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Optical character recognition in real environments using neural networks and k-nearest neighbor

机译:使用神经网络和k最近邻在真实环境中进行光学字符识别

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In this paper, we propose a novel process to optical character recognition (OCR) used in real environments, such as gas-meters and electricity-meters, where the quantity of noise is sometimes as large as the quantity of good signal. Our method combines two algorithms an artificial neural network on one hand, and the k-nearest neighbor as the confirmation algorithm. Our approach, unlike other OCR systems, it is based on the angles of the digits rather than on pixels. Some of the advantages of the proposed system are: insensitivity to the possible rotations of the digits, the possibility to work in different light and exposure conditions, the ability to deduct and use heuristics for character recognition. The experimental results point out that our method with moderate level of training epochs can produce a high accuracy of 99.3 % in recognizing the digits, proving that our system is very successful.
机译:在本文中,我们提出了一种在实际环境中使用的光学字符识别(OCR)的新颖方法,例如燃气表和电表,其中噪声的量有时与良好信号的量一样大。我们的方法一方面将人工神经网络与两种算法相结合,然后将k最近邻作为确认算法。与其他OCR系统不同,我们的方法基于数​​字角度而不是像素。所提出的系统的一些优点是:对数字的可能旋转不敏感,在不同的光照和曝光条件下工作的可能性,演绎和使用启发式进行字符识别的能力。实验结果表明,我们的方法具有中等水平的训练时期,在识别数字方面可以产生99.3%的高精度,证明我们的系统非常成功。

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