Otwarty dostęp

Mathematical model of transforming image elements to structured data based on BP neural network


Zacytuj

[1] Jin, B., Ye, P., Zhang, X., Song, W., & Li, S. Object-oriented method combined with deep convolutional neural networks for land-use-type classification of remote sensing images. Journal of the Indian Society of Remote Sensing.,2019. 47(6): 951-965. JinB. YeP. ZhangX. SongW. LiS. Object-oriented method combined with deep convolutional neural networks for land-use-type classification of remote sensing images Journal of the Indian Society of Remote Sensing 2019 47 6 951 965 Search in Google Scholar

[2] Zhao, H. H., Rosin, P. L., Lai, Y. K., & Wang, Y. N. Automatic semantic style transfer using deep convolutional neural networks and soft masks. The Visual Computer.,2020. 36(7): 1307-1324. ZhaoH. H. RosinP. L. LaiY. K. WangY. N. Automatic semantic style transfer using deep convolutional neural networks and soft masks The Visual Computer 2020 36 7 1307 1324 Search in Google Scholar

[3] Zhang, Q., Yu, H., Barbiero, M., Wang, B., & Gu, M. Artificial neural networks enabled by nanophotonics. Light: Science & Applications.,2019. 8(1): 1-14. ZhangQ. YuH. BarbieroM. WangB. GuM. Artificial neural networks enabled by nanophotonics Light: Science & Applications 2019 8 1 1 14 Search in Google Scholar

[4] Hyun, D., Brickson, L. L., Looby, K. T., & Dahl, J. J. Beamforming and speckle reduction using neural networks. IEEE transactions on ultrasonics, ferroelectrics, and frequency control.,2019. 66(5): 898-910. HyunD. BricksonL. L. LoobyK. T. DahlJ. J. Beamforming and speckle reduction using neural networks IEEE transactions on ultrasonics ferroelectrics and frequency control 2019 66 5 898 910 Search in Google Scholar

[5] Ma, S., Zhang, X., Jia, C., Zhao, Z., Wang, S., & Wang, S. Image and video compression with neural networks: A review. IEEE Transactions on Circuits and Systems for Video Technology.,2019. 30(6): 1683-1698. MaS. ZhangX. JiaC. ZhaoZ. WangS. WangS. Image and video compression with neural networks: A review IEEE Transactions on Circuits and Systems for Video Technology 2019 30 6 1683 1698 Search in Google Scholar

[6] Zhang, Y., Miyamori, Y., Mikami, S., & Saito, T. Vibration-based structural state identification by a 1-dimensional convolutional neural network. Computer-Aided Civil and Infrastructure Engineering.,2019. 34(9): 822-839. ZhangY. MiyamoriY. MikamiS. SaitoT. Vibration-based structural state identification by a 1-dimensional convolutional neural network Computer-Aided Civil and Infrastructure Engineering 2019 34 9 822 839 Search in Google Scholar

[7] Bloem-Reddy, B., & Teh, Y. W. Probabilistic symmetries and invariant neural networks. Journal of Machine Learning Research.,2020. 21(90): 1-61. Bloem-ReddyB. TehY. W. Probabilistic symmetries and invariant neural networks Journal of Machine Learning Research 2020 21 90 1 61 Search in Google Scholar

[8] Guo, Y., Li, W., Wang, B., Liu, H., & Zhou, D. DeepACLSTM: deep asymmetric convolutional long short-term memory neural models for protein secondary structure prediction. BMC bioinformatics.,2019. 20(1): 1-12. GuoY. LