Spatiotemporal Edges for Arbitrarily Moving Video Classification in Protected and Sensitive Scenes

Maryam Asadzadehkaljahi, Arnab Halder, Umapada Pal, Palaiahnakote Shivakumara
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引用次数: 1

Abstract

Classification of arbitrary moving objects including vehicles and human beings in a real environment (such as protected and sensitive areas) is challenging due to arbitrary deformation and directions caused by shaky camera and wind. This work aims at adopting a spatio-temporal approach for classifying arbitrarily moving objects. The intuition to propose the approach is that the behavior of the arbitrary moving objects caused by wind and shaky camera are inconsistent and unstable while for static objects, the behavior is consistent and stable. The proposed method segments foreground objects from background using the frame difference between median frame and individual frame. This step outputs several different foreground information. The method finds static and dynamic edges by subtracting Canny of foreground information from the Canny edges of respective input frames. The ratio of the number of static and dynamic edges of each frame is considered as features. The features are normalized to avoid the problems of imbalanced feature size and irrelevant features. For classification, the work uses 10-fold cross-validation to choose the number of training and testing samples and the random forest classifier is used for the final classification of frames with static objects and arbitrary movement objects. For evaluating the proposed method, we construct our own dataset, which contains video of static and arbitrarily moving objects caused by shaky camera and wind. The results on the video dataset show that the proposed method achieves the state-of-the-art performance (76% classification rate) which is 14% better than the best existing method.
保护敏感场景下任意移动视频分类的时空边缘
在真实环境(如受保护和敏感区域)中,由于相机和风的晃动导致的任意变形和方向,对包括车辆和人类在内的任意移动物体进行分类是具有挑战性的。本工作旨在采用一种时空方法对任意运动物体进行分类。提出该方法的直觉是,由风和相机抖动引起的任意运动物体的行为是不一致和不稳定的,而对于静态物体,行为是一致和稳定的。该方法利用中值帧与单个帧之间的帧差分割前景目标和背景目标。这一步输出几个不同的前景信息。该方法通过从各自输入帧的Canny边缘中减去前景信息的Canny来找到静态和动态边缘。将每帧的静态边缘和动态边缘的数量之比作为特征。对特征进行归一化处理,避免了特征大小不平衡和特征不相关的问题。对于分类,工作使用10倍交叉验证来选择训练和测试样本的数量,并使用随机森林分类器对具有静态对象和任意运动对象的帧进行最终分类。为了评估所提出的方法,我们构建了自己的数据集,其中包含由摄像机抖动和风引起的静态和任意移动物体的视频。在视频数据集上的结果表明,该方法达到了最先进的性能(76%的分类率),比现有的最佳方法提高了14%。
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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