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Dynamic scene analysis using Kalman filter and mean shift tracking algorithms

机译:使用卡尔曼滤波器和均值漂移跟踪算法的动态场景分析

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Video surveillance in a dynamic environment is one of the current challenging research topics in computer vision. In video surveillance, detection of moving objects from a video is important for object detection, target tracking, and behavior understanding. The present work is about locating a moving object (or multiple objects) over a time using a stationary camera and associating it in consecutive video frames. In this perspective, a video captured by digital camera is used for motion analysis. In the first stage of experiment background subtraction and frame differencing algorithms are used for object detection and its motion is estimated by associating the centroid of the moving object in each differenced frame. Tracking of non-stationary foreground regions is one of the most critical requirements for surveillance systems. In the second stage of experiment same algorithm is chosen for object detection but motion of each track is estimated by Kalman filter. However the best estimate is made by combining the knowledge of prediction and correction mechanisms that were incorporated as part of Kalman filter design. Subsequently kernel based tracking using mean shift theory is implemented for tracking single object under partial occlusion. Histogram based target representations are regularized by spatial masking with an isotropic kernel. The masking induces spatially-smooth similarity functions that are suitable for gradient-based optimization. In this regard a metric derived from the Bhattacharyya Coefficient is used as similarity measure, and subsequently mean shift theory is used to perform the optimization. In order to improve the track efficiency, an object tracking algorithm using Kalman filter (KF) combined with mean shift (MS) is also proposed. Firstly, the system model of KF is constructed, and the center of the object predicted by KF is used in MS algorithm for finding the target in the frame. The result obtained from the mean shift is given to KF as a meas- rement and is correctly updated using correction technique. The corrected value is taken as a reference position by mean shift for finding the object location in the successive frame. Again the obtained position from the mean shift is sent to KF for correction. The idea of combining Kalman filter theory and mean shift theory has given a direction in bringing out the efficient and reliable tracking results in case of partial occlusion.
机译:在动态环境中的视频监视是计算机视觉中当前具有挑战性的研究主题之一。在视频监视中,从视频中检测运动对象对于对象检测,目标跟踪和行为理解很重要。当前的工作是关于使用固定摄像机在一段时间内定位一个运动对象(或多个对象)并将其关联到连续的视频帧中。从这个角度来看,数码相机捕获的视频用于运动分析。在实验的第一阶段,背景扣除和帧差分算法用于对象检测,并通过关联每个差分帧中运动对象的质心来估计其运动。跟踪非平稳前景区域是监视系统的最关键要求之一。在实验的第二阶段,选择相同的算法进行目标检测,但是每个轨道的运动都通过卡尔曼滤波器进行估计。但是,最好的估计是结合结合了卡尔曼滤波器设计的一部分的预测和校正机制的知识而做出的。随后实现了使用均值漂移理论的基于内核的跟踪,以在部分遮挡下跟踪单个对象。通过使用各向同性内核进行空间遮罩,可以对基于直方图的目标表示进行调整。掩蔽会导致适用于基于梯度的优化的空间平滑相似性函数。在这方面,使用从Bhattacharyya系数得出的度量作为相似性度量,随后使用均值漂移理论进行优化。为了提高跟踪效率,还提出了一种结合卡尔曼滤波(KF)和均值漂移(MS)的目标跟踪算法。首先,构造了KF的系统模型,并将由KF预测的对象的中心用于MS算法中,以找到帧中的目标。从平均偏移获得的结果作为测量值提供给KF,并使用校正技术正确更新。通过平均移位将校正后的值作为参考位置,以找到连续帧中的对象位置。再次将从平均位移获得的位置发送到KF进行校正。结合卡尔曼滤波理论和均值漂移理论的思想为在部分遮挡的情况下提供有效和可靠的跟踪结果提供了方向。

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