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Derin Öğrenme ile Görüntülerde Gürültü Azaltma Üzerine Kapsamlı Bir İnceleme

Yıl 2022, Cilt: 34 Sayı: 1, 65 - 90, 30.03.2022
https://doi.org/10.7240/jeps.938188

Öz

Günlük hayatımızda ve bilimsel araştırmalarda gerçeğe yakın ve gürültüsüz görüntülere olan ihtiyaç artmaktadır. Ancak görüntüler, gürültü ile bozulmakta ve bu da görsel görüntü kalitesinin düşmesine neden olmaktadır. Bu nedenle, görüntü özelliklerini kaybetmeden gürültüyü azaltmak için çalışmalar yapılmaktadır. Şimdiye kadar, gürültüyü azaltmak için çeşitli yöntemler önerilmiş olup, her yöntemin farklı avantajları bulunmaktadır. Bu makalede, alanında en iyi sonucu elde eden yöntemler hakkında bilgi verilerek, video ve sabit görüntülerinde gürültü azaltma alanında yapılan geleneksel gürültü giderme yöntemleri ve derin öğrenme yöntemlerine ait çalışmalar özetlenip, elde edilen sonuçlar birbirleriyle karşılaştırılmaktadır. Yapılan araştırmalar deneylerin toplamsal beyaz Gauss gürültüsü durumuna odaklandığını göstermektedir. Görüntülerde gürültü giderme aşamasında zaman içerisinde geleneksel gürültü giderme yöntemleri, makine öğrenmesi yöntemleri, derin öğrenme yöntemleri ve diğer matematiksel yöntemler kullanılmış olup, derin öğrenme yöntemleri daha başarılı sonuçlar elde etmektedir. Ancak elde edilen verilere göre orijinal görüntü çiftlerine sahip olmadan modelin eğitilmesi konusunda çalışmaların yetersiz olduğu ve değişik gürültü seviyelerinde tek bir yöntemin başarılı olamadığı görülmüştür. İleride yapılacak çalışmalarda gerçek hayattaki görüntülerde var olan gürültülerin nasıl giderileceği konusuna daha detaylı odaklanılması gerektiği görülmektedir.

Kaynakça

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A Comprehensive Review of Image Denoising With Deep Learning

Yıl 2022, Cilt: 34 Sayı: 1, 65 - 90, 30.03.2022
https://doi.org/10.7240/jeps.938188

Öz

In daily life and scientific searches, the need for real-like and denoised images is increasing. But images are distorted by noise, resulting in lower visual image quality. For this reason, noise removal studies are carried out on images to increase the quality. Until now, various methods have been proposed to decrease noise, each technique has different advantages. This paper gives information about the methods that achieve the best results in their field and summarizes the studies about traditional denoising and deep learning based denoising methods in the field of noise reduction in video and images and compares the studies with each other. Researches show that experiments focus on the case of additive white Gaussian noise. Traditional noise removal methods, machine learning methods, deep learning methods and other mathematical methods have been used in image denoising problem over time, and deep learning methods achieve more successful results. However, according to the obtained data, it has been seen that the studies on training the model without having the original image pairs were insufficient and a single method could not be successful at different noise levels. In future studies, it is necessary to focus on how to remove the noise in real-life images.

