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Foreground Objects Segmentation for Moving Camera Scenarios Based on SCGMM

机译:基于SCGMM的移动相机场景的前景对象分割

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In this paper we present a new system for segmenting non-rigid objects in moving camera sequences for indoor and outdoor scenarios that achieves a correct object segmentation via global MAP-MRF framework formulation for the foreground and background classification task. Our proposal, suitable for video indexation applications, receives as an input an initial segmentation of the object to segment and it consists of two region-based parametric probabilistic models to model the spatial (x,y) and color (r,g,b) domains of the foreground and background classes. Both classes rival each other in modeling the regions that appear within a dynamic region of interest that includes the foreground object to segment and also, the background regions that surrounds the object. The results presented in the paper show the correctness of the object segmentation, reducing false positive and false negative detections originated by the new background regions that appear near the region of the object.
机译:在本文中,我们为在移动相机序列中分割非刚性物体的新系统,用于室内和户外场景,通过全球地图-MRF框架制定来实现正确的对象分割,用于前景和背景分类任务。我们的提案,适用于视频索引应用程序,接收对象的输入到段的初始分割,并且它由两个基于区域的参数概率模型组成,以模拟空间(x,y)和颜色(r,g,b)前景和背景课程的域。两个类彼此竞争在模拟出现在感兴趣的动态区域内的区域,该区域包括前景对象以及围绕对象的背景区域。本文呈现的结果表明了对象分割的正确性,从对象区域附近出现的新的背景区域发起的假阳性和假阴性检测。

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