中教数据库 > Journal of Electronic Science and Technology > 文章详情

Recognition of Film Type Using HSV Features on Deep-Learning Neural Networks

更新时间:2023-05-28

【摘要】The number of films is numerous and the film contents are complex over the Internet and multimedia sources. It is time consuming for a viewer to select a favorite film. This paper presents an automatic recognition system of film types. Initially, a film is firstly sampled as frame sequences. The color space, including hue, saturation,and brightness value(HSV), is analyzed for each sampled frame by computing the deviation and mean of HSV for each film. These features are utilized as inputs to a deep-learning neural network(DNN) for the recognition of film types. One hundred films are utilized to train and validate the model parameters of DNN. In the testing phase, a film is recognized as one of the five categories, including action, comedy, horror thriller, romance, and science fiction, by the trained DNN. The experimental results reveal that the film types can be effectively recognized by the proposed approach, enabling the viewer to select an interesting film accurately and quickly.

【关键词】

411 2页 免费

发表评论

登录后发表评论 (已发布 0条)

点亮你的头像 秀出你的观点

0/500
以上留言仅代表用户个人观点,不代表中教立场
相关文献

推荐期刊

Copyright © 2013-2016 ZJHJ Corporation,All Rights Reserved

京ICP备2021021570号-13

京公网安备 11011102000866号