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Raliability measure assignment to sonar for robust target differentiation

机译:可靠的声纳指标分配

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摘要

This article addresses the use of evidential reasoning and majority voting in multi-sensor decision making for target differentiation using sonar sensors. Classification of target primitives which constitute the basic building blocks of typical surfaces in uncluttered robot environments has been considered. Multiple sonar sensors placed at geographically different sensing sites make decisions about the target type based on their measurement patterns. Their decisions are combined to reach a group decision through Dempster-Shafer evidential reasoning and majority voting. The sensing nodes view the targets at different ranges and angles so that they have different degrees of reliability. Proper accounting for these different reliabilities has the potential to improve decision making compared to simple uniform treatment of the sensors. Consistency problems arising in majority voting are addressed with a view to achieving high classification performance. This is done by introducing preference ordering among the possible target types and assigning reliability measures (which essentially serve as weights) to each decision-making node based on the target range and azimuth estimates it makes and the belief values it assigns to possible target types. The results bring substantial improvement over evidential reasoning and simple majority voting by reducing the target misclassification rate. © 2002 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved.
机译:本文介绍了证据推理和多数表决在多传感器决策中使用声纳传感器进行目标区分的用途。已经考虑了目标基元的分类,这些目标基元构成了整洁的机器人环境中典型曲面的基本构建块。放置在地理上不同的感应位置的多个声纳传感器会根据其测量模式来决定目标类型。通过Dempster-Shafer证据推理和多数表决,他们的决定被合并以达成集体决定。感测节点以不同的范围和角度查看目标,因此它们具有不同的可靠性。与对传感器进行简单的统一处理相比,正确考虑这些不同的可靠性具有改善决策的潜力。解决了多数表决中出现的一致性问题,以实现较高的分类性能。这是通过在可能的目标类型中引入优先级排序,并根据目标范围和做出的方位角估计以及将其分配给可能的目标类型的置信度值向每个决策节点分配可靠性度量(本质上用作权重)来完成的。通过降低目标错误分类率,结果大大改善了证据推理和简单多数表决的方式。 ©2002模式识别协会。由Elsevier Science Ltd.出版。保留所有权利。

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  • 作者

    Ayrulu, B.; Barshan, B.;

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  • 年度 2002
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  • 原文格式 PDF
  • 正文语种 English
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