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  • Tian, C., Xu, Y., Fei, L., Wang, J., Wen, J., Luo, N. (2019). Enhanced cnn for image denoising, CAAI Transactions on Intelligence Technology, 4(1), 17–23.
  • Tian, C., Xu, Y., Li, Z., Zuo, W., Fei, L., Liu, H. (2020). Attention-guided cnn for image denoising, Neural Networks, 124, 117-129.
  • Zoran, D., Weiss, Y. (2011). From learning models of natural image patches to whole image restoration, IEEE International Conference on Computer Vision, 6-13 Kasım, Barcelona, 479–486.
  • Schmidt, U., Roth, S. (2014). Shrinkage fields for effective image restoration, IEEE Conference on Computer Vision and Pattern Recognition, 24-27 Haziran, Columbus, 2774–2781.
  • Aljadaany, R., Pal, D. K., Savvides, M. (2019). Proximal splitting networks for image restoration, International Conference on Image Analysis and Recognition, Springer, 3-17.
  • Zhang, K., Zuo, W., Gu, S., Zhang, L. (2017). Learning deep cnn denoiser prior for image restoration, IEEE Conference on Computer Vision and Pattern Recognition, 21-27 Haziran, Honolulu, 3929–3938.
  • Bengio, Y. (2009). Learning deep architectures for AI, Foundations and Trends in Machine Learning, 2(1), 1–127.
  • Patilab, S., Naik, G., Pai, R., Gad, R. (2018). Stacked Autoencoder for classification of glioma grade III and grade IV, Biomedical Signal Processing and Control, Elsevier, 46, 67-75.
  • Vincent, P., Larochelle, H., Bengio, Y., Manzagol, P. (2008). Extracting and Composing Robust Features with Denoising Autoencoders, 25th International Conference on Machine Learning, Haziran, Helsinki, Finland, 1096–1103.
  • Chinner, H. (2015). Denoising AutoEncoders, http://www.rubylab.io/2015/04/28/denoising-autoencoder-tutorial/, (01.11.2020).
  • Harish, H. (2019). Denoising AutoEncoders, https://medium.com/@harishr2301/denoising-autoencoders-996e866e5cd0, (01.11.2020).
  • Liu, G., Bao, H., Han, B. (2018). A Stacked Autoencoder-Based Deep Neural Network for Achieving Gearbox Fault Diagnosis, Mathematical Problems in Engineering, DOI: 10.1155/2018/5105709.
  • Jozdani, S., Johnson, B., Chen, D. (2019). Comparing Deep Neural Networks, Ensemble Classifiers, and Support Vector Machine Algorithms for Object-Based Urban Land Use/Land Cover Classification, Remote Sens, 11(14), 1713s.
  • Ng, A. (2018), Sparse autoencoder, CS294A Lecture notes, https://web.stanford.edu/class/cs294a/sparseAutoencoder_2011new.pdf, (07.04.2021).
  • Kingma, D., Welling, M. (2019). An Introduction to Variational Autoencoders, Foundations and Trends in Machine Learning, 12(2019), 307-392.
  • Im D., Im, J., Ahn, S., Memisevic, R., Bengio, Y. (2017), Denoising Criterion for Variational Auto-Encoding Framework, AAAI Publications, Thirty-First AAAI Conference on Artificial Intelligence, 2059-2065.
  • Creswell, A., Bharath, A. A. (2018). Denoising Adversarial Autoencoders, arXiv:1703.01220v4.
  • Chena, X., Songa, L., Yanga, X. (2016). Deep RNNs for Video Denoising, Applications of Digital Image Processing, SPIE vol 9971.
  • Antczak, K. (2018). Deep Recurrent Neural Networks for ECG Signal Denoising, 9(1), arXiv:1807.11551, 135s.
  • Rajeev, R., Samath, J., Karthikeyan, N. (2019). An Intelligent Recurrent Neural Network with Long Short-Term Memory (LSTM) BASED Batch Normalization for Medical Image Denoising, Journal of Medical Systems, Springer Science, 43(8), 234s.
  • Cho, K. (2013). Boltzmann Machines for Image Denoising, Artificial Neural Networks and Machine Learning – ICANN, Springer, 10-13 Eylül, Sofia, 611-618.
  • Hinton, G. E., Salakhutdinov. R. R. (2006). Reducing the Dimensionality of Data with Neural Networks, Science, 313(5786), 504–507.
  • Keyvanrad, M., Pezeshki, M., Homayounpour, M. (2013), Deep Belief Networks for Image Denoising, arXiv:1312.6158.
  • Wang, C., Zhou, S. K., Cheng, Z., (2020). First image then video: A two-stage network for spatiotemporal video denoising, arXiv:2001.00346.
  • Sheeba, M. C., Seldev C.D. C. (2019). A review on video denoising methods, 2019 International Conference on Recent Advances in Energy-efficient Computing and Communication (ICRAECC), 1-6.
  • Arias, P., Morel, J. M. (2018). Video Denoising via Empirical Bayesian Estimation of Space-Time Patches, Journal of Mathematical Imaging and Vision, 60(1). 70–93.
  • Buades, A., Lisani, J. (2016). Patch-Based Video Denoising With Optical Flow Estimation, IEEE Trans. IP, 25(6), 2573–2586.
  • Tassano, M., Delon, J., Veit, T. (2019). Dvdnet: A fast network for deep video denoising, International Conference on Image Processing (ICIP), IEEE, 22-25 Eylül, Taipei, 1805–1809.
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  • Chen, H., Jin, Y., Xu, K., Chen, Y., Zhu, C. (2021). Multiframe-to-Multiframe Network for Video Denoising, IEEE Transactions on Multimedia, DOI: 10.1109/TMM.2021.3077140.
  • Zhang, X., Yang, Y., Lin, L. (2018). Edge-aware image denoising algorithm, Journal of Algorithms & Computational Technology, Volume 13, 1–10.
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  • Yeşiloğlu, A., Ekşioğlu, E. M. (2016). Seyrek İşaret İşlemede Sınıflandırma Uygulamaları ve Çekirdek Tabanlı Yaklaşımlar, 24.Sinyal İşleme ve İletişim Uygulamaları Kurultayı, Zonguldak, 1157-1160.
  • Erdogan, H. T., Erdem, E., Erdem, A. (2013). Alan Kovaryansları İçin Grup Seyrekliğine Dayalı Seyrek Kodlama, 21. IEEE Sinyal İşleme ve İletişim Uygulamaları Kurultayı, Girne, K.K.T.C., 1-3.
  • Andrearczyk, V., Whelan, P. F. (2016). Using Filter Banks in Convolutional Neural Networks for Texture Classification, arXiv:1601.02919.
  • Eslahi, N., Aghagolzadeh, Q. (2016). Compressive sensing image restoration using adaptive curvelet thresholding and nonlocal sparse regularization, IEEE Trans. Image Process., 25(7), 3126-3140.
  • Lucas, A., Iliadis, M., Molina, R., Katsaggelos, A. K. (2018). Using deep neural networks for inverse in imaging: beyond analytical methods, IEEE Signal Processing Magazine, Ocak 2018, 35(1), 20-36.
  • Zhang, Y., Xiao, J., Peng, J., Zong, X. (2018). Kernel Wiener Filtering Model with Low-Rank Approximation for Image Denoising, Information Sciences.
  • Jain, V., Seung, H. (2009). Natural Image Denoising with Convolutional Networks, Advances in Neural Information Processing Systems, 769–776.
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  • Girdher, A. Goyal, B. Dogra, A. Dhindsa, A. Agrawal, S. (2019). Image Denoising: Issues and Challenges, Proceedings of International Conference on Advancements in Computing & Management (ICACM).
  • Gu, S., Timofte, R. (2019). A Brief Review of Image Denoising Algorithms and Beyond, Inpainting and Denoising Challenges, The Springer Series on Challenges in Machine Learning, 1-21.
Toplam 159 adet kaynakça vardır.

