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Hidden Markov model-unscented Kalman filter contour tracking: A multi-cue and multi-resolution approach

机译:隐马尔可夫模型无味卡尔曼滤波器轮廓跟踪:多线索和多分辨率方法

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This paper present a novel attempt to introduce an HMM-based multi-resolution and multi-cue segmentation in combination with the unscented Kalman filter tracking method. It combines multiple features distribution and multiple resolutions to facilitate 2D video tracking. The advantages of this method lie in its speed and its robustness. Speed is dramatically improved by taking into account multiple resolutions which reduce number of measurement points (number of HMM states) while keeping its quality. Robustness is achieved by using multiple cues. We propose an algorithm to find an optimal operating point for a tracker in terms of the image scale. Furthermore, we propose a faster multi-scale (spatial) tracker based on a minimum acceptable performance limit. The proposed method is demonstrated on human head tracking with a non-stationary camera. Visual tests indicate that the optimized algorithms produce qualitatively better results. Results show that we are able to maintain real-time processing on quite generous video resolutions. Therefore it will be shown that our approach is faster and more efficient than conventional UKF and UKF with multi-cue.
机译:本文提出了一种新颖的尝试,结合无味卡尔曼滤波器跟踪方法,引入了基于HMM的多分辨率和多线索分割。它结合了多种功能分布和多种分辨率,以方便进行2D视频跟踪。该方法的优点在于其速度和鲁棒性。通过考虑多种分辨率,在保持质量的同时减少了测量点的数量(HMM状态的数量),极大地提高了速度。通过使用多个提示来实现鲁棒性。我们提出一种算法,以根据图像比例找到跟踪器的最佳工作点。此外,我们基于最小可接受性能限制提出了一种更快的多尺度(空间)跟踪器。所提出的方法在非平稳摄像机的人头跟踪中得到了证明。视觉测试表明,优化的算法在质量上产生了更好的结果。结果表明,我们能够在相当大的视频分辨率下保持实时处理。因此,将表明我们的方法比传统UKF和带有多提示的UKF更快,更高效。

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