Saliency attention based abnormal event detection in video

Wang Huan, Huiwen Guo, Xinyu Wu
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引用次数: 3

Abstract

Most existing methods for abnormal event detection in the literature are relied on a training phase. Different from conventional approaches for abnormal event detection, a saliency attention based abnormal event detection approach is proposed in this paper. It is inspired by the visual attention mechanism that abnormal events are those which attract attention mostly in videos. The temporal and spatial abnormal saliency maps are firstly constructed and then the final abnormal event map is formatted by fusing them using a method with dynamic coefficients. The temporal abnormal saliency map is constructed by motion contrast between keypoints extracted from two successive video frames. The spatial abnormal saliency map is structured based on the color contrasts. Experiments performed on the benchmark datasets show that the proposed method achieves a high accurate and robust results for abnormal event detection without a training phase.
基于显著性关注的视频异常事件检测
文献中大多数现有的异常事件检测方法都依赖于训练阶段。与传统的异常事件检测方法不同,本文提出了一种基于显著性注意的异常事件检测方法。受视觉注意机制的启发,异常事件是视频中最容易引起注意的事件。首先构造时空异常显著性图,然后采用动态系数法对它们进行融合,形成最终的异常事件图。通过对两个连续视频帧中提取的关键点进行运动对比,构建时间异常显著性图。基于颜色对比构建空间异常显著性图。在基准数据集上进行的实验表明,该方法在不需要训练阶段的情况下,对异常事件检测具有较高的准确性和鲁棒性。
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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