广域大画幅视频目标跟踪的鲁棒方向和外观自适应

R. Pelapur, K. Palaniappan, G. Seetharaman
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引用次数: 22

摘要

基于视觉特征的跟踪系统需要适应物体外观和场景的变化,以获得稳健的性能。虽然这些变化在短时间内可能很小,但它们会随着时间的推移而积累,并在更长的时间间隔内恶化匹配过程的质量。航拍图像中的跟踪可能具有挑战性,因为观察几何形状、校准不准确、复杂的光路和背景变化以及照明变化,以及遮挡可能导致物体的快速外观变化。平衡外观自适应和稳定性以避免跟踪非目标目标,可以延长跟踪时间,这是跟踪器鲁棒性的一个指标。该方法可以通过显式方向估计处理旋转等仿射变化,通过多尺度Hessian边缘检测器处理尺度变化,通过分割处理漂移校正。我们提出了一种外观更新方法,该方法使用该自适应方案在由丰富的特征集和运动模型组成的跟踪环境中处理“漂移”问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Orientation and Appearance Adaptation for Wide-Area Large Format Video Object Tracking
Visual feature-based tracking systems need to adapt to variations in the appearance of an object and in the scene for robust performance. Though these variations may be small for short time steps, they can accumulate over time and deteriorate the quality of the matching process across longer intervals. Tracking in aerial imagery can be challenging as viewing geometry, calibration inaccuracies, complex ight paths and background changes combined with illumination changes, and occlusions can result in rapid appearance change of objects. Balancing appearance adaptation with stability to avoid tracking non-target objects can lead to longer tracks which is an indicator of tracker robustness. The approach described in this paper can handle affine changes such as rotation by explicit orientation estimation, scale changes by using a multiscale Hessian edge detector and drift correction by using segmentation. We propose an appearance update approach that handles the 'drifting' problem using this adaptive scheme within a tracking environment that is comprised of a rich feature set and a motion model.
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