Ayrıntılar

Birincil Dil Türkçe
Konular Mühendislik
Bölüm Derleme
Yazarlar

Ahmet Yapıcı 0000-0002-4274-1064

M. Ali Akcayol 0000-0002-6615-1237

Yayımlanma Tarihi 30 Mart 2022
Yayımlandığı Sayı Yıl 2022 Cilt: 34 Sayı: 1

Kaynak Göster

APA Yapıcı, A., & Akcayol, M. A. (2022). Derin Öğrenme ile Görüntülerde Gürültü Azaltma Üzerine Kapsamlı Bir İnceleme. International Journal of Advances in Engineering and Pure Sciences, 34(1), 65-90. https://doi.org/10.7240/jeps.938188
AMA Yapıcı A, Akcayol MA. Derin Öğrenme ile Görüntülerde Gürültü Azaltma Üzerine Kapsamlı Bir İnceleme. JEPS. Mart 2022;34(1):65-90. doi:10.7240/jeps.938188
Chicago Yapıcı, Ahmet, ve M. Ali Akcayol. “Derin Öğrenme Ile Görüntülerde Gürültü Azaltma Üzerine Kapsamlı Bir İnceleme”. International Journal of Advances in Engineering and Pure Sciences 34, sy. 1 (Mart 2022): 65-90. https://doi.org/10.7240/jeps.938188.
EndNote Yapıcı A, Akcayol MA (01 Mart 2022) Derin Öğrenme ile Görüntülerde Gürültü Azaltma Üzerine Kapsamlı Bir İnceleme. International Journal of Advances in Engineering and Pure Sciences 34 1 65–90.
IEEE A. Yapıcı ve M. A. Akcayol, “Derin Öğrenme ile Görüntülerde Gürültü Azaltma Üzerine Kapsamlı Bir İnceleme”, JEPS, c. 34, sy. 1, ss. 65–90, 2022, doi: 10.7240/jeps.938188.
ISNAD Yapıcı, Ahmet - Akcayol, M. Ali. “Derin Öğrenme Ile Görüntülerde Gürültü Azaltma Üzerine Kapsamlı Bir İnceleme”. International Journal of Advances in Engineering and Pure Sciences 34/1 (Mart 2022), 65-90. https://doi.org/10.7240/jeps.938188.
JAMA Yapıcı A, Akcayol MA. Derin Öğrenme ile Görüntülerde Gürültü Azaltma Üzerine Kapsamlı Bir İnceleme. JEPS. 2022;34:65–90.
MLA Yapıcı, Ahmet ve M. Ali Akcayol. “Derin Öğrenme Ile Görüntülerde Gürültü Azaltma Üzerine Kapsamlı Bir İnceleme”. International Journal of Advances in Engineering and Pure Sciences, c. 34, sy. 1, 2022, ss. 65-90, doi:10.7240/jeps.938188.
Vancouver Yapıcı A, Akcayol MA. Derin Öğrenme ile Görüntülerde Gürültü Azaltma Üzerine Kapsamlı Bir İnceleme. JEPS. 2022;34(1):65-90.

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