S Soniya, C Sriharipriya K
School of Electronics Engineering, Vellore Institute of Technology, Vellore, Tamil Nadu, India.
PeerJ Comput Sci. 2025 Jan 16;11:e2449. doi: 10.7717/peerj-cs.2449. eCollection 2025.
Image denoising is a complex task that always yields an approximated version of the clean image. Unfortunately, the existing works have focussed only on the peak signal to noise ratio (PSNR) metric and have shown no attention to edge features in a reconstructed image. Although fully convolution neural networks (CNN) are capable of removing the noise using kernel filters and automatic extraction of features, it has failed to reconstruct the images for higher values of noise standard deviation. Additionally, deep learning models require a huge database to learn better from the inputs. This, in turn, increases the computational complexity and memory requirement. Therefore, we propose the Median Noise Residue U-Net (MNRU-Net) with a limited training database without involving image augmentation. In the proposed work, the learning capability of the traditional U-Net model was increased by adding hand-crafted features in the input layers of the U-Net. Further, an approximate version of the noise estimated from the median filter and the gradient information of the image were used to improve the performance of U-Net. Later, the performance of MNRU-Net was evaluated based on PSNR, structural similarity, and figure of merit for different noise standard deviations of 15, 25, and 50 respectively. It is witnessed that the results gained from the suggested work are better than the results yielded by complex denoising models such as the robust deformed denoising CNN (RDDCNN). This work emphasizes that the skip connections along with the hand-crafted features could improve the performance at higher noise levels by using this simple architecture. In addition, the model was found to be less expensive, with low computational complexity.
图像去噪是一项复杂的任务,总是会生成干净图像的近似版本。不幸的是,现有工作仅关注峰值信噪比(PSNR)指标,而对重建图像中的边缘特征未予以关注。尽管全卷积神经网络(CNN)能够使用内核滤波器去除噪声并自动提取特征,但对于较高噪声标准差的值,它未能重建图像。此外,深度学习模型需要一个庞大的数据库才能从输入中更好地学习。这反过来又增加了计算复杂度和内存需求。因此,我们提出了一种在有限训练数据库下且不涉及图像增强的中值噪声残差U-Net(MNRU-Net)。在所提出的工作中,通过在U-Net的输入层添加手工特征来提高传统U-Net模型的学习能力。此外,使用从中值滤波器估计的噪声近似版本和图像的梯度信息来提高U-Net的性能。随后,分别基于PSNR、结构相似性和品质因数对MNRU-Net在15、25和50的不同噪声标准差下的性能进行了评估。可以看出,所建议工作获得的结果优于诸如鲁棒变形去噪CNN(RDDCNN)等复杂去噪模型产生的结果。这项工作强调,通过使用这种简单的架构,带有手工特征的跳跃连接可以在更高噪声水平下提高性能。此外,发现该模型成本较低,计算复杂度也较低。