论文标题
网格HTM:视频中异常检测的分层时间内存
Grid HTM: Hierarchical Temporal Memory for Anomaly Detection in Videos
论文作者
论文摘要
在过去的几年中,对视频异常检测系统的兴趣已引起关注。当前的方法使用深度学习在视频中执行异常检测,但是这种方法有多个问题。对于初学者来说,深度学习通常存在噪声,概念漂移,解释性和训练数据量的问题。此外,异常检测本身是一项复杂的任务,并且面临着诸如未知,异质性和阶级失衡等挑战。因此,使用深度学习的异常检测主要受到生成模型的限制,例如生成的对抗网络和自动编码器,因为它们的性质无监督的性质,但即使它们也遭受了一般深度学习问题的困扰,并且很难正确训练。在本文中,我们探讨了层次时间内存(HTM)算法在视频中执行异常检测的功能,因为它具有有利的属性,例如噪声耐受性和在线学习,可以打击概念漂移。我们介绍了HTM的新颖版本,即Grid HTM,该版本是基于HTM的架构,专门用于复杂视频(例如监视镜头)中的异常检测。
The interest for video anomaly detection systems has gained traction for the past few years. The current approaches use deep learning to perform anomaly detection in videos, but this approach has multiple problems. For starters, deep learning in general has issues with noise, concept drift, explainability, and training data volumes. Additionally, anomaly detection in itself is a complex task and faces challenges such as unknowness, heterogeneity, and class imbalance. Anomaly detection using deep learning is therefore mainly constrained to generative models such as generative adversarial networks and autoencoders due to their unsupervised nature, but even they suffer from general deep learning issues and are hard to train properly. In this paper, we explore the capabilities of the Hierarchical Temporal Memory (HTM) algorithm to perform anomaly detection in videos, as it has favorable properties such as noise tolerance and online learning which combats concept drift. We introduce a novel version of HTM, namely, Grid HTM, which is an HTM-based architecture specifically for anomaly detection in complex videos such as surveillance footage.