基于单类分类器的兼容文档图像分类系统

Nicolas Sidère, Jean-Yves Ramel, Sabine Barrat, V. P. d'Andecy, S. Kebairi
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引用次数: 0

摘要

专业背景下的文档图像分类需要考虑一些约束条件,例如处理文档和/或类的大量变化。虽然大多数方法同时处理所有类,但我们通过提出一个新的兼容系统来解决这个问题,该系统基于特征的专门化和分类器的参数化,每个类单独。我们首先计算基于全局图像特征和结构基元的广义特征向量。然后,对于每个类,通过根据稳定性评分对特征进行排序来专门化特征向量。最后,使用这些特定的特征训练一个单类K-nn分类器。实验结果表明,该系统具有良好的分类率,能够处理大量的文档分类。
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A Compliant Document Image Classification System Based on One-Class Classifier
Document image classification in a professional context requires to respect some constraints such as dealing with a large variability of documents and/or number of classes. Whereas most methods deal with all classes at the same time, we answer this problem by presenting a new compliant system based on the specialization of the features and the parametrization of the classifier separately, class per class. We first compute a generalized vector of features based on global image characterization and structural primitives. Then, for each class, the feature vector is specialized by ranking the features according a stability score. Finally, a one-class K-nn classifier is trained using these specific features. Conducted experiments reveal good classification rates, proving the ability of our system to deal with a large range of documents classes.
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