使用HMM和SVM分类器的手写阿萨姆语数字识别器

Bandita Sarma, Kapil Mehrotra, R. Krishna Naik, S. Prasanna, S. Belhe, C. Mahanta
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引用次数: 17

摘要

这项工作描述了使用隐马尔可夫模型(HMM)和支持向量机(SVM)开发的阿萨姆邦在线数字识别系统。预处理(x, y)坐标及其在每个点的一阶和二阶导数被用作两种建模技术的特征。两个系统分别使用HMM和SVM进行开发。然后使用两种不同的方法将两个系统的结果结合起来。在第一种方法中,直接合并两个分类器的分数,并在合并后的系统中观察到性能的改善(Comb - 1)。在第二种方法中,还分析了HMM和SVM分类器的混淆模式。在此基础上,进一步将结果进行综合,最终得到了性能得到增强的混合数字识别器(Comb -2)。HMM、SVM、Comb-1和Comb-2系统的平均识别性能分别为96.5、96.8、98和98.3。
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Handwritten Assamese numeral recognizer using HMM & SVM classifiers
This work describes the development of Assamese online numeral recognition system using Hidden Markov Models (HMM) and Support Vector Machines (SVM). Preprocessed (x, y) coordinates and their first and second derivatives at each point are used as features for both the modeling techniques. The two systems are developed individually using HMM and SVM. The results from both the systems are then combined using two different approaches. In the first approach, the scores from both the classifiers are directly merged and an improvement in performance is observed in the combined system (Comb - 1). In the second approach, the confusion patterns from HMM and SVM classifiers are also analyzed. Based on this, the results are further combined to obtain a final hybrid numeral recognizer with an enhanced performance (Comb - 2). The HMM, SVM, Comb-1 and Comb-2 systems provide average recognition performance of 96.5, 96.8, 98 and 98.3, respectively.
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