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Feature extraction and use with a probability density function (PDF) divergence metric

机译:特征提取和与概率密度函数(PDF)差异度量一起使用

摘要

An image of real world is processed to identify blocks as candidates to be recognized. Each block is subdivided into sub-blocks, and each sub-block is traversed to obtain counts, in a group for each sub-block. Each count in the group is either of presence of transitions between intensity values of pixels or of absence of transition between intensity values of pixels. Hence, each pixel in a sub-block contributes to at least one of the counts in each group. The counts in a group for a sub-block are normalized, based at least on a total number of pixels in the sub-block. Vector(s) for each sub-block including such normalized counts may be compared with multiple predetermined vectors of corresponding symbols in a set, using any metric of divergence between probability density functions (e.g. Jensen-Shannon divergence metric). Whichever symbol has a predetermined vector that most closely matches the vector(s) is identified and stored.
机译:处理现实世界的图像以将块识别为待识别的候选者。将每个块细分为多个子块,然后遍历每个子块以获得每个子块的组中的计数。该组中的每个计数要么是在像素的强度值之间存在过渡,要么是在像素的强度值之间存在过渡。因此,子块中的每个像素贡献于每个组中的计数中的至少一个。至少基于子块中像素的总数,对子块的组中的计数进行归一化。可以使用概率密度函数之间的任何差异度量(例如,Jensen-Shannon差异度量),将包括这种归一化计数的每个子块的向量与一组中的对应符号的多个预定矢量进行比较。识别并存储具有最接近匹配一个或多个矢量的预定矢量的任何符号。

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