Curvature point based HMM state prediction for online handwritten assamese strokes recognition

S. Mandal, S. Prasanna, S. Sundaram
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引用次数: 4

Abstract

Hidden Markov Models (HMM) are used in handwritten strokes recognition task. The two design parameters of HMM are the number of states and number of mixtures in each state. There are two approaches for finding the number of states, namely, equal number of states and variable number of states. Since the shape of strokes will be different, variable number of states approach should be beneficial. This work proposes a curvature point detection based method to predict variable number of states for modeling a handwritten stroke. The proposed method selects appropriate points from a trace so that the portion between two consecutive points is modeled as an HMM state. Accordingly, based upon handwritten stroke shape complexity, the number of appropriate points selected will change and hence the number of states assigned to the corresponding stroke. In the proposed method, the number of states is proportional to the shape complexity of the given stroke as opposed to fixed in case of brute-force. The HMM based stroke recognizer consisting of 181 distinct strokes, was trained on a set of 52,977 examples collected from approximately 100 native Assamese writers. The evaluation was done on 43,828 examples collected from same users in different sessions. The experimental results demonstrate the benefits of the proposed technique over the brute-force method, especially in case of complex shape strokes.
基于曲率点的HMM状态预测在线手写阿萨姆笔画识别
隐马尔可夫模型(HMM)用于手写笔画识别任务。HMM的两个设计参数是状态数和每种状态下的混合物数。求状态数的方法有两种,即等状态数法和变状态数法。由于笔画的形状会有所不同,可变状态数的方法应该是有益的。本文提出了一种基于曲率点检测的方法来预测手写笔画的可变状态数。该方法从轨迹中选择合适的点,从而将两个连续点之间的部分建模为HMM状态。因此,根据手写笔画形状的复杂性,所选择的适当点的数量将发生变化,从而分配给相应笔画的状态数量也将发生变化。在提出的方法中,状态的数量与给定笔画的形状复杂度成正比,而不是在暴力的情况下固定不变。基于HMM的笔画识别器由181种不同的笔画组成,在从大约100名阿萨姆邦本土作家收集的52,977个样本上进行了训练。对从不同会话的相同用户收集的43,828个示例进行了评估。实验结果表明,该方法优于蛮力方法,特别是在复杂形状笔画的情况下。
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