Video Denoising Using Convolutional and Deep Neural Networks
DOI:
https://doi.org/10.71229/7ajsgv18Keywords:
Gaussian Noise Model (GNM) , Salt-and-Pepper Noise (SPN) , video filtering (VF) , Ideal Low-Pass Filter (ILPF) , Idea High pass filter (HLPF)Abstract
Removal of noise from video files has become as one of the most important academic worries and especially with the growing reliance on video data in domains such as security, autonomous vehicles, and entertainment. Recent improvements in deep learning have lead to powerful neural network-based methods that go over traditional Denoising techniques. In this research, a number of deep learning algorithms were tested for video reduced noise on an array of video files. The results demonstrated the effectiveness of deep learning models in reducing noise artifacts, by on the mean square error (MSE) metric, which measures the difference between the original clean videos and the Denoise outputs.
The research included processing (4) video files Which includes a number of videos of different lengths, and the number of frames in this work has become 1,604.through both (convolutional neural network ((CNN)) and (deep neural network (DNN)) and the results showed the superiority of the (CNN) method over the (DNN) method through the results of the (4) deference experiment. The best experiment with minimum MSE was (, μ=0, =0.02) with (MSE DNN =0.02001410), the methods can be applied to other multimedia files (audio, image).
References
[1] Davy, Axel, et al. "A non-local CNN for video denoising." 2019 IEEE international conference on image processing (ICIP). IEEE, 2019.
[2] Ho, Man M., Jinjia Zhou, and Gang He. "RR-DnCNN v2. 0: enhanced restoration-reconstruction deep neural network for down-sampling-based video coding." IEEE Transactions on Image Processing 30 (2021): 1702-1715.
[3] Liu, Peng, et al. "Remote-sensing image denoising with multi-sourced information." IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing 12.2 (2019): 660-674.
[4] Rashid, Loay, Siddharth Roheda, and Amit Unde. "LLVD: LSTM-based Explicit Motion Modeling in Latent Space for Blind Video Denoising." arXiv preprint arXiv:2501.05744 (2025).
[5] Gonzalez, R. C., & Woods, R. E. (2018). Digital Image Processing (4th ed.). Pearson
[6] Xu, J., Zhang, L., & Zuo, W. (2022).Noisy Image Denoising Using Deep CNN With Batch Normalization and Skip Connections.Signal Processing: Image Communication, 97, 116548. https://doi.org/10.1016/j.image.2021.116548
[7] Birkfellner, Wolfgang. Applied medical image processing: a basic course. CRC Press, 2024.
[8] Gonzalez, R. C., & Woods, R. E. (2018). Digital Image Processing (4th ed.). Pearson..
[9] Tassano, M., Delon, J., & Veit, T. (2019).
FastDVDnet: Towards Real-Time Deep Video Denoising Without Flow Estimation.
IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR).
[10] Tassano, M., Delon, J., & Veit, T. (2020).
FastDVDnet: Towards Real-Time Deep Video Denoising Without Flow Estimation.
Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), 2020
[11] Yoon, Sunjae, et al. "FRAG: Frequency Adapting Group for Diffusion Video Editing." arXiv preprint arXiv:2406.06044 (2024).

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