without requiring any additional plug-in or expert models. All codes and datasets are available at https://github.com/Hon-Wong/Elysium.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Zero-Shot Video Question Answer ActivityNet-QA Elysium Confidence Score 2.9 # 13
Accuracy 43.4 # 14
Zero-Shot Single Object Tracking LaSOT Elysium AUC 56.1 # 1
Normalized Precision 61.0 # 1
Precision 50.1 # 1
Zero-Shot Video Question Answer MSRVTT-QA Elysium Accuracy 67.5 # 2
Confidence Score 3.2 # 10
Zero-Shot Video Question Answer MSVD-QA Elysium Accuracy 75.8 # 3
Confidence Score 3.7 # 6
Zero-Shot Video Question Answer TGIF-QA Elysium Accuracy 66.6 # 6
Confidence Score 3.6 # 5

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