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Three-dimensional target recognition using mART neural networks

机译:使用mART神经网络的三维目标识别

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Abstract: To give a real-time adaptive self-organizing capability to the automatic target recognition (ATR) system suppressing the over clustering, the modified adaptive resonance theory (mART) neural networks are proposed which include the vigilance test method of self-organizing map (SOM) and the real-time adaptive clustering algorithm of ART. This neural networks effectively cluster the arbitrary feature maps which are mostly invariant to two dimensional distortion, so as to solve the three dimensional distortion problem. As the extraction of features which are invariant to two dimensional distortion, five alternative methods are tested in this paper. And for the purpose of proving the performance of the proposed neural networks, some experiments with the database composed of 9 fighters and 5 tanks are carried out. Under the condition that the system occupies the same size of memory, the mART produces 19% higher recognition rate than that of the SOM neural networks. Consequently, it is proved that the proposed approaches can give a great attribution in realizing the three dimensional distortion invariant target recognition system. !12
机译:摘要:为了给予自动目标识别(ATR)系统的实时自适应自组织能力,抑制过度聚类,提出了改进的自适应共振理论(MART)神经网络,包括自组织地图的警惕性测试方法(SOM)与艺术的实时自适应聚类算法。这种神经网络有效地聚集了大多数不变的任意特征映射,从而解决三维失真问题。作为对二维失真不变的特征的提取,本文在本文中测试了五种替代方法。为了证明所提出的神经网络的表现,进行了由9名战斗机和5个坦克组成的数据库的一些实验。在系统占据相同尺寸的内存大小的条件下,MART产生的识别率高于SOM神经网络的识别率为19%。因此,证明了所提出的方法可以在实现三维失真不变目标识别系统方面提供巨大的归因。 !12

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