Due to the limited availability of anomalous samples for training, video anomaly detection is commonly viewed as a one-class classification problem. Many prevalent methods investigate the reconstruction difference produced by AutoEncoders (AEs) under the assumption that the AEs would reconstruct the normal data well while reconstructing anomalies poorly. However, even with only normal data training, the AEs often reconstruct anomalies well, which depletes their anomaly detection performance. To alleviate this issue, we propose a simple yet efficient framework for video anomaly detection. The pseudo anomaly samples are introduced, which are synthesized from only normal data by embedding random mask tokens without extra data processing. We also propose a normalcy consistency training strategy that encourages the AEs to better learn the regular knowledge from normal and corresponding pseudo anomaly data. This way, the AEs learn more distinct reconstruction boundaries between normal and abnormal data, resulting in superior anomaly discrimination capability. Experimental results demonstrate the effectiveness of the proposed method.
翻译:由于培训的异常抽样有限,视频异常检测通常被视为一个单级分类问题。许多常用的方法调查AutoEnccoders(AEs)产生的重建差异,假设AEs将很好地重建正常数据,同时重建异常情况不善。然而,即使只是进行正常的数据培训,AEs也常常很好地重建异常情况,从而耗尽了异常情况检测的性能。为了缓解这一问题,我们提议了一个简单而有效的视频异常情况检测框架。引入了假异常情况样本,这些样本仅从正常数据中合成,通过不处理额外数据而嵌入随机掩码符号。我们还提出了一个常态一致性培训战略,鼓励AEs更好地从正常和对应的假异常数据中学习常规知识。这样,AEs就学会了正常和异常数据之间更明显的重建界限,从而导致异常现象检测能力超强。实验结果显示了拟议方法的有效性。</s>