A Survey of Deep Learning Solutions for Anomaly Detection in Surveillance Videos

John Gatara Munyua, G. Wambugu, Stephen Thiiru Njenga
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引用次数: 4

Abstract

Deep learning has proven to be a landmark computing approach to the computer vision domain. Hence, it has been widely applied to solve complex cognitive tasks like the detection of anomalies in surveillance videos. Anomaly detection in this case is the identification of abnormal events in the surveillance videos which can be deemed as security incidents or threats. Deep learning solutions for anomaly detection has outperformed other traditional machine learning solutions. This review attempts to provide holistic benchmarking of the published deep learning solutions for videos anomaly detection since 2016. The paper identifies, the learning technique, datasets used and the overall model accuracy. Reviewed papers were organised into five deep learning methods namely; autoencoders, continual learning, transfer learning, reinforcement learning and ensemble learning. Current and emerging trends are discussed as well.
用于监控视频异常检测的深度学习解决方案综述
深度学习已被证明是计算机视觉领域具有里程碑意义的计算方法。因此,它被广泛应用于解决复杂的认知任务,如监控视频中的异常检测。这里的异常检测是指对监控视频中的异常事件进行识别,这些异常事件可以视为安全事件或威胁。用于异常检测的深度学习解决方案优于其他传统机器学习解决方案。本文试图对2016年以来发布的视频异常检测深度学习解决方案进行全面的基准测试。本文确定了学习技术、使用的数据集和整体模型的准确性。评审论文分为五种深度学习方法,即;自动编码器,持续学习,迁移学习,强化学习和集成学习。还讨论了当前和新兴的趋势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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