Encoding patterns for efficient classification by nearest neighbor classifiers and neural networks with application to handwritten Hindi numeral recognition

Y. B. Mahdy, M. El-Melegy
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引用次数: 7

Abstract

Encoding of relevant information from visual patterns represents an important challenging component of pattern recognition. This paper proposes a contour-following based algorithm for extracting features from patterns. For classification of the encoded patterns by nearest neighbor (NN) classifiers, an iterative clustering algorithm is proposed to obtain a reduced, but efficient, number of prototypes. The algorithm works in a supervised mode and can perform cluster merging and cancelling. Moreover, mapping this NN classifier to a multilayer feedforward neural network is investigated. The performance of the algorithms is demonstrated through application to the task of handwritten Hindi numeral recognition. Experiments reveal the advantages of handling flexible sizes, orientations and variations.
基于最近邻分类器和神经网络的高效分类编码模式在手写体印地语数字识别中的应用
从视觉模式中提取相关信息的编码是模式识别的一个重要挑战。提出了一种基于轮廓跟踪的模式特征提取算法。为了利用最近邻分类器对编码模式进行分类,提出了一种迭代聚类算法,以获得减少但有效的原型数量。该算法工作在监督模式下,可以进行聚类合并和取消。此外,还研究了将该分类器映射到多层前馈神经网络的问题。通过对手写体印地语数字识别任务的应用,验证了算法的性能。实验揭示了处理灵活尺寸、方向和变化的优势。
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