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Background Subtraction Approach based on Independent Component Analysis

机译:基于独立分量分析的背景减法

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摘要

In this work, a new approach to background subtraction based on independent component analysis is presented. This approach assumes that background and foreground information are mixed in a given sequence of images. Then, foreground and background components are identified, if their probability density functions are separable from a mixed space. Afterwards, the components estimation process consists in calculating an unmixed matrix. The estimation of an unmixed matrix is based on a fast ICA algorithm, which is estimated as a Newton-Raphson maximization approach. Next, the motion components are represented by the mid-significant eigenvalues from the unmixed matrix. Finally, the results show the approach capabilities to detect efficiently motion in outdoors and indoors scenarios. The results show that the approach is robust to luminance conditions changes at scene.
机译:在这项工作中,提出了一种基于独立成分分析的背景扣除新方法。该方法假定背景和前景信息混合在给定的图像序列中。然后,如果前景和背景分量的概率密度函数可从混合空间中分离出来,则将它们识别出来。之后,成分估计过程包括计算未混合矩阵。未混合矩阵的估计是基于快速ICA算法的,它是作为Newton-Raphson最大化方法进行估计的。接下来,运动分量由来自未混合矩阵的中有效特征值表示。最后,结果显示了在室外和室内场景中有效检测运动的方法功能。结果表明,该方法对场景中的亮度条件变化具有鲁棒性。

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