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G-RRDB:一种用于霉变小麦的有效太赫兹图像去噪模型。

G-RRDB: An Effective THz Image-Denoising Model for Moldy Wheat.

作者信息

Jiang Yuying, Chen Xinyu, Ge Hongyi, Jiang Mengdie, Wen Xixi

机构信息

Key Laboratory of Grain Information Processing & Control, Ministry of Education, Henan University of Technology, Zhengzhou 450001, China.

Henan Provincial Key Laboratory of Grain Photoelectric Detection and Control, Zhengzhou 450001, China.

出版信息

Foods. 2023 Jul 25;12(15):2819. doi: 10.3390/foods12152819.

Abstract

In order to solve the problem of large image noise and unremarkable features caused by factors such as fluctuations in the power of a light source during the terahertz image acquisition of wheat, this paper proposes a THz image-denoising model called G-RRDB. Firstly, a module called Ghost-LKA is proposed by combining a large kernel convolutional attention mechanism module with a Ghost convolutional structure, which improves the characteristics of the network to acquire a global sensory field. Secondly, by integrating a spatial attention mechanism with channel attention, an attention module called DAB is proposed to enhance the network's attention to important features. Thirdly, the Ghost-LKA module and DAB module are combined with the baseline model, thus proposing the dense residual denoising network G-RRDB. Compared with traditional denoising networks, both the PSNR and SSIM are improved. The prediction accuracy of G-RRDB is verified through the classification of the VGG16 network, achieving a rate of 92.8%, which represents an improvement of 1.7% and 0.2% compared to the denoised images obtained from the baseline model and the combined baseline model with the DAB module, respectively. The experimental results demonstrate that G-RRDB, a THz image-denoising model based on dense residual structure for moldy wheat, exhibits excellent denoising performance.

摘要

为了解决小麦太赫兹图像采集过程中光源功率波动等因素导致的图像噪声大、特征不显著的问题,本文提出了一种名为G-RRDB的太赫兹图像去噪模型。首先,将大内核卷积注意力机制模块与Ghost卷积结构相结合,提出了Ghost-LKA模块,改善了网络获取全局感知域的特性。其次,通过将空间注意力机制与通道注意力相结合,提出了一种名为DAB的注意力模块,增强网络对重要特征的注意力。第三,将Ghost-LKA模块和DAB模块与基线模型相结合,从而提出了密集残差去噪网络G-RRDB。与传统去噪网络相比,PSNR和SSIM均有所提高。通过VGG16网络分类验证了G-RRDB的预测准确率,达到了92.8%,分别比从基线模型和结合DAB模块的组合基线模型获得的去噪图像提高了1.7%和0.2%。实验结果表明,基于密集残差结构的发霉小麦太赫兹图像去噪模型G-RRDB具有优异的去噪性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a8f1/10417343/f3049c939fd2/foods-12-02819-g010.jpg

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