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Feature classification using supervised statistical pattern recognition

机译:使用监督统计模式识别的特征分类

摘要

Feature classification using a novel supervised statistical pattern recognition approach is described. A tree-like hierarchical decomposition of n-dimensional feature space is created off-line from an image processing system (80). The hierarchical tree is created through a minimax-type decompositional segregation of n-dimensional feature vectors of different feature classifications within the corresponding feature space. Each cell preferably contains feature vectors of only one feature classification, or is empty, or is of a predefined minimum cell size. Once created, the hierarchical tree is made available to the image processing system (80) for real-time defect classification of features in a static or moving pattern. Each feature is indexed to the classification tree by locating its corresponding feature vector in the appropriate feature space cell as determined by a depth-first search of the hierarchical tree. The smallest leaf node which includes that feature vector provides the statistical information on the vector's classification.
机译:描述了使用新型监督统计模式识别方法的特征分类。从图像处理系统离线创建n维特征空间的树状分层分解(80)。通过在对应的特征空间内对不同特征分类的n维特征向量进行极小极大类型分解分解来创建层次树。每个单元优选地仅包含一个特征分类的特征矢量,或者为空,或者具有预定的最小单元尺寸。一旦创建,就可以将分层树提供给图像处理系统(80),以静态或移动模式对特征进行实时缺陷分类。通过将每个对应的特征向量定位在适当的特征空间像元中,将每个特征索引到分类树,如通过层次树的深度优先搜索所确定的。包含该特征向量的最小叶节点提供有关向量分类的统计信息。

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