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Non-linear cellular automata based edge detector for optical character images

机译:基于非线性元胞自动机的光学字符图像边缘检测器

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摘要

Design of parallel algorithms for edge detection is extremely important for image analysis and understanding. Cellular automata are the most common and simple models of parallel computation and over the last decade, numerous cellular automata techniques have already been proposed. This paper presents a novel method for edge detection of optical character images based on a variant of cellular automata, called non-linear cellular automata. The method consists of three stages and each stage is simple to understand and implement. A standard binarization technique is applied to a grayscale image and boundary conditions are added to the resultant image. Finally, non-linear cellular automata rules are designed and applied simultaneously to all pixels of the image. The suggested scheme has been validated on optical characters (handwritten as well as printed) of different languages. Furthermore, results are compared with standard edge detection techniques in terms of different performance parameters like entropy, kappa values, true positives, false negatives, etc. It is observed that the suggested scheme is superior to other standard schemes. Hence, the scheme has the potential application for character recognition.
机译:边缘检测的并行算法设计对于图像分析和理解极为重要。元胞自动机是并行计算的最常见和最简单的模型,在过去的十年中,已经提出了许多元胞自动机技术。本文提出了一种新的光学字符图像边缘检测方法,该方法基于细胞自动机的一种变体,称为非线性细胞自动机。该方法包括三个阶段,每个阶段都易于理解和实施。将标准二值化技术应用于灰度图像,并将边界条件添加到生成的图像。最后,非线性元胞自动机规则被设计并同时应用于图像的所有像素。建议的方案已在不同语言的光学字符(手写和印刷)上得到验证。此外,将结果与标准边缘检测技术的不同性能参数(如熵,kappa值,真阳性,假阴性等)进行了比较。观察到,建议的方案优于其他标准方案。因此,该方案具有潜在的字符识别应用。

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