上下文自适应粒子滤波用于鲁棒实时非刚性目标跟踪

Fouad Bousetouane, C. Motamed, Lynda Dib
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引用次数: 2

摘要

利用颜色分布跟踪目标位置的粒子滤波算法是视觉跟踪问题中许多子领域中最常用的算法之一。然而,在实践中,使用颜色分布来描述跟踪对象是不够的。针对光照变化、尺度变化和复杂的非刚体运动,提出了一种融合多线索的自适应上下文粒子滤波算法。为此,通过Haralick纹理特征和颜色线索计算的低级上下文信息被组合成描述目标外观的模型。计算每个线索的可能性,该算法依赖于作为线索可能性乘积的似然分解。在每一帧进行运动目标提取,初始化滤波器并使每个粒子的搜索空间与被跟踪目标的实际尺寸相适应。实验结果表明,该方法具有较好的跟踪性能和较好的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contextual adaptive particle filtering for robust real-time non-rigid object tracking
Particle Filtering algorithm for tracking the location of an object using a color distribution is one of the most used algorithm in many sub-field of visual tracking problem. However, the use of a color distribution for tracked object description is insufficient in practice. In this paper, we present an adaptive contextual particle filtering algorithm integrating multiple cues to non-rigid object tracking, designed to handle illumination variation, scale change and complex non-rigid motion. For this purpose, low-level contextual information computed through Haralick texture features and color cues are combined into a model describing the appearance of the target. The likelihood of each cue is calculated and the algorithm rely on likelihood factorization as a product of the likelihoods of the cues. Moving object extraction is performed at each frame for initializing the filter and adapting the search space of each particle with the real dimension of the tracked target. Experimental results of applying this approach show improvement in tracking and robustness in recovering from very complex conditions.
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