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Comparative analysis of offline Handwriting Recognition Using Invariant Moments with HMM and combined SVM-HMM classifier

机译:基于不变矩的HMM脱机手写识别与SVM-HMM组合分类器的对比分析

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Offline Handwriting recognition is considered as important research field in the field of forensic and biometric applications. It finds significance in fields like graphology which exploits the physiological behavior of the person based on the handwriting. There are several algorithms for Handwriting recognition. However none of the techniques is yet proved to be satisfactory especially for large number of classes. This is due to the fact that handwriting is a pattern which differs from instance to instance of the same writer. Hence HMM is most preferred technique in this domain. It is due to the fact the HMM produces good result for large number of statistical patterns. However, the performance of the system depends entirely on the feature vectors. Unlike the cases of usual patter recognition like face recognition, a user's training and test sample may vary. Hence recognition of the same is tough. Therefore in this work we propose a novel technique for offline handwriting recognition based on Invariant Moments and curve let transform. Curve let transform and Invariant moments are used predominantly for character recognition problem and hence are more suitable for the work. Further we compare the performance of HMM based technique with combined HMM-SVM based technique and found that for some combined HMM-SVM technique is better than HMM. Combined HMM-SVM classifier improve the problem of HMM classifier of multiple detection of Class too.
机译:脱机手写识别被认为是法医学和生物识别应用领域的一个重要研究领域。它在笔迹学等领域具有重要意义,笔迹学利用人在笔迹基础上的生理行为。手写识别有几种算法。然而,没有一种技术被证明是令人满意的,尤其是对于大量的课程。这是因为,手写是一种模式,同一个作者的不同情况不同。因此,HMM是该领域最受欢迎的技术。这是因为HMM对大量统计模式产生了良好的结果。然而,系统的性能完全取决于特征向量。与通常的模式识别(如人脸识别)不同,用户的训练和测试样本可能会有所不同。因此,要认识到这一点是很困难的。因此,在这项工作中,我们提出了一种基于不变矩和曲线let变换的脱机手写识别新技术。曲线let变换和不变矩主要用于字符识别问题,因此更适合于这项工作。我们进一步比较了基于HMM的技术和基于HMM-SVM的组合技术的性能,发现对于某些情况,HMM-SVM组合技术优于HMM。HMM-SVM组合分类器也改善了HMM分类器的多类检测问题。

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