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False contour reduction using neural networks and adaptive bi-directional smoothing

机译:使用神经网络和自适应双向平滑减少虚假轮廓

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摘要

The larger display devices, the more noticeable artifacts such as false contours, block artifacts, and other types of noises. This paper proposes a false contour reduction algorithm using neural networks (NNs) and adaptive bidirectional smoothing. The proposed algorithm consists of two parts: false contour detection and reduction parts. In the false contour detection part, false contour candidate pixels are detected using the directional contrast features. The false contour reduction part is composed of two steps: NN processing and bi-directional filtering. In the first step, false contours are reduced by pixelwise processing using NNs. In the second step, bi-directional smoothing is applied to a neighboring region of the false contour. Computer simulations with several test images show the effectiveness of the proposed false contour reduction algorithm in terms of the visual quality of result images, edge maps detected by Sobel masks, the peak signal-to-noise ratio, the structural similarity, and the computation time.
机译:显示设备越大,伪影,假块和其他类型的噪声等伪影就越明显。本文提出了一种使用神经网络(NNs)和自适应双向平滑的伪轮廓减少算法。所提出的算法包括两部分:错误轮廓检测和归约部分。在伪轮廓检测部分中,使用方向对比度特征检测伪轮廓候选像素。伪轮廓减少部分由两个步骤组成:NN处理和双向滤波。第一步,通过使用NN进行逐像素处理来减少错误轮廓。在第二步中,将双向平滑应用于错误轮廓的相邻区域。用几张测试图像进​​行的计算机仿真显示,在结果图像的视觉质量,Sobel掩模检测到的边缘图,峰信噪比,结构相似性和计算时间方面,提出的伪轮廓线缩减算法是有效的。

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