Comparison of variance based fusion and a model of centralised Kalman filter in target tracking

Deepa Elizabeth George, Senthil C. Singh
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引用次数: 3

Abstract

Multi sensor target tracking is well known to have advantages over single sensor target tracking in many applications. Observational data from sensors, may be fused at different levels, ranging from the raw data level to feature level, or at decision level. This paper presents an experimental comparison of an averaging model of Kalman filter fusion and variance based fusion in estimating the position of a moving target. The target is assumed to follow a uniform velocity model. The performance of the two fusion techniques have been experimented in detail for various cases of noise variances and initial estimate of target's position. The sensors are assumed to be sensor suites, having autonomy and sufficient computational power. Accordingly, the variances of state estimate are assumed to be available from an EKF, where one EKF is running independently for each sensor suites. The mean square error in estimation for both techniques have been simulated in matlab and compared.
基于方差的融合与集中卡尔曼滤波模型在目标跟踪中的比较
众所周知,在许多应用中,多传感器目标跟踪比单传感器目标跟踪具有优势。来自传感器的观测数据可以在不同的级别进行融合,从原始数据级别到特征级别,或者在决策级别。本文对卡尔曼滤波融合的平均模型和基于方差的融合在运动目标位置估计中的应用进行了实验比较。假定目标遵循匀速模型。在各种噪声方差和目标位置初始估计的情况下,对两种融合技术的性能进行了详细的实验。假设传感器是传感器套件,具有自主性和足够的计算能力。因此,假设状态估计的方差可以从一个EKF中获得,其中一个EKF对每个传感器套件独立运行。在matlab中对两种方法的均方误差估计进行了仿真并进行了比较。
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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