Smart Bot for Handwritten Digit String Recognition

Mallikarjuna Rao Gundavarapu, Vivek Vardhan Reddy Yannam, Akash Velagala, Snehith Reddy Lankela, Saaketh Koundinya G, Sai Chandan Regonda
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引用次数: 2

Abstract

Handwritten digit string recognition is more sophisticated than determining a single digit individually. The repeated recognition of single digits is applicable for recognizing a handwritten digit string. A similar approach is exercised in this paper. The proposed approach could be advantageous in banks to recognize the digits written on the cheque and processes the cheque. Further, the banks could send the audio message of the recognized handwritten digits to the cheque issuer for confirmation before cashing the cheque. The pro-posed model is developed in the python platform and is lightweight, robust, and cross-platform. In this approach, we have trained a neural network model with MNIST handwritten digits dataset and some samples of our own for recognizing the handwritten digits. The Convolution Neural network models are widely used in the present-day technologies for object recognition, image processing, segmentation, face recognizing and also many identifications related tasks. The CNN model used in the project determines the digit in the image provided. Finally, the system plays the [pre-]recorded audio and displays the output for the recognized digits in the given digit string.
手写数字字符串识别的智能机器人
手写数字字符串识别比单独确定单个数字更复杂。单个数字的重复识别适用于识别手写数字串。本文采用了类似的方法。所提出的方法可能有利于银行识别写在支票上的数字并处理支票。此外,银行还可以在兑现支票前将已识别的手写数字的音频信息发送给支票签发人进行确认。提出的模型是在python平台上开发的,具有轻量级、健壮性和跨平台性。在这种方法中,我们用MNIST手写数字数据集和我们自己的一些样本训练了一个神经网络模型来识别手写数字。卷积神经网络模型被广泛应用于当今的物体识别、图像处理、分割、人脸识别以及许多与身份识别相关的任务中。项目中使用的CNN模型决定了所提供图像中的数字。最后,系统播放[预]录制的音频,并显示给定数字串中识别的数字的输出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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