Improved localization using Kalman filter on estimated positions

Simona Poilinca, G. Abreu, D. Macagnano, S. Severi
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引用次数: 1

Abstract

In this paper we present a computational-efficient two-phases model for localization and tracking based on Kalman filter. A first estimate of target position is obtained via Super MDS algorithm only using noisy distance measurements, then location information is refined via a classic Kalman Filter exploiting the noisy acceleration of the target. The main scientific contribution of this paper is to show that, although the information theory proves that such a sequential approach is sub-optimal, the performance is accurate enough even with high-noisy acceleration measurements. This fact suggests that in the vast majority of use cases is possible, taking advantage of its mathematical simplicity, to employee this two-phase model neglecting its sub-optimality.
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利用卡尔曼滤波对估计位置进行改进定位
本文提出了一种基于卡尔曼滤波的两阶段定位与跟踪模型。通过Super MDS算法仅利用噪声距离测量获得目标位置的初始估计,然后利用目标的噪声加速度通过经典卡尔曼滤波对位置信息进行细化。本文的主要科学贡献是表明,尽管信息论证明这种顺序方法不是最优的,但即使在高噪声加速度测量下,其性能也足够准确。这一事实表明,在绝大多数用例中,利用其数学简单性,使用这两阶段模型而忽略其次优性是可能的。
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