基于grabcut的废弃物体检测

K. Muchtar, Chih-Yang Lin, C. Yeh
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引用次数: 7

摘要

本文提出了一种基于检测的从监控场景中去除废弃目标的方法。基于跟踪的方法在拥挤的场景中通常是复杂和不可靠的,与此不同,该方法采用背景(BG)建模,只关注不移动的物体。我们的主要贡献是建立了一个鲁棒的、能够抵抗干扰(阴影、光照变化和遮挡)的废弃物体检测系统。此外,我们还引入了MRF模型和阴影去除。当标记被设置为背景或废弃物体的像素时,MRF是一种很有前途的方法来模拟邻居的信息。它表示像素和它的邻居之间的相关性和依赖性。如实验部分所示,我们的方法通过引入磁振函数模型,可以有效地降低虚警。为了评估系统的鲁棒性,我们在实验中对CAVIAR数据集和室外测试用例进行了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Grabcut-based abandoned object detection
This paper presents a detection-based method to subtract abandoned object from a surveillance scene. Unlike tracking-based approaches that are commonly complicated and unreliable on a crowded scene, the proposed method employs background (BG) modelling and focus only on immobile objects. The main contribution of our work is to build abandoned object detection system which is robust and can resist interference (shadow, illumination changes and occlusion). In addition, we introduce the MRF model and shadow removal to our system. MRF is a promising way to model neighbours' information when labeling the pixel that is either set to background or abandoned object. It represents the correlation and dependency in a pixel and its neighbours. By incorporating the MRF model, as shown in the experimental part, our method can efficiently reduce the false alarm. To evaluate the system's robustness, several dataset including CAVIAR datasets and outdoor test cases are both tested in our experiments.
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