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Clustering for filtering: multi-object detection and estimation using multiple/massive sensors

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Title:
Clustering for filtering: multi-object detection and estimation using multiple/massive sensors.
Authors: 
Li, Tiancheng; Corchado Rodríguez, Juan M.; Sun, Shudong; Bajo Pérez, Javier
Journal:
Information Sciences . Volume 388-389, pp. 172-190.

Publication date: 
May 2017
ISSN: 
0020-0255
DOI
 10.1016/j.ins.2017.01.028

BibTex

@article { article,
title = {Clustering for filtering: multi-object detection and estimation using multiple/massive sensors},
author = {Li, Tiancheng; Corchado Rodríguez, Juan M.; Sun, Shudong; Bajo Pérez, Javier},
journal = {Information Sciences },
volume = {388-389},
year = {2017}
}

XML

<article key='journals/Information/Li,/May 2017' mdate='May 2017'>
<author> Li</author>
<author> Tiancheng; Corchado Rodríguez</author>
<author> Juan M.; Sun</author>
<author> Shudong; Bajo Pérez</author>
<author> Javier</author>
<title> Clustering for filtering: multi-object detection and estimation using multiple/massive sensors</title>
<pages> 172-190</pages>
<year> 2017</year>
<journal> Information Sciences </journal>
<ee> 10.1016/j.ins.2017.01.028</ee>
</article>
Evidences of quality:
JCR (2016): 4.832
COMPUTER SCIENCE, INFORMATION SYSTEMS: 7/146 (Q1)

Advanced multi-sensor systems are expected to combat the challenges that arise in object recognition and state estimation in harsh environments with poor or even no prior information, while bringing new challenges mainly related to data fusion and computational burden. Unlike the prevailing Markov-Bayes framework that is the basis of a large variety of stochastic filters and the approximate, we propose a clustering-based methodology for multi-sensor multi-object detection and estimation (MODE), named clustering for filtering (C4F), which abandons unrealistic assumptions with respect to the objects, background and sensors. Rather, based on cluster analysis of the input multi-sensor data, the C4F approach needs no prior knowledge about the latent objects (whether quantity or dynamics), can handle time-varying uncertainties regarding the background and sensors such as noises, clutter and misdetection, and does so computationally fast. This offers an inherently robust and computationally efficient alternative to conventional Markov–Bayes filters for dealing with the scenario with little prior knowledge but rich observation data. Simulations based on representative scenarios of both complete and little prior information have demonstrated the superiority of our C4F approach.

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