Moving Object Detection in Time-Lapse or Motion Trigger Image Sequences Using Low-Rank and Invariant Sparse Decomposition

M. Shakeri, Hong Zhang
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引用次数: 20

Abstract

Low-rank and sparse representation based methods have attracted wide attention in background subtraction and moving object detection, where moving objects in the scene are modeled as pixel-wise sparse outliers. Since in real scenarios moving objects are also structurally sparse, recently researchers have attempted to extract moving objects using structured sparse outliers. Although existing methods with structured sparsity-inducing norms produce promising results, they are still vulnerable to various illumination changes that frequently occur in real environments, specifically for time-lapse image sequences where assumptions about sparsity between images such as group sparsity are not valid. In this paper, we first introduce a prior map obtained by illumination invariant representation of images. Next, we propose a low-rank and invariant sparse decomposition using the prior map to detect moving objects under significant illumination changes. Experiments on challenging benchmark datasets demonstrate the superior performance of our proposed method under complex illumination changes.
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基于低秩和不变稀疏分解的延时或运动触发图像序列中的运动目标检测
基于低秩和稀疏表示的方法在背景减除和运动目标检测中引起了广泛的关注,其中场景中的运动目标被建模为逐像素的稀疏异常值。由于在真实场景中运动物体也是结构稀疏的,最近研究人员尝试使用结构化稀疏离群值来提取运动物体。尽管现有的具有结构化稀疏性诱导规范的方法产生了有希望的结果,但它们仍然容易受到真实环境中经常发生的各种照明变化的影响,特别是对于延时图像序列,其中图像之间的稀疏性假设(如组稀疏性)是无效的。本文首先引入了一种基于图像光照不变表示的先验映射。接下来,我们提出了一种基于先验映射的低秩不变稀疏分解方法来检测光照显著变化下的运动物体。在具有挑战性的基准数据集上的实验证明了该方法在复杂光照变化下的优越性能。
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