你的反应表明你喜欢这部电影:通过反应感应自动内容评级

Xuan Bao, Songchun Fan, A. Varshavsky, Kevin A. Li, Romit Roy Choudhury
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引用次数: 44

摘要

本文描述了一个多粒度自动分级内容(主要是电影和视频)的系统。我们的主要观察结果是,如今智能手机和平板电脑上丰富的传感器可以用来捕捉用户在这些设备上观看电影时的各种反应。从笑声的声音特征来检测哪些场景是有趣的,到平板电脑的静止表明激烈的戏剧。此外,与大多数传统系统不同,这些评级不需要只产生一个数字分数,而是可以扩展以捕获用户体验。我们将这些想法整合到一个名为Pulse的Android原型中,并让11名在三星平板电脑上观看4到6部电影的用户进行测试。令人鼓舞的结果表明,用户的实际评分与系统生成的评分之间存在一致的相关性。通过更严格的测试和优化,Pulse可能成为现实世界采用的候选产品。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Your reactions suggest you liked the movie: automatic content rating via reaction sensing
This paper describes a system for automatically rating content - mainly movies and videos - at multiple granularities. Our key observation is that the rich set of sensors available on today's smartphones and tablets could be used to capture a wide spectrum of user reactions while users are watching movies on these devices. Examples range from acoustic signatures of laughter to detect which scenes were funny, to the stillness of the tablet indicating intense drama. Moreover, unlike in most conventional systems, these ratings need not result in just one numeric score, but could be expanded to capture the user's experience. We combine these ideas into an Android based prototype called Pulse, and test it with 11 users each of whom watched 4 to 6 movies on Samsung tablets. Encouraging results show consistent correlation between the user's actual ratings and those generated by the system. With more rigorous testing and optimization, Pulse could be a candidate for real-world adoption.
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