基于几何K均值算法的背景减法

Susmita Panda, A. Agrawal
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引用次数: 1

摘要

背景减法被广泛应用于运动物体的检测、交通管理和视频监控中,即使是在照明问题、天气条件和快速运动物体等环境条件不利的情况下。背景减法被广泛应用于摄像机捕获的运动实体的检测中。这种通过观察输入帧和参考帧之间的变化来识别运动实体的方法的基础被描述为背景图像。从根本上说,背景图像是一段没有移动实体的图像的说明,应该不断修改以适应不断变化的照明和几何调整。进一步的复合原型在准确意义范围内拉伸背景减法的感知。本研究首先考虑基于几何均值(GM)的各像素对数正态分布的背景建模,然后采用k -均值聚类算法分离背景和前景。最后采用加权中值滤波对结果进行增强。本文提出的算法在不同的数据集上进行了测试,通过计算灵敏度、特异性和准确性,结果表明该算法的精度比其真实值更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Background Subtraction based on Geometric - K mean Algorithm
Background Subtraction is widely used for detection of moving object, traffic management, and video surveillance even when the environmental condition is not favourable such as illumination problem, weather condition and fast moving object. Background subtraction methodology is extensively utilized in the detection of moving entity which is captured through a camera. Foundation for this methodology to identify the moving entity by observing the variation among the input frame and reference frame is described as background image. Fundamentally, background image is an illustration of section of images with no moving entity and that should be consistently modified to adjust with the changing illumination and geometric adjustments. Further composite prototypes were stretched the perception of background subtraction within the accurate significance. In this research, background modelling of Geometric Mean (GM) based lognormal distribution of each pixel is considered, followed by K-mean clustering algorithm is used to separate background from foreground. Finally to enhance the result weighted median filter is used. The proposed algorithm has been tested upon different data sets and the results shows better precision as compared to its ground truth by calculating sensitivity, specificity and accuracy.
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