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Classification of coins using an eigenspace approach

机译:使用特征空间方法对硬币进行分类

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We present a vision-based approach to coin classification which is able to discriminate between hundreds of different coin classes. The approach described is a multistage procedure. In the first stage a translationally and rotationally invariant description is computed. In a second stage an illumination-invariant eigenspace is selected and probabilities for coin classes are derived for the obverse and reverse sides of each coin. In the final stage coin class probabilities for both coin sides are combined through Bayesian fusion including a rejection mechanism. Correct decision into one of the 932 different coin classes and the rejection class, i.e., correct classification or rejection, was achieved for 93.23% of coins in a test sample containing 11,949 coins. False decisions, i.e., either false classification, false rejection or false acceptance, were obtained for 6.77% of the test coins,
机译:我们提出了一种基于视觉的硬币分类方法,该方法能够区分数百种不同的硬币类别。所描述的方法是一个多阶段过程。在第一阶段,计算平移和旋转不变描述。在第二阶段,选择照度不变的本征空间,并为每个硬币的正面和反面推导出硬币类别的概率。在最后阶段,通过包括拒绝机制的贝叶斯融合将硬币两面的硬币类别概率相结合。对于包含11949个硬币的测试样本中的93.23%的硬币,可以正确决定932个硬币类别之一和拒绝类别,即正确分类或拒绝。 6.77%的测试代币获得了错误的决定,即错误的分类,错误的拒绝或错误的接受,

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