首页> 外文会议>Artifical Neural Networks in Engineering (ANNIE'96) Conference, held November 10-13, 1996, in St. Louis, Missouri, U.S.A. >Buffered reset leads to improved compression in fuzzy artmap classification of radar range profiles
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Buffered reset leads to improved compression in fuzzy artmap classification of radar range profiles

机译:缓冲复位可改善雷达测距图的模糊Artmap分类中的压缩

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摘要

Fuzzy ARTMAP has to date been applied to a variety of automatic target recognition tasks, including radar range profile classification. In simulations of this task, it has demonstrated significant compression compared to k-nearest-neighbor classifiers. During supervised learning, match tracking search allocates memory based on the degree of similarity between newly encountered and previously encountered inputs, regardless of their prior predictive success. Here we investigate techniques that buffer reset based on a category's previous predictive success and thereby substantially improve the compression achieved with minimal loss of accuracy.
机译:迄今为止,模糊ARTMAP已应用于多种自动目标识别任务,包括雷达测距轮廓分类。在此任务的模拟中,与k近邻分类器相比,它已显示出显着的压缩效果。在监督学习期间,匹配跟踪搜索根据新遇到的和先前遇到的输入之间的相似度来分配内存,而不管它们先前的预测成功如何。在这里,我们研究了基于类别的先前预测成功而对重置进行缓冲的技术,从而以最小的准确性损失来显着提高压缩率。

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