Accesso libero

Research on Deep Learning-based Image Processing and Classification Techniques for Complex Networks

,  e   
17 mar 2025
INFORMAZIONI SU QUESTO ARTICOLO

Cita
Scarica la copertina

Petrou, M. M., & Kamata, S. I. (2021). Image processing: dealing with texture. John Wiley & Sons. Petrou M. M. Kamata S. I. ( 2021 ). Image processing: dealing with texture . John Wiley & Sons . Search in Google Scholar

Nixon, M., & Aguado, A. (2019). Feature extraction and image processing for computer vision. Academic press. Nixon M. Aguado A. ( 2019 ). Feature extraction and image processing for computer vision . Academic press . Search in Google Scholar

Burger, W., & Burge, M. J. (2022). Digital image processing: An algorithmic introduction. Springer Nature. Burger W. Burge M. J. ( 2022 ). Digital image processing: An algorithmic introduction . Springer Nature . Search in Google Scholar

Shinde, P. P., & Shah, S. (2018, August). A review of machine learning and deep learning applications. In 2018 Fourth international conference on computing communication control and automation (ICCUBEA) (pp. 1-6). IEEE. Shinde P. P. Shah S. ( 2018 , August ). A review of machine learning and deep learning applications . In 2018 Fourth international conference on computing communication control and automation (ICCUBEA) (pp. 1 - 6 ). IEEE . Search in Google Scholar

Tian, C., Fei, L., Zheng, W., Xu, Y., Zuo, W., & Lin, C. W. (2020). Deep learning on image denoising: An overview. Neural Networks, 131, 251-275. Tian C. Fei L. Zheng W. Xu Y. Zuo W. Lin C. W. ( 2020 ). Deep learning on image denoising: An overview . Neural Networks , 131 , 251 - 275 . Search in Google Scholar

Wu, J., Sheng, V. S., Zhang, J., Li, H., Dadakova, T., Swisher, C. L., ... & Zhao, P. (2020). Multi-label active learning algorithms for image classification: Overview and future promise. ACM Computing Surveys (CSUR), 53(2), 1-35. Wu J. Sheng V. S. Zhang J. Li H. Dadakova T. Swisher C. L. Zhao P. ( 2020 ). Multi-label active learning algorithms for image classification: Overview and future promise . ACM Computing Surveys (CSUR) , 53 ( 2 ), 1 - 35 . Search in Google Scholar

Li, S., Song, W., Fang, L., Chen, Y., Ghamisi, P., & Benediktsson, J. A. (2019). Deep learning for hyperspectral image classification: An overview. IEEE Transactions on Geoscience and Remote Sensing, 57(9), 6690-6709. Li S. Song W. Fang L. Chen Y. Ghamisi P. Benediktsson J. A. ( 2019 ). Deep learning for hyperspectral image classification: An overview . IEEE Transactions on Geoscience and Remote Sensing , 57 ( 9 ), 6690 - 6709 . Search in Google Scholar

Zhang, X., Zhai, D., Li, T., Zhou, Y., & Lin, Y. (2023). Image inpainting based on deep learning: A review. Information Fusion, 90, 74-94. Zhang X. Zhai D. Li T. Zhou Y. Lin Y. ( 2023 ). Image inpainting based on deep learning: A review . Information Fusion , 90 , 74 - 94 . Search in Google Scholar

Srivastava, S., Divekar, A. V., Anilkumar, C., Naik, I., Kulkarni, V., & Pattabiraman, V. (2021). Comparative analysis of deep learning image detection algorithms. Journal of Big data, 8(1), 66. Srivastava S. Divekar A. V. Anilkumar C. Naik I. Kulkarni V. Pattabiraman V. ( 2021 ). Comparative analysis of deep learning image detection algorithms . Journal of Big data , 8 ( 1 ), 66 . Search in Google Scholar

Liu, X., Song, L., Liu, S., & Zhang, Y. (2021). A review of deep-learning-based medical image segmentation methods. Sustainability, 13(3), 1224. Liu X. Song L. Liu S. Zhang Y. ( 2021 ). A review of deep-learning-based medical image segmentation methods . Sustainability , 13 ( 3 ), 1224 . Search in Google Scholar

