Deep Imbalanced Data Learning Approach for Video Anomaly Detection

Avinash Ratre, Vinod Pankajakshan
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Abstract

Surveillance video data often exhibit highly imbal-anced data distribution, i.e., majority or normal class instances outnumber the minority or anomalous class instances, which are the point of concern in video anomaly detection (AD). The existing deep learning methods often adopt various ensemble methods consisting of an early or late fusion of the cascade of either deep discriminative or generative learning models. These methods lack the diversity in applying the deep learning algorithms to imbalanced data learning for AD in real-world unlabeled and imbalanced surveillance video data. In this paper, decision level late fusion of two complementary deep learning models is accomplished using a loss function weighted regression model towards imbalanced data learning for video AD. Under the algorithmic level actions, the learning model's architecture consists of two complementary parallel discriminative-generative channels, i.e., a discriminative deep residual network (DRN) channel and a generative deep regression long short-term memory (LSTM) channel. The proposed complementary deep LSTM-DRN-based imbalanced data learning approach improves effectiveness in detecting anomalies compared to state-of-the-art methods.
视频异常检测的深度不平衡数据学习方法
监控视频数据通常表现出高度不平衡的数据分布,即多数或正常类实例多于少数或异常类实例,这是视频异常检测(AD)中关注的问题。现有的深度学习方法通常采用各种集成方法,包括深度判别或生成学习模型级联的早期或晚期融合。这些方法在将深度学习算法应用于现实世界中未标记和不平衡监控视频数据的AD不平衡数据学习方面缺乏多样性。针对视频AD的不平衡数据学习,采用损失函数加权回归模型实现了两种互补深度学习模型的决策级后期融合。在算法级动作下,学习模型的架构由两个互补的并行判别-生成通道组成,即判别深度残差网络(DRN)通道和生成深度回归长短期记忆(LSTM)通道。与最先进的方法相比,所提出的基于深度lstm - drn的互补不平衡数据学习方法提高了异常检测的有效性。
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