Li Jiangfeng, Li Ziyu, Ma Xiaofeng, Zhao Qinpei, Zhang Chenxi, Yu Gang
School of Software Engineering, Tongji University, Shanghai 201804, China.
School of Electronic and Information Engineering, Tongji University, Shanghai 201804, China.
Entropy (Basel). 2023 Jul 2;25(7):1016. doi: 10.3390/e25071016.
Video highlights are welcomed by audiences, and are composed of interesting or meaningful shots, such as funny shots. However, video shots of highlights are currently edited manually by video editors, which is inconvenient and consumes an enormous amount of time. A way to help video editors locate video highlights more efficiently is essential. Since interesting or meaningful highlights in videos usually imply strong sentiments, a sentiment analysis model is proposed to automatically recognize sentiments of video highlights by time-sync comments. As the comments are synchronized with video playback time, the model detects sentiment information in time series of user comments. Moreover, in the model, a sentimental intensity calculation method is designed to compute sentiments of shots quantitatively. The experiments show that our approach improves the F1 score by 12.8% and overlapped number by 8.0% compared with the best existing method in extracting sentiments of highlights and obtaining sentimental intensities, which provides assistance for video editors in editing video highlights efficiently.
视频精彩片段受到观众欢迎,它们由有趣或有意义的镜头组成,比如搞笑镜头。然而,目前精彩片段的视频镜头是由视频编辑手动编辑的,这既不方便又耗费大量时间。一种帮助视频编辑更高效地定位视频精彩片段的方法至关重要。由于视频中有趣或有意义的精彩片段通常蕴含强烈情感,因此提出了一种情感分析模型,通过与时间同步的评论自动识别视频精彩片段的情感。由于评论与视频播放时间同步,该模型在用户评论的时间序列中检测情感信息。此外,在该模型中,设计了一种情感强度计算方法来定量计算镜头的情感。实验表明,与现有最佳方法相比,我们的方法在提取精彩片段的情感和获得情感强度方面,F1分数提高了12.8%,重叠数量提高了8.0%,这为视频编辑高效编辑视频精彩片段提供了帮助。