Liu, Y., Pu, H., & Sun, D. W. (2021). Efficient extraction of deep image features using convolutional neural network (CNN) for applications in detecting and analysing complex food matrices. Trends in Food Science & Technology, 113, 193-204. Liu Y. Pu H. Sun D. W. ( 2021 ). Efficient extraction of deep image features using convolutional neural network (CNN) for applications in detecting and analysing complex food matrices . Trends in Food Science & Technology , 113 , 193 - 204 . Search in Google Scholar

Liu, Y., Chen, X., Wang, Z., Wang, Z. J., Ward, R. K., & Wang, X. (2018). Deep learning for pixel-level image fusion: Recent advances and future prospects. Information fusion, 42, 158-173. Liu Y. Chen X. Wang Z. Wang Z. J. Ward R. K. Wang X. ( 2018 ). Deep learning for pixel-level image fusion: Recent advances and future prospects . Information fusion , 42 , 158 - 173 . Search in Google Scholar

Wang, R., Lei, T., Cui, R., Zhang, B., Meng, H., & Nandi, A. K. (2022). Medical image segmentation using deep learning: A survey. IET image processing, 16(5), 1243-1267. Wang R. Lei T. Cui R. Zhang B. Meng H. Nandi A. K. ( 2022 ). Medical image segmentation using deep learning: A survey . IET image processing , 16 ( 5 ), 1243 - 1267 . Search in Google Scholar

Isensee, F., Jaeger, P. F., Kohl, S. A., Petersen, J., & Maier-Hein, K. H. (2021). nnU-Net: a self-configuring method for deep learning-based biomedical image segmentation. Nature methods, 18(2), 203-211. Isensee F. Jaeger P. F. Kohl S. A. Petersen J. Maier-Hein K. H. ( 2021 ). nnU-Net: a self-configuring method for deep learning-based biomedical image segmentation . Nature methods , 18 ( 2 ), 203 - 211 . Search in Google Scholar

Lucas, A., Iliadis, M., Molina, R., & Katsaggelos, A. K. (2018). Using deep neural networks for inverse problems in imaging: beyond analytical methods. IEEE Signal Processing Magazine, 35(1), 20-36. Lucas A. Iliadis M. Molina R. Katsaggelos A. K. ( 2018 ). Using deep neural networks for inverse problems in imaging: beyond analytical methods . IEEE Signal Processing Magazine , 35 ( 1 ), 20 - 36 . Search in Google Scholar

Yang, X., Ye, Y., Li, X., Lau, R. Y., Zhang, X., & Huang, X. (2018). Hyperspectral image classification with deep learning models. IEEE Transactions on Geoscience and Remote Sensing, 56(9), 5408-5423. Yang X. Ye Y. Li X. Lau R. Y. Zhang X. Huang X. ( 2018 ). Hyperspectral image classification with deep learning models . IEEE Transactions on Geoscience and Remote Sensing , 56 ( 9 ), 5408 - 5423 . Search in Google Scholar

Wang, P., Fan, E., & Wang, P. (2021). Comparative analysis of image classification algorithms based on traditional machine learning and deep learning. Pattern recognition letters, 141, 61-67. Wang P. Fan E. Wang P. ( 2021 ). Comparative analysis of image classification algorithms based on traditional machine learning and deep learning . Pattern recognition letters , 141 , 61 - 67 . Search in Google Scholar

Krishna, S. T., & Kalluri, H. K. (2019). Deep learning and transfer learning approaches for image classification. International Journal of Recent Technology and Engineering (IJRTE), 7(5S4), 427-432. Krishna S. T. Kalluri H. K. ( 2019 ). Deep learning and transfer learning approaches for image classification . International Journal of Recent Technology and Engineering (IJRTE) , 7 ( 5S4 ), 427 - 432 . Search in Google Scholar

