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A fuzzy logic approach to detector scoring

机译:检测器评分的模糊逻辑方法

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摘要

How do we judge the goodness of a new pattern recognition technique? The standard approach is to test it on labeled samples. This assumes that we have accurately labeled data. In many imaging applications, that assumption is not so easy to make. In particular, in an Automatic Target Detection system that produces "bounding boxes" for LADAR range images, there is considerable uncertainty deciding if the boxes determined by the algorithm actually correspond to a hit. An improved bounding box matching algorithm for detector scoring on synthetic data is presented. The first modified version uses fuzzy intersection and union operators to combine membership values from multiple matching criteria. The second version uses a fuzzy knowledge base using the compositional rule of inference with rules generated symmetrically from worth functions. Previous mistakes of crisp matching criteria are shown and the improved results of the two new methods are discussed.
机译:我们如何判断一种新的模式识别技术的优势?标准方法是在标记的样品上进行测试。假设我们已经正确标记了数据。在许多成像应用中,这种假设并非那么容易做到。尤其是,在为LADAR距离图像生成“边界框”的自动目标检测系统中,存在很大的不确定性,决定由算法确定的框是否实际对应于命中。提出了一种改进的边界框匹配算法,用于对合成数据进行探测器评分。第一个修改版本使用模糊交集和并集运算符组合来自多个匹配条件的隶属度值。第二个版本使用模糊知识库,该知识库使用推理的组成规则和根据价值函数对称生成的规则。显示了清晰匹配准则的先前错误,并讨论了这两种新方法的改进结果。

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