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An Inverse Halftoning Algorithms Based on Neural Networks and Atomic Functions

机译:基于神经网络和原子函数的逆半色调算法

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Halftoning and inverse halftoning algorithms are very important image processing tools, widely used in the development of digital printers, scanners, steganography and image authentication systems. Because such applications require to obtain high quality gray scale images from its halftone versions, the development of efficient inverse halftoning algorithms, that be able to provide gray scale images with Peak Signal to Noise Ratio (PSNR) higher than 25, have been research topic during the last several years. Although a PSNR of about 25dB may be enough for several applications, exist several other that require higher image quality. To reduce this problem, this paper proposes inverse halftoning algorithms based on Atomic Function and multi-layer perceptron neural network which provides gray scale images with PSNRs higher than 30dB independently of the method used to generate the halftone image.
机译:半色调和逆半色调算法是非常重要的图像处理工具,广泛用于开发数字打印机,扫描仪,隐写术和图像认证系统。由于此类应用需要从其半色调版本中获取高质量的灰度图像,因此,高效的反半色调算法的开发已能够在其峰值信噪比(PSNR)高于25的情况下提供灰度图像。最近几年。尽管大约25dB的PSNR对于几种应用可能已经足够,但是存在其他几种需要更高图像质量的应用。为了减轻这个问题,本文提出了一种基于原子函数和多层感知器神经网络的逆半色调算法,该算法提供的PSNR高于30dB的灰度图像与生成半色调图像的方法无关。

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