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Recognition of isolated handwritten Farsi/Arabic alphanumeric using fractal codes

机译:使用分形码识别孤立的手写波斯语/阿拉伯字母数字

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We propose a new method for isolated handwritten Farsi/Arabic characters and numerals recognition using fractal codes. Fractal codes represent affine transformations which, when iteratively applied to the range-domain pairs in an arbitrary initial image, give results close to the given image. Each fractal code consists of six parameters, such as corresponding domain coordinates for each range block, brightness offset and an affine transformation, which are used as inputs for a multilayer perceptron neural network for learning and identifying an input. This method is robust to scale and frame size changes. Farsi's 32 characters are categorized to 8 different classes in which the characters are very similar to each other. There are ten digits in the Farsi/Arabic languages, but since two of them are not used in postal codes in Iran, only 8 more classes are needed for digits. According to experimental results, classification rates of 91.37% and 87.26% were obtained for digits and characters respectively on the test sets gathered from various people with different educational background and different ages.
机译:我们提出了一种新的方法,用于使用分形代码识别孤立的手写波斯语/阿拉伯字符和数字。分形码表示仿射变换,当将仿射变换迭代应用于任意初始图像中的范围域对时,得出的结果接近给定图像。每个分形代码由六个参数组成,例如每个范围块的对应域坐标,亮度偏移和仿射变换,这些参数用作多层感知器神经网络的输入,以学习和识别输入。此方法对于缩放和更改帧大小是可靠的。波斯语(Farsi)的32个字符被分为8个不同的类,这些字符彼此非常相似。波斯语/阿拉伯语中有十个数字,但是由于伊朗的邮政编码中没有使用其中的两个,因此数字仅需要八类。根据实验结果,从不同文化背景和不同年龄的人群收集的测试集上,数字和字符的分类率分别为91.37%和87.26%。

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