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Background modelling and background subtraction performance for object detection

机译:用于物体检测的背景建模和背景扣除性能

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Moving object detection in video applications is usually performed based on techniques such as background subtraction, optical flow and temporal differencing. The most popular literature technique approach to detect moving object from video sequences is background subtraction. This approach utilized mathematical model of static background and comparing it with every new frame of video sequence. In this paper, background subtraction technique using Mixture of Gaussian (MoG) method is conducted for detection of moving object at outdoor environment. Focus is specified at the five parameters of MoG namely background component weight threshold (TS), standard deviation scaling factor (D), user-define learning rate (α), Total number of Gaussian components (K) and Maximum number of components M in the background model (M) to give significant impact in producing the optimize background subtraction process. Experimental results showed that by varying each of the parameter can produce acceptable results that enable us to propose suitable parameter range of each parameter for detection of moving object in an outdoor environment.
机译:视频应用中的运动对象检测通常基于诸如背景扣除,光流和时间差分之类的技术来执行。从视频序列中检测运动对象的最流行的文学技术方法是背景减法。这种方法利用静态背景的数学模型,并将其与视频序列的每个新帧进行比较。本文采用高斯混合法(MoG)进行背景减法检测室外环境下的运动物体。在MoG的五个参数中指定焦点,即背景成分权重阈值(T S ),标准偏差缩放因子(D),用户定义学习率(α),高斯成分总数(K) )和背景模型(M)中的最大成分数M对产生优化背景扣除过程产生重大影响。实验结果表明,通过改变每个参数可以产生可接受的结果,这使我们能够提出每个参数的合适参数范围,以检测室外环境中的运动物体。

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