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Handwritten Numeric and Alphabetic Character Recognition and Signature Verification Using Neural Network

机译:使用神经网络的手写数字和字母字符识别和签名验证

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Handwritten signature and character recognition has become challenging research topic due to its numerous applications. In this paper, we proposed a system that has three sub-systems. The three subsystems focus on offline recognition of handwritten English alphabetic characters (uppercase and lowercase), numeric characters (0 - 9) and individual signatures respectively. The system includes several stages like image preprocessing, the post-processing, the segmentation, the detection of the required amount of the character and signature, feature extraction and finally Neural Network recognition. At first, the scanned image is filtered after conversion of the scanned image into a gray image. Then image cropping method is applied to detect the signature. Then an accurate recognition is ensured by post-processing the cropped images. MATLAB has been used to design the system. The subsystems are then tested for several samples and the results are found satisfactory at about 97% success rate. The quality of the image plays a vital role as the images of poor or mediocre quality may lead to unsuccessful recognition and verification.
机译:手写签名和字符识别由于其众多的应用而成为具有挑战性的研究主题。在本文中,我们提出了一个包含三个子系统的系统。这三个子系统分别致力于离线识别手写英文字母字符(大写和小写),数字字符(0-9)和单个签名。该系统包括多个阶段,例如图像预处理,后处理,分割,所需字符和签名数量的检测,特征提取以及最后的神经网络识别。首先,在将扫描图像转换成灰色图像之后,对扫描图像进行过滤。然后应用图像裁剪方法来检测签名。然后,通过对裁剪后的图像进行后处理来确保准确的识别。 MATLAB已用于设计系统。然后对子系统进行几个样本测试,结果以大约97%的成功率令人满意。图像质量起着至关重要的作用,因为质量差或中等的图像可能会导致识别和验证失败。

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