基于主成分分析方法的联机卡纳达语手写字符识别系统

G. Keerthi Prasad, I. Khan, N. Chanukotimath, F. Khan
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引用次数: 10

摘要

在本文中,我们提出了一种不受限制的可用于实时应用的卡纳达语在线手写字符识别器。它处理所有卡纳达语的基本字符。本文对在线手写卡纳达语字符识别系统(OHKCRS)进行了详细的讨论。开发一个针对移动设备的卡纳达语字符集的在线手写识别系统将在使这些设备可用于印度社会方面发挥重要作用,因为印度大部分地区使用卡纳达语。本文针对51个卡纳达基本汉字,提出了一个独立于写作者的在线手写汉字识别模型。该系统采用主成分分析(PCA)和动态时间包裹(DTW)两种不同的方法在移动设备上实现。为了找出这两种方法在手持设备上的适用性,进行了多次实验,并对所得结果进行了详细的分析。PCA方法的结果比DTW方法更有前景。平均而言,PCA方法的识别准确率高达88%,DTW方法的识别准确率高达64%,并且PCA方法对未知字符的识别时间约为0.8秒,DTW方法的识别时间约为55秒,因此PCA方法适合于实时应用。
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On-line handwritten character recognition system for Kannada using Principal Component Analysis Approach: For handheld devices
In this paper, we present an unrestricted Kannada online handwritten character recognizer which is viable for real time applications. It handles all basic characters of the Kannada script. In this paper, the proposed Online Handwritten Kannada Character Recognition System (OHKCRS) is discussed in detail. Developing an Online Handwriting Recognition System for Kannada character set to mobile devices would play an important role in making these devices available and usable for the Indian society as Kannada language is spoken in major part of India. In this paper, we present a model for writer-independent online handwriting character recognition for the 51 basic Kannada characters. The proposed system is implemented on mobile device using two different approaches namely Principal Component Analysis (PCA) and Dynamic Time Wrapping (DTW). To find the suitability of these two approaches for handheld devices several experiments were conducted and detailed analysis has been made on the obtained results. The results obtained for PCA approach is quite promising than DTW. On an average, recognition accuracy up to 88% is achieved for the PCA approach and up to 64% is achieved for DTW approach, also the time taken for recognition of unknown character is around 0.8 sec for PCA approach, and around 55 sec for DTW approach, thus the PCA approach is suitable for real-time applications.
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