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Centre of mass model - A novel approach to background modelling for segmentation of moving objects

机译:质量中心模型-一种用于运动对象分割的背景建模的新方法

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This paper describes a novel method, centre of mass model, to detect moving objects in a dynamic scene based on background subtraction. Any displacement of the position of centre of mass (CoMs) in two consecutive frames is the indicator of a moving object in a scene. Dividing a scene into subregions and modelling them as individual masses allow segmentation of the moving object(s). In the proposed scheme, an image is divided into blocks that are called super-pixels and each super-pixel is represented with the x and y components of CoM of a block. The segmentation is achieved by taking the absolute difference between CoM of current super-pixel and the mean of CoMs of previous corresponding super-pixels, and thresholding the difference with a dynamically updated value. A comparative work has been carried out to evaluate the performance of the proposed model and the previously reported seven different methods. The model produced consistent outputs for the images taken in different environmental conditions. The moving objects were successfully segmented with no post-processing operations. Centre of mass model demonstrated better overall performance than the methods previously reported. Its output was superior for auto-focused video images.
机译:本文介绍了一种新的方法,重心模型,基于背景减法来检测动态场景中的运动对象。两个连续帧中质心(CoMs)位置的任何位移都是场景中运动对象的指示。将场景划分为子区域并将其建模为单个块,可以对运动对象进行分割。在所提出的方案中,图像被分成称为超像素的块,并且每个超像素用块的CoM的x和y分量表示。通过获取当前超像素的CoM与先前对应的超像素的CoM的平均值之间的绝对差,并使用动态更新的值对该差进行阈值化来实现分割。已经进行了比较工作以评估所提出的模型和先前报告的七种不同方法的性能。该模型为在不同环境条件下拍摄的图像提供了一致的输出。运动对象已成功分割,无需进行任何后处理操作。重心模型显示出比以前报告的方法更好的总体性能。它的输出在自动聚焦视频图像方面表现出色。

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