Region-Based Tracking Using Affine Motion Models in Long Image Sequences

Meyer F.G., Bouthemy P.
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引用次数: 183

Abstract

This work investigates a new approach to the tracking of regions in an image sequence. The approach relies on two successive operations: detection and discrimination of moving targets and then pursuit of the targets. A motion-based segmentation algorithm, previously developed in the laboratory, provides the detection and discrimination stage. This paper emphasizes the pursuit stage. A pursuit algorithm has been designed that directly tracks the region representing the projection of a moving object in the image, rather than relying on the set of trajectories of individual points or segments. The region tracking is based on the dense estimation of an affine model of the motion field within each region, which makes it possible to predict the position of the target in the next frame. A multiresolution scheme provides reliable estimates of the motion parameters, even in the case of large displacements. Two interacting linear dynamic systems describe the temporal evolution of the geometry and the motion of the tracked regions. Experiments conducted on real images demonstrate that the approach is robust against occlusion and can handle large interframe displacements and complex motions.

长图像序列中基于区域的仿射运动模型跟踪
本文研究了一种新的图像序列区域跟踪方法。该方法依赖于两个连续的操作:检测和识别运动目标,然后跟踪目标。先前在实验室开发的基于运动的分割算法提供了检测和识别阶段。本文强调追求阶段。我们设计了一种追踪算法,可以直接跟踪图像中代表运动物体投影的区域,而不是依赖于单个点或段的轨迹集。区域跟踪是基于对每个区域内运动场的仿射模型的密集估计,从而可以预测下一帧目标的位置。多分辨率方案提供可靠的运动参数估计,即使在大位移的情况下。两个相互作用的线性动力系统描述了被跟踪区域的几何形状和运动的时间演变。在真实图像上进行的实验表明,该方法对遮挡具有鲁棒性,可以处理大帧间位移和复杂运动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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