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COMMUNICATIONS AND FORUM: Applying triangular fuzzy number for multi-sensor object recognition

机译:通信与论坛:三角模糊数在多传感器目标识别中的应用

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摘要

Purpose - Multi-sensor data fusion (MSDF) is defined as the process of integrating information from multiple sources to produce the most specific and comprehensive unified data about an entity, activity or event. Multi-sensor object recognition is one of the important technologies of MSDF. It has been widely applied in the fields of navigation, aviation, artificial intelligence, pattern recognition, fuzzy control, robot, and so on. Hence, aimed at the type recognition problem in which the characteristic values of object types and observations of sensors are in the form of triangular fuzzy numbers, the purpose of this paper is to propose a new fusion method from the viewpoint of decision-making theory. Design/methodology/approach - This work, first divides the comprehensive transaction process of sensor signal into two phases. Then, aimed at the type recognition problem, the paper gives the definition of similarity degree between two triangular fuzzy numbers. By solving the maximization optimization model, the vector of characteristic weights is objectively derived. A new fusion method is proposed according to the overall similarity degree. Findings - The results of the experiments show that solving the maximization optimization model improves significantly the objectivity and accuracy of object recognition. Originality/value - The paper studies the type recognition problem in which the characteristic values of object types and observations of sensors are in the form of triangular fuzzy numbers. By solving the maximization optimization model, the vector of characteristic weights is derived. A new fusion method is proposed. This method improves the objectivity and accuracy of object recognition.
机译:目的-多传感器数据融合(MSDF)定义为集成来自多个来源的信息以生成有关实体,活动或事件的最具体,最全面的统一数据的过程。多传感器目标识别是MSDF的重要技术之一。它已广泛应用于导航,航空,人工智能,模式识别,模糊控制,机器人等领域。因此,针对对象识别的特征值和传感器的观测值为三角模糊数形式的类型识别问题,本文的目的是从决策理论的角度提出一种新的融合方法。设计/方法/方法-这项工作首先将传感器信号的全面交易过程分为两个阶段。然后针对类型识别问题,给出了两个三角模糊数之间相似度的定义。通过求解最大化优化模型,客观地得出特征权向量。根据整体相似度,提出了一种新的融合方法。发现-实验结果表明,求解最大化优化模型可显着提高目标识别的客观性和准确性。创意/价值-本文研究类型识别问题,其中对象类型的特征值和传感器的观测值采用三角模糊数的形式。通过求解最大化优化模型,得出特征权向量。提出了一种新的融合方法。该方法提高了对象识别的客观性和准确性。

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