利用修正的多分辨率卷积神经网络降低图像中的准/周期性噪声,用于三维物体重构并与其他卷积神经网络模型进行比较

Osmar Antonio Espinosa-Bernal, J. Pedraza-Ortega, M. Aceves-Fernández, Victor Manuel Martínez-Suárez, S. Tovar-Arriaga, J. Ramos-Arreguín, E. Gorrostieta-Hurtado
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引用次数: 0

摘要

由于需要从真实物体中获得能够再现三维物体的系统,对真实物体的数字建模是一个需求量很大的领域。为此,人们提出了几种在计算机中为物体建模的技术,其中研究最多的是边缘轮廓测量技术。然而,这种技术的缺点是会产生摩尔纹噪声,最终影响最终三维重建物体的精度。为了获得尽可能接近原始物体的三维物体,人们开发了不同的技术来减弱准/周期噪声,即应用卷积神经网络(CNNs),这种方法最近被应用于修复、减少和/或消除图像中的噪声,作为生成三维物体的预处理。为此,本研究利用改进的 CNN 多分辨率网络,减弱通过条纹轮廓测量技术获取的图像中的准/周期噪声。获得的结果与原始 CNN 多分辨率网络、UNet 网络和 FCN32s 网络进行了比较,并使用图像均方误差 E (IMMS)、峰值信噪比 (PSNR)、结构相似性指数 (SSIM) 和轮廓 (MSE) 指标进行了定量比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quasi/Periodic Noise Reduction in Images Using Modified Multiresolution-Convolutional Neural Networks for 3D Object Reconstructions and Comparison with Other Convolutional Neural Network Models
The modeling of real objects digitally is an area that has generated a high demand due to the need to obtain systems that are able to reproduce 3D objects from real objects. To this end, several techniques have been proposed to model objects in a computer, with the fringe profilometry technique being the one that has been most researched. However, this technique has the disadvantage of generating Moire noise that ends up affecting the accuracy of the final 3D reconstructed object. In order to try to obtain 3D objects as close as possible to the original object, different techniques have been developed to attenuate the quasi/periodic noise, namely the application of convolutional neural networks (CNNs), a method that has been recently applied for restoration and reduction and/or elimination of noise in images applied as a pre-processing in the generation of 3D objects. For this purpose, this work is carried out to attenuate the quasi/periodic noise in images acquired by the fringe profilometry technique, using a modified CNN-Multiresolution network. The results obtained are compared with the original CNN-Multiresolution network, the UNet network, and the FCN32s network and a quantitative comparison is made using the Image Mean Square Error E (IMMS), Peak Signal-to-Noise Ratio (PSNR), Structural Similarity Index (SSIM), and Profile (MSE) metrics.
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