Learning Mixtures of Offline and Online features for Handwritten Stroke Recognition

Alahari Karteek, Satya Lahari Putrevu, C. V. Jawahar
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引用次数: 4

Abstract

In this paper we propose a novel scheme to combine offline and online features of handwritten strokes. The state-of-the-art methods in handwritten stroke recognition have used a pre-determined combination of these features, which is not optimal in all situations. The proposed model addresses this issue by learning mixtures of offline and online characteristics from a set of exemplars. Each stroke is represented as a probabilistic sequence of substrokes with varying compositions of these features. The model adapts to any stroke and chooses the feature composition that best characterizes it. The superiority of the method is demonstrated on handwritten numeral and character strokes
手写笔划识别的离线和在线特征混合学习
本文提出了一种结合手写笔画的离线和在线特征的新方案。最先进的手写笔划识别方法使用了这些特征的预先确定的组合,这并不是在所有情况下都是最佳的。提出的模型通过从一组范例中学习离线和在线特征的混合来解决这个问题。每个笔画被表示为具有这些特征的不同组成的子笔画的概率序列。该模型适应任何笔画,并选择最能表征其特征的特征组成。在手写数字笔画和汉字笔画上证明了该方法的优越性
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