论文标题

在铁路视频监视中,增强了几次学习以进行入侵检测

Enhanced Few-shot Learning for Intrusion Detection in Railway Video Surveillance

论文作者

Gong, Xiao, Chen, Xi, Chen, Wei

论文摘要

近年来,视频监视越来越受欢迎,以帮助铁路入侵检测。但是,由于:(a)样本数量有限:仅少量样本量(或部分)侵入性视频框架,因此有效,准确的入侵检测仍然是一个具有挑战性的问题; (b)低场地间的差异:各种铁路轨道区域的场景由安装在不同地面中的摄像机捕获; (c)高景内相似性:单个相机捕​​获的视频框架共享相同的后排。在本文中,开发了有效的几次学习解决方案来解决上述问题。特别是,使用从视频中提取的原始视频框架和轨道区域的分段遮罩训练了增强的模型不可吻合的元学习者。此外,提供了理论分析和工程解决方案,以应对元模型训练阶段中高度相似的视频帧。提出的方法在现实的铁路视频数据集上进行了测试。数值结果表明,增强的元学习者成功地调整了看不见的场景,只有很少收集的视频框架样本,其入侵检测精度优于随机初始化监督学习的标准。

Video surveillance is gaining increasing popularity to assist in railway intrusion detection in recent years. However, efficient and accurate intrusion detection remains a challenging issue due to: (a) limited sample number: only small sample size (or portion) of intrusive video frames is available; (b) low inter-scene dissimilarity: various railway track area scenes are captured by cameras installed in different landforms; (c) high intra-scene similarity: the video frames captured by an individual camera share a same backgound. In this paper, an efficient few-shot learning solution is developed to address the above issues. In particular, an enhanced model-agnostic meta-learner is trained using both the original video frames and segmented masks of track area extracted from the video. Moreover, theoretical analysis and engineering solutions are provided to cope with the highly similar video frames in the meta-model training phase. The proposed method is tested on realistic railway video dataset. Numerical results show that the enhanced meta-learner successfully adapts unseen scene with only few newly collected video frame samples, and its intrusion detection accuracy outperforms that of the standard randomly initialized supervised learning.

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