Accès libre

Research on the application of CNN algorithm based on chaotic recursive diagonal model in medical image processing

À propos de cet article

Citez

Zhou, T., Lu, H., Hu, F., & Wang, H. (2021). A new robust adaptive fusion method for double-modality medical image pet/ct. BioMed Research International. Search in Google Scholar

Fatah, N., Ulwali, R. A., Alwally, H. A., & Physics, R. (2021). Ct&pet medical image fusion techniques based on statistical criteria. Solid State Technology. Search in Google Scholar

Dou, W. W., & Ji, Y. (2021). External financing and customer capital: a financial theory of markups. Management Science, 67(9), -. Search in Google Scholar

Abdulwahid, M. M., & Basil, N. (2021). Review on chaotic theory using dna encoding with image encryption. Informatica, 2(1), 14-19. Search in Google Scholar

Huang, X., Wei, Z., & Wen, F. (2021). Image processing technology in high frequency vibration direction and amplitude measurement. Journal of Intelligent and Fuzzy Systems(2), 1-8. Search in Google Scholar

Weiller, C., Reisert, M., Glauche, V., Musso, M., & Rijntjes, M. (2022). The dual-loop model for combining external and internalworlds in our brain. NeuroImage, 263, 119583. Search in Google Scholar

Wei, C., Chen, R., Xun, M., & Xin, Q. (2019). A novel fpga-based real-time 3d shape reconstruction system with potential applications in medical image processing and analysis. Basic & clinical pharmacology & toxicology.(S1), 125. Search in Google Scholar

Shao, Y., & Wang, S. (2019). Medical image processing and analysis method based on fuzzy mathematics. Basic & clinical pharmacology & toxicology.(S2), 125. Search in Google Scholar

Franchini, S., Gentile, A., Sorbello, F., Vassallo, G., & Vitabile, S. (2015). Conformalalu: a conformal geometric algebra coprocessor for medical image processing. Computers IEEE Transactions on, 64(4), 955-970. Search in Google Scholar

Krefting, D., Vossberg, M., & Tolxdorff, T. (2013). Simplified grid implementation of medical image processing algorithms using a workflow managment system. Clinical Anatomy, 26, 242-246. Search in Google Scholar

Zhang, X., Chen, Z., Gao, J., Huang, W., Li, P., & Zhang, J. (2022). A two-stage deep transfer learning model and its application for medical image processing in traditional chinese medicine. Knowledge-based systems(Mar.5), 239. Search in Google Scholar

Gulati, K. (2022). A novel machine-learning-based hybrid CNN model for tumor identification in medical image processing. Sustainability, 14. Search in Google Scholar

Gong, Y. Z. Y. (2021). Generative adversarial networks in medical image processing. Current pharmaceutical design, 27(15). Search in Google Scholar

aban ztürk a, B, R. A., & C, N. A. (2020). Variants of artificial bee colony algorithm and its applications in medical image processing. Applied Soft Computing, 97. Search in Google Scholar

Toshiba, K. K. (2017). Ultrasonic diagnostic apparatus, medical image processing apparatus, and medical image processing method. Journal of the Acoustical Society of America, 130(2), 1088. Search in Google Scholar

Sunitha, C., & Sathya, S. (2013). Analysis and visualization of medical image processing. Orvosi Hetilap, 105, 258-259. Search in Google Scholar

Yang, R., Yu, J., Yin, J., Liu, K., & Xu, S. (2022). A dense r-CNN multi-target instance segmentation model and its application in medical image processing. IET image processing(9), 16. Search in Google Scholar

An‐Di Yim, Corron, L., & Stull, K. (2021). A new tool for medical image processing in biological anthropology and anatomy research. The FASEB Journal, 35(S1), -. Search in Google Scholar

Alnazer, I., Bourdon, P., Urruty, T., Falou, O., & Fernandez-Maloigne, C. (2021). Recent advances in medical image processing for the evaluation of chronic kidney disease. Medical Image Analysis, 101960. Search in Google Scholar

Zhu, S., Wang, L., & Duan, S. (2016). Memristive pulse coupled neural network with applications in medical image processing. Neurocomputing, S0925231216313820. Search in Google Scholar

Song, T., Yu, X., Yu, S., Ren, Z., & Qu, Y. (2021). Feature extraction processing method of medical image fusion based on neural network algorithm. Complexity. Search in Google Scholar

Wang, L., Meng, Z., Sun, Y., Guo, L., & Zhou, M. (2015). Design and analysis of a novel chaotic diagonal recurrent neural network. Communications in Nonlinear Science & Numerical Simulation, 26(1-3), 11-23. Search in Google Scholar

Laje, Rodrigo, Buonomano, Dean, & V. (2013). Robust timing and motor patterns by taming chaos in recurrent neural networks. Nature Neuroscience. Search in Google Scholar

Zhang, B. Z. Y. (2017). The performance evaluation of diagonal recurrent neural network with different chaos neurons. Neural computing & applications, 28(7). Search in Google Scholar

Saeed, A., Li, C., Gan, Z., Xie, Y., & Liu, F. (2022). A simple approach for short-term wind speed interval prediction based on independently recurrent neural networks and error probability distribution. Energy, 238. Search in Google Scholar

Took, C. C., & Mandic, D. (2022). Weight sharing for lms algorithms: convolutional neural networks inspired multichannel adaptive filtering. Digital Signal Processing. Search in Google Scholar

Bredikhin, A. I. (2019). Training algorithms for convolutional neural networks. Yugra State University Bulletin, 15(1), 41-54. Search in Google Scholar

Dhou, K., & Cruzen, C. (2022). A creative chain coding technique for bi-level image compression inspired by the netlogo hiv agent-based modeling simulation. Journal of computational science(May), 61. Search in Google Scholar

Sekar, R., & Ravi, G. (2022). Taylor sun flower optimization-based compressive sensing for image compression and recovery. The Computer Journal. Search in Google Scholar

Luo, S., Fang, G., & Song, M. (2023). Deep semantic image compression via cooperative network pruning. Journal of Visual Communication and Image Representation. Search in Google Scholar

Szajna, A., Kostrzewski, M., Ciebiera, K., Stryjski, R., & Sciubba, E. (2021). Application of the deep cnn-based method in industrial system for wire marking identification. Energies(12). Search in Google Scholar

Cai, R., Li, J., Li, G., Tang, D., & Tan, Y. (2021). A review of the application of cnn-based computer vision in civil infrastructure maintenance. Springer Books. Search in Google Scholar

eISSN:
2444-8656
Langue:
Anglais
Périodicité:
Volume Open
Sujets de la revue:
Life Sciences, other, Mathematics, Applied Mathematics, General Mathematics, Physics