Wang, J., & Perez, L. (2017). The effectiveness of data augmentation in image classification using deep learning. Convolutional Neural Networks Vis. Recognit, 11(2017), 1-8. Wang J. Perez L. ( 2017 ). The effectiveness of data augmentation in image classification using deep learning . Convolutional Neural Networks Vis. Recognit , 11 ( 2017 ), 1 - 8 . Search in Google Scholar

Rawat, W., & Wang, Z. (2017). Deep convolutional neural networks for image classification: A comprehensive review. Neural computation, 29(9), 2352-2449. Rawat W. Wang Z. ( 2017 ). Deep convolutional neural networks for image classification: A comprehensive review . Neural computation , 29 ( 9 ), 2352 - 2449 . Search in Google Scholar

Hamida, A. B., Benoit, A., Lambert, P., & Amar, C. B. (2018). 3-D deep learning approach for remote sensing image classification. IEEE Transactions on geoscience and remote sensing, 56(8), 4420-4434. Hamida A. B. Benoit A. Lambert P. Amar C. B. ( 2018 ). 3-D deep learning approach for remote sensing image classification . IEEE Transactions on geoscience and remote sensing , 56 ( 8 ), 4420 - 4434 . Search in Google Scholar

Guo, T., Dong, J., Li, H., & Gao, Y. (2017, March). Simple convolutional neural network on image classification. In 2017 IEEE 2nd International Conference on Big Data Analysis (ICBDA) (pp. 721-724). IEEE. Guo T. Dong J. Li H. Gao Y. ( 2017 , March ). Simple convolutional neural network on image classification . In 2017 IEEE 2nd International Conference on Big Data Analysis (ICBDA) (pp. 721 - 724 ). IEEE . Search in Google Scholar

Mikołajczyk, A., & Grochowski, M. (2018, May). Data augmentation for improving deep learning in image classification problem. In 2018 international interdisciplinary PhD workshop (IIPhDW) (pp. 117-122). IEEE. Mikołajczyk A. Grochowski M. ( 2018 , May ). Data augmentation for improving deep learning in image classification problem . In 2018 international interdisciplinary PhD workshop (IIPhDW) (pp. 117 - 122 ). IEEE . Search in Google Scholar

Anisha Chakravorty & Shounak Chakraborty. (2024). A novel semi-supervised approach for semantic segmentation of aerial remote sensing images under limited ground-truth availability. Signal, Image and Video Processing(prepublish),1-9. Chakravorty Anisha Chakraborty Shounak ( 2024 ). A novel semi-supervised approach for semantic segmentation of aerial remote sensing images under limited ground-truth availability . Signal, Image and Video Processing(prepublish) , 1 - 9 . Search in Google Scholar

Bo Zhang,Li Xu,Ke Hao Liu,Ru Yang,Mao Zhen Li & Xiao Yang Guo. (2025). Piecewise convolutional neural network relation extraction with self-attention mechanism. Pattern Recognition111083-111083. Zhang Bo Xu Li Liu Ke Hao Yang Ru Li Mao Zhen Guo Xiao Yang ( 2025 ). Piecewise convolutional neural network relation extraction with self-attention mechanism . Pattern Recognition 111083 - 111083 . Search in Google Scholar

Chandravardhan Singh Raghaw,Parth Shirish Bhore,Mohammad Zia Ur Rehman & Nagendra Kumar. (2024). An Explainable Contrastive-based Dilated Convolutional Network with Transformer for Pediatric Pneumonia Detection. Applied Soft Computing(PA),112258-112258. Raghaw Chandravardhan Singh Bhore Parth Shirish Rehman Mohammad Zia Ur Kumar Nagendra ( 2024 ). An Explainable Contrastive-based Dilated Convolutional Network with Transformer for Pediatric Pneumonia Detection . Applied Soft Computing(PA) , 112258 - 112258 . Search in Google Scholar

Lingua:
Inglese
Frequenza di pubblicazione:
1 volte all'anno
Argomenti della rivista:
Scienze biologiche, Scienze della vita, altro, Matematica, Matematica applicata, Matematica generale, Fisica, Fisica, altro