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Main Authors: Yu, Hai, Deng, Chong, Zhang, Qinglin, Liu, Jiaqing, Chen, Qian, Wang, Wen
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2408.00365
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_version_ 1866916544153387008
author Yu, Hai
Deng, Chong
Zhang, Qinglin
Liu, Jiaqing
Chen, Qian
Wang, Wen
author_facet Yu, Hai
Deng, Chong
Zhang, Qinglin
Liu, Jiaqing
Chen, Qian
Wang, Wen
contents The video topic segmentation (VTS) task segments videos into intelligible, non-overlapping topics, facilitating efficient comprehension of video content and quick access to specific content. VTS is also critical to various downstream video understanding tasks. Traditional VTS methods using shallow features or unsupervised approaches struggle to accurately discern the nuances of topical transitions. Recently, supervised approaches have achieved superior performance on video action or scene segmentation over unsupervised approaches. In this work, we improve supervised VTS by thoroughly exploring multimodal fusion and multimodal coherence modeling. Specifically, (1) we enhance multimodal fusion by exploring different architectures using cross-attention and mixture of experts. (2) To generally strengthen multimodality alignment and fusion, we pre-train and fine-tune the model with multimodal contrastive learning. (3) We propose a new pre-training task tailored for the VTS task, and a novel fine-tuning task for enhancing multimodal coherence modeling for VTS. We evaluate the proposed approaches on educational videos, in the form of lectures, due to the vital role of topic segmentation of educational videos in boosting learning experiences. Additionally, we introduce a large-scale Chinese lecture video dataset to augment the existing English corpus, promoting further research in VTS. Experiments on both English and Chinese lecture datasets demonstrate that our model achieves superior VTS performance compared to competitive unsupervised and supervised baselines.
format Preprint
id arxiv_https___arxiv_org_abs_2408_00365
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Multimodal Fusion and Coherence Modeling for Video Topic Segmentation
Yu, Hai
Deng, Chong
Zhang, Qinglin
Liu, Jiaqing
Chen, Qian
Wang, Wen
Artificial Intelligence
Computer Vision and Pattern Recognition
Image and Video Processing
The video topic segmentation (VTS) task segments videos into intelligible, non-overlapping topics, facilitating efficient comprehension of video content and quick access to specific content. VTS is also critical to various downstream video understanding tasks. Traditional VTS methods using shallow features or unsupervised approaches struggle to accurately discern the nuances of topical transitions. Recently, supervised approaches have achieved superior performance on video action or scene segmentation over unsupervised approaches. In this work, we improve supervised VTS by thoroughly exploring multimodal fusion and multimodal coherence modeling. Specifically, (1) we enhance multimodal fusion by exploring different architectures using cross-attention and mixture of experts. (2) To generally strengthen multimodality alignment and fusion, we pre-train and fine-tune the model with multimodal contrastive learning. (3) We propose a new pre-training task tailored for the VTS task, and a novel fine-tuning task for enhancing multimodal coherence modeling for VTS. We evaluate the proposed approaches on educational videos, in the form of lectures, due to the vital role of topic segmentation of educational videos in boosting learning experiences. Additionally, we introduce a large-scale Chinese lecture video dataset to augment the existing English corpus, promoting further research in VTS. Experiments on both English and Chinese lecture datasets demonstrate that our model achieves superior VTS performance compared to competitive unsupervised and supervised baselines.
title Multimodal Fusion and Coherence Modeling for Video Topic Segmentation
topic Artificial Intelligence
Computer Vision and Pattern Recognition
Image and Video Processing
url https://arxiv.org/abs/2408.00365