利用特征融合从单个海报图像中进行电影类型分类

Farzaneh Nadem, Rahil Mahdian, Hassan Zareian
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引用次数: 0

摘要

电影业是任何社会中规模最大、最具影响力的部门之一。每一部电影都由不同的元素组成,如演员、导演、准备元素、海报等。任何电影中最重要的元素之一就是海报,它在吸引观众方面起着重要的作用。从电影海报中可以获得各种信息,包括电影类型。今天,电影类型是手动识别的。在本文中,我们的目标是考虑基于电影海报的电影类型自动检测。电影类型的自动检测可以在电影存档系统、搜索引擎、推荐系统等中有各种应用。在本文提出的方法中,使用了四类嵌入特征,包括海报中的对象,识别海报中的演员,海报中演员的年龄和性别,以及他们的面部表情。我们提出的方法与之前在IMDB数据集海报上的一些杰出作品进行了比较。通过将集成分类方法引入到我们的工作中,我们提出的方法的结果可以达到92%的平均预测准确率,优于以往的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genre Classification of Movies from a Single Poster Image Using Feature Fusion
The movie industry is one of the largest and most influential sectors of any community. Each movie in the industry consists of different elements such as actors, directors, preparation elements, posters, etc. One of the most important elements in any movie is its poster, that plays an important role in attracting the audience. Various information can be obtained from the movie poster, including the movie genre. Today, the movie genre is recognized manually. In this paper, we aim to consider the automatic detection of movie genres based on its poster. Automatic detection of movie genres can have various applications in movie archive systems, search engines, recommender systems, and more. In the proposed method of this paper, four categories of embedding features including the objects in the poster, identifying the actors, age, and gender of the actors in the poster, and their facial expressions are used. Our proposed method is compared with some outstanding previous works over the IMDB dataset poster. By incorporating an ensemble classification approach in our work, the results of our proposed method could achieve the average predicting accuracy of 92% which could outperform the previous works.
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