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Watching pattern distribution via massive character recognition

机译:通过大量字符识别观看图案分布

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The purpose of this paper is to analyze how image patterns distribute inside their feature space. For this purpose, 832,612 manually ground-truthed handwritten digit patterns are used. Use of character patterns instead of general visual object patterns is very essential for our purpose. First, since there are only 10 classes for digits, it is possible to have an enough number of patterns per class. Second, since the feature space of small binary character images is rather compact, it is easier to observe the precise pattern distribution with a fixed number of patterns. Third, the classes of character patterns can be defined far more clearly than visual objects. Through nearest neighbor analysis on 832, 612 patterns, their distribution in the 32 × 32 binary feature space is observed quantitatively and qualitatively. For example, the visual similarity of nearest neighbors and the existence of outliers, which are surrounded by patterns from different classes, are observed.
机译:本文的目的是分析图像模式如何在其特征空间内分布。为此目的,使用832,612手动地面判处的手写数字图案。使用字符模式而不是一般的视觉对象模式对我们的目的非常重要。首先,由于数字只有10个类,因此可以拥有每个类的足够数量的模式。其次,由于小二进制字符图像的特征空间相当紧凑,因此更容易观察到具有固定数量的图案的精确模式分布。第三,可以比视觉对象更清楚地定义字符模式的类。通过关于832,612模式的最近邻分析,定量和定性地观察到它们在32×32二进制特征空间中的分布。例如,观察到最近邻居的视觉相似性以及由不同类别的图案包围的异常值的存在性。

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