Improved Simultaneous Computation of Motion Detection and Optical Flow for Object Tracking

S. Denman, C. Fookes, S. Sridharan
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引用次数: 69

Abstract

Object tracking systems require accurate segmentation of the objects from the background for effective tracking. Motion segmentation or optical flow can be used to segment incoming images. Whilst optical flow allows multiple moving targets to be separated based on their individual velocities, optical flow techniques are prone to errors caused by changing lighting and occlusions, both common in a surveillance environment. Motion segmentation techniques are more robust to fluctuating lighting and occlusions, but don't provide information on the direction of the motion. In this paper we propose a combined motion segmentation/optical flow algorithm for use in object tracking. The proposed algorithm uses the motion segmentation results to inform the optical flow calculations and ensure that optical flow is only calculated in regions of motion, and improve the performance of the optical flow around the edge of moving objects. Optical flow is calculated at pixel resolution and tracking of flow vectors is employed to improve performance and detect discontinuities, which can indicate the location of overlaps between objects. The algorithm is evaluated by attempting to extract a moving target within the flow images, given expected horizontal and vertical movement (i.e. the algorithms intended use for object tracking). Results show that the proposed algorithm outperforms other widely used optical flow techniques for this surveillance application.
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改进的运动检测和光流同步计算的目标跟踪
目标跟踪系统需要准确地从背景中分割目标以实现有效的跟踪。运动分割或光流可用于分割传入图像。虽然光流允许根据单个速度分离多个移动目标,但光流技术容易受到光照和遮挡变化引起的误差,这在监视环境中都很常见。运动分割技术对波动光照和遮挡更加稳健,但不提供运动方向的信息。本文提出了一种用于目标跟踪的运动分割/光流组合算法。该算法利用运动分割结果进行光流计算,保证光流只在运动区域进行计算,提高了运动物体边缘周围光流的性能。以像素分辨率计算光流,并采用流矢量跟踪来提高性能和检测不连续点,这可以指示物体之间重叠的位置。该算法通过尝试提取流图像中的运动目标来评估,给定预期的水平和垂直运动(即用于对象跟踪的算法)。结果表明,该算法优于其他广泛使用的光流监控技术。
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