基于重要-连贯奖励的广告视频多模态片段组合网络

Yunlong Tang, Siting Xu, Teng Wang, Qin Lin, Qinglin Lu, Feng Zheng
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引用次数: 0

摘要

广告视频编辑的目的是将广告视频自动编辑成更短的视频,同时保留广告客户传达的连贯内容和关键信息。它主要包括两个阶段:视频分割和片段拼接。现有方法在视频分割阶段表现良好,但存在依赖于额外繁琐的模型和片段组合阶段表现不佳的问题。为了解决这些问题,我们提出了M-SAN (Multi-modal Segment assemble Network,多模态分段装配网络),该网络可以端到端执行高效、连贯的分段装配任务。它利用从片段中提取的多模态表示,并遵循带有注意机制的编码器-解码器Ptr-Net框架。重要性-一致性奖励是为训练M-SAN而设计的。我们在Ads-1k数据集上进行了实验,从广告商那里收集了1000多个丰富广告场景下的视频。为了评估这些方法,我们提出了一个统一的度量,Imp-Coh@Time,它同时全面评估产出的重要性、一致性和持续时间。实验结果表明,该方法在度量上比随机选择和之前的方法取得了更好的性能。消融实验进一步验证了多模态表征和重要相干奖励显著提高了性能。Ads-1k数据集可在:https://github.com/yunlong10/Ads-1k
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-modal Segment Assemblage Network for Ad Video Editing with Importance-Coherence Reward
Advertisement video editing aims to automatically edit advertising videos into shorter videos while retaining coherent content and crucial information conveyed by advertisers. It mainly contains two stages: video segmentation and segment assemblage. The existing method performs well at video segmentation stages but suffers from the problems of dependencies on extra cumbersome models and poor performance at the segment assemblage stage. To address these problems, we propose M-SAN (Multi-modal Segment Assemblage Network) which can perform efficient and coherent segment assemblage task end-to-end. It utilizes multi-modal representation extracted from the segments and follows the Encoder-Decoder Ptr-Net framework with the Attention mechanism. Importance-coherence reward is designed for training M-SAN. We experiment on the Ads-1k dataset with 1000+ videos under rich ad scenarios collected from advertisers. To evaluate the methods, we propose a unified metric, Imp-Coh@Time, which comprehensively assesses the importance, coherence, and duration of the outputs at the same time. Experimental results show that our method achieves better performance than random selection and the previous method on the metric. Ablation experiments further verify that multi-modal representation and importance-coherence reward significantly improve the performance. Ads-1k dataset is available at: https://github.com/yunlong10/Ads-1k
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