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Movie posters classification into genres based on low-level features

机译:电影海报根据低级特征分类

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摘要

A person can quickly grasp the genre (drama, comedy, cartoons, etc.) from a movie poster, regardless of visual clutter and the level of details. Bearing this in mind, it can be assumed that simple properties of a movie poster should play a significant role in automated detection of movie genres. Therefore, low-level features based on colors and edges are extracted from poster images and used for poster classification into genres. In this paper, poster classification is modeled as a multilabel classification task, where a single movie may belong to more than one class (genre). To simplify and solve the multilabel problem, two methods for multi-label data transformation are described and evaluated given the classification results obtained by distance ranking, Naïve Bayes and RAKEL. Experiments are conducted on a set of 1500 posters with 6 movie genres. Results provide insights into the properties of the discussed algorithms and features.
机译:一个人可以快速地掌握电影海报中的类型(戏剧,喜剧,卡通等),而无需考虑视觉混乱和细节水平。牢记这一点,可以假定电影海报的简单属性在电影类型的自动检测中起着重要的作用。因此,从海报图像中提取基于颜色和边缘的低级特征,并将其用于海报分类。在本文中,海报分类被建模为一个多标签分类任务,其中单个电影可能属于一个以上的类别(类型)。为了简化和解决多标签问题,根据距离排序获得的分类结果,描述了两种用于评估多标签数据的方法,即朴素贝叶斯(NaïveBayes)和拉克尔(RAKEL)。实验是在1500种具有6种电影类型的海报上进行的。结果提供了对所讨论算法和功能的特性的见解。

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