基于海报图像的深度神经网络电影类型分类

N. Hossain, Md. Martuza Ahamad, Sakifa Aktar, M. Moni
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引用次数: 1

摘要

利用海报图像上的深度学习模型来对相应的电影类型进行分类,这在计算机视觉领域是一个难以置信的挑战。本研究的目的是制作一个计算机化的框架,该框架可以处理图像,包括低级和高级亮点(如物体检测和形式),以对电影类型进行分类。对电影进行分类使观看者更容易选择他们想看的电影。对电影进行分类的方法被称为类型。许多人开始使用深度神经网络处理低级特征(颜色、边缘)来进行电影类型分类。在这项工作中,卷积神经网络被应用于使用相应的海报图像对电影类型进行分类。本研究首先从电影海报图像中提取特征,然后对电影类型进行分类。提出了一种基于大量海报图像的多层卷积神经网络。本研究对电影类型的分类准确率为91.15%,f1得分为0.22,精度为0.67,hamming loss为0.1,zero - one loss为0.75。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Movie Genre Classification with Deep Neural Network using Poster Images
The utility of the deep learning model on poster images to classify their corresponding movie genre is an incredible challenge in computer vision. The objective of this study is to make a computerized framework that works with pictures, both low-level and high-level highlights (such as object detection and form) to classify movie genres. Categorizing motion pictures makes it easier for the watcher to choose a movie they would like to watch. The method of categorizing movies is known as a genre. Many people started to work with low-level features (colour, edge) utilizing deep neural networks for movie genre classification. In this work, a convolutional neural network has been applied to classify the movie genre using their corresponding poster images. At first, this study extracted features from the movie's poster images and then classified the movie genres. A multilayered convolutional neural network is outlined which is trained over a large number of poster images. This study reached an accuracy of 91.15%, f1 score of 0.22, precision 0.67, hamming loss 0.1 and zero one loss 0.75 for the classification of the movie genre.
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