扩展卡尔曼滤波、GMM和Mean Shift算法的多目标跟踪比较研究

D. Santosh, P. G. Krishna Mohan
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引用次数: 18

摘要

物体跟踪是物体识别、导航系统和监视系统等图像处理应用程序的主要步骤。在图像处理中,采用常规方法来区分当前图像和背景图像。基于图像减法的算法主要用于提取运动物体的特征并提取帧中的信息。本文比较了扩展卡尔曼滤波、高斯混合模型(GMM)和均值漂移算法在多目标跟踪中的应用。对比结果表明,GMM在有遮挡的情况下表现良好。当存在非线性变换时,扩展卡尔曼滤波器由于随机变量分布的异常行为而失效。当有遮挡时,无法识别多个物体。均值移位算法最适合于单目标跟踪,对窗口大小非常敏感,具有自适应性。结果表明,即使是在轻微遮挡的情况下,该算法也存在检测多个目标的局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple objects tracking using Extended Kalman Filter, GMM and Mean Shift Algorithm - A comparative study
Object tracking is a primary step for image processing applications like object recognition, navigation systems and surveillance systems. The current image and the background image is differentiated by approaching conventionally in image processing. Image subtraction based algorithms are mainly used in extracting features of moving objects and take the information in frames. Here three algorithms namely Extended Kalman Filter, Gaussian Mixture Model (GMM), Mean Shift Algorithm are compared in the context of multiple object tracking. The comparative results show that GMM performs well when there are occlusions. Extended Kalman filter fails because of abnormal behavior in the distribution of random variables when there is nonlinear transformation. It cannot identify multiple objects when there are occlusions. Mean shift algorithm is best suitable for single object tracking and is very sensitive to window size which is adaptive. Results show that this algorithm has the limitation to detect multiple objects when there is even slight occlusion.
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