视频指纹识别:过去,现在和未来

IF 1.3 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC Frontiers in signal processing Pub Date : 2022-09-02 DOI:10.3389/frsip.2022.984169
M. Allouche, M. Mitrea
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引用次数: 1

摘要

在过去的几十年里,视频制作和消费显著增长:电视/电影摄影、社交网络、数字营销和视频监控逐渐和累积地将视频内容转变为可交换、存储和处理的偏好类型的数据。视频指纹(也称为基于内容的复制检测或近重复检测)属于视频处理领域,它将致力于识别参考视频数据集中给定视频序列(查询)的重复和/或复制版本的研究工作重新分组。本文件报告了对视频指纹识别的过去和现在的最新研究,同时试图确定其发展趋势。首先,建立了概念基础和评价框架。通过这种方式,方法学方法(位于图像处理、机器学习和神经网络的交叉路口)可以被结构化和讨论。最后,指纹识别面临着新兴视频应用(例如,无人驾驶车辆或假新闻)带来的挑战,以及它们在内容可追溯性和计算复杂性方面设置的限制。还介绍和讨论了与其他内容跟踪技术(例如DLT -分布式账本技术)的关系。
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Video fingerprinting: Past, present, and future
The last decades have seen video production and consumption rise significantly: TV/cinematography, social networking, digital marketing, and video surveillance incrementally and cumulatively turned video content into the predilection type of data to be exchanged, stored, and processed. Belonging to video processing realm, video fingerprinting (also referred to as content-based copy detection or near duplicate detection) regroups research efforts devoted to identifying duplicated and/or replicated versions of a given video sequence (query) in a reference video dataset. The present paper reports on a state-of-the-art study on the past and present of video fingerprinting, while attempting to identify trends for its development. First, the conceptual basis and evaluation frameworks are set. This way, the methodological approaches (situated at the cross-roads of image processing, machine learning, and neural networks) can be structured and discussed. Finally, fingerprinting is confronted to the challenges raised by the emerging video applications (e.g., unmanned vehicles or fake news) and to the constraints they set in terms of content traceability and computational complexity. The relationship with other technologies for content tracking (e.g., DLT - Distributed Ledger Technologies) are also presented and discussed.
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