Rating a video based on its content is an important step for classifying video age categories. Movie content rating and TV show rating are the two most common rating systems established by professional committees. However, manually reviewing and evaluating scene/film content by a committee is a tedious work and it becomes increasingly difficult with the ever-growing amount of online video content. As such, a desirable solution is to use computer vision based video content analysis techniques to automate the evaluation process. In this paper, related works are summarized for action recognition, multi-modal learning, movie genre classification, and sensitive content detection in the context of content moderation and movie content rating. The project page is available at https://github.com/fcakyon/content-moderation-deep-learning.
翻译:根据视频内容评分视频是按视频年龄分类的一个重要步骤;电影内容评分和电视节目评分是专业委员会设立的两种最常见的评分制度;然而,一个委员会人工审查和评价现场/电影内容是一项烦琐的工作,随着网上视频内容数量的不断增加,这种评分变得越来越困难;因此,一个可取的解决办法是利用基于计算机的视频内容分析技术使评价过程自动化;本文件概述了相关作品,以便在内容适度和电影内容评分方面进行行动识别、多模式学习、电影流派分类和敏感内容检测;项目网页见https://github.com/fcakyon/content-moderation-deeplearning。