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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Robust Likelihood Model for Illumination Invariance in Particle Filtering
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Robust Likelihood Model for Illumination Invariance in Particle Filtering

机译:粒子滤波中光照不变性的鲁棒似然模型

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摘要

Tracking visual targets in an unconstrained environment is challenging due to variations in illumination, scale, occlusion, and motion blur, for example. Many video applications that utilize particle filter-based visual target trackers require tracking of visual targets under varying illuminations. Similarity measures and likelihood estimation strongly influence the performance of particle filters. In this paper, we propose a novel likelihood estimator that has been combined with other state-of-the-art particle filtering-based tracking techniques to accommodate varying illumination by predicting changes in the illumination intensity and direction of the illumination. Moreover, an enhanced update strategy for the template dictionary is used along with a sparse representation model to solve the problem of drift due to appearance changes during tracking. The proposed algorithm has been evaluated using various particle-filter-based tracking algorithms on scenes from public data sets and using our gesture data set, which includes variations in illumination. Using the proposed model, the algorithms perform up to 20% better on sequences for which variations in illumination are dominant. We carried systematic experiments to evaluate the robustness of the proposed algorithm on video sequences with illumination variations, as well as other variations. Furthermore, in sequences that include variations in illumination, our likelihood model usually performs better than the default tracker likelihood model.
机译:由于例如照明,比例,遮挡和运动模糊的变化,在不受限制的环境中跟踪视觉目标具有挑战性。利用基于粒子过滤器的视觉目标跟踪器的许多视频应用程序需要在变化的照明条件下跟踪视觉目标。相似性度量和似然估计强烈影响粒子滤波器的性能。在本文中,我们提出了一种新颖的似然估计器,该估计器已与其他基于粒子滤波的最新技术相结合,通过预测照明强度和照明方向的变化来适应变化的照明。此外,模板字典的增强更新策略与稀疏表示模型一起使用,以解决由于跟踪过程中外观变化导致的漂移问题。在公共数据集的场景上使用各种基于粒子过滤器的跟踪算法,并使用我们的手势数据集(包括光照变化),对提出的算法进行了评估。使用所提出的模型,算法在照度变化占主导的序列上可将性能提高20%。我们进行了系统的实验,以评估所提出算法在具有光照变化以及其他变化的视频序列上的鲁棒性。此外,在包含光照变化的序列中,我们的似然模型通常比默认跟踪器似然模型表现更好。

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