Removal of Gaussian White Noises from the image by probability map prediction based Deep learning approach

S. Shakya
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Abstract

Deep learning methods have gained an increasing research interest, especially in the field of image denoising. Although there are significant differences between the different types of deep learning techniques used for natural image denoising, it includes significant process and procedure differences between them. To be specific, discriminative learning based on deep learning convolutional neural network (CNN) may effectively solve the problem of Gaussian noise. Deep learning based optimization models are useful in predicting the true noise level. However, no relevant research has attempted to summarize the different deep learning approaches for performing image denoising in one location. It has been suggested to build the proposed framework in parallel with the previously trained CNN to enhance the training speed and accuracy in denoising the Gaussian White Noise (GWN). In the proposed architecture, ground truth maps are created by combining the additional patches of input with original pictures to create ground truth maps. Furthermore, by changing kernel weights for forecasting probability maps, the loss function may be reduced to its smallest value. Besides, it is efficient in terms of processing time with less sparsity while enlarging the objects present in the images. As well as in conventional methods, various performance measures such as PSNR, MSE, and SSIM are computed and compared with one another.
基于概率图预测的深度学习方法去除图像中的高斯白噪声
深度学习方法已经引起了越来越多的研究兴趣,特别是在图像去噪领域。尽管用于自然图像去噪的不同类型的深度学习技术之间存在显着差异,但它们之间存在显着的过程和程序差异。具体来说,基于深度学习卷积神经网络(CNN)的判别学习可以有效地解决高斯噪声问题。基于深度学习的优化模型在预测真实噪声水平方面很有用。然而,没有相关研究试图总结在一个位置执行图像去噪的不同深度学习方法。建议将所提出的框架与之前训练好的CNN并行构建,以提高高斯白噪声(GWN)去噪的训练速度和准确性。在提出的体系结构中,通过将输入的附加patch与原始图片相结合来创建地面真值图。此外,通过改变预测概率图的核权值,可以将损失函数减小到最小值。此外,在放大图像中存在的物体时,它在处理时间方面效率高,稀疏度低。与传统方法一样,计算各种性能指标,如PSNR、MSE和SSIM,并相互比较。
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