Integration of fuzzy spatial information in tracking based on particle filtering.

Nicolas Widynski, Séverine Dubuisson, Isabelle Bloch
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引用次数: 29

Abstract

In this paper, we propose a novel method to introduce spatial information in particle filters. This information may be expressed as spatial relations (orientation, distance, etc.), velocity, scaling, or shape information. Spatial information is modeled in a generic fuzzy-set framework. The fuzzy models are then introduced in the particle filter and automatically define transition and prior spatial distributions. We also propose an efficient importance distribution to produce relevant particles, which is dedicated to the proposed fuzzy framework. The fuzzy modeling provides flexibility both in the semantics of information and in the transitions from one instant to another one. This allows one to take into account situations where a tracked object changes its direction in a quite abrupt way and where poor prior information on dynamics is available, as demonstrated on synthetic data. As an illustration, two tests on real video sequences are performed in this paper. The first one concerns a classical tracking problem and shows that our approach efficiently tracks objects with complex and unknown dynamics, outperforming classical filtering techniques while using only a small number of particles. In the second experiment, we show the flexibility of our approach for modeling: Fuzzy shapes are modeled in a generic way and allow the tracking of objects with changing shape.

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基于粒子滤波的模糊空间信息跟踪集成。
本文提出了一种在粒子滤波器中引入空间信息的新方法。这些信息可以表示为空间关系(方向、距离等)、速度、缩放或形状信息。空间信息在通用模糊集框架中建模。然后在粒子滤波中引入模糊模型,自动定义过渡和先验空间分布。我们还提出了一个有效的重要性分布来产生相关的粒子,这是专门用于所提出的模糊框架的。模糊建模在信息语义和从一个瞬间到另一个瞬间的转换方面都提供了灵活性。这允许人们考虑到跟踪对象以一种非常突然的方式改变其方向的情况,以及可用的动力学先前信息较差的情况,如合成数据所示。为了说明这一点,本文对两个真实的视频序列进行了测试。第一个问题涉及一个经典跟踪问题,并表明我们的方法有效地跟踪具有复杂和未知动态的对象,仅使用少量粒子就优于经典滤波技术。在第二个实验中,我们展示了建模方法的灵活性:模糊形状以通用方式建模,并允许跟踪形状变化的对象。
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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