Video Retrieval Based on CNN Feature and Scalar Quantization

Junlin Che, Guixuan Zhang, Shuwu Zhang
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Abstract

In recent years, the video dissemination has become an important information medium with the development of the Internet and the rise of short video platforms, and infringements against long videos have followed, so an method of efficient and automated short video infringement detection is necessary. This paper proposes a method of video copyright detection based on CNN features and Scalar Quantizer, in which the deep convolutional neural network is used to obtain the decoded video frame’s feature vector, and then the Scalar Quantizer is used to search the feature vector based on the approximate nearest neighbor search, and finally the target video is determined by finding the shortest average Euclidean distance of the target video frames. This paper sets a distance threshold and a ratio threshold based on this method to form a new method, and then compares the recall and precision of two methods.
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基于CNN特征和标量量化的视频检索
近年来,随着互联网的发展和短视频平台的兴起,视频传播已经成为一种重要的信息媒介,长视频侵权也随之出现,因此需要一种高效、自动化的短视频侵权检测方法。本文提出了一种基于CNN特征和标量量化的视频版权检测方法,该方法首先利用深度卷积神经网络获取解码后的视频帧的特征向量,然后利用标量量化器基于近似最近邻搜索对特征向量进行搜索,最后通过寻找目标视频帧之间最短的平均欧氏距离来确定目标视频。本文在此基础上分别设置距离阈值和比例阈值,形成一种新的方法,并对两种方法的查全率和查准率进行比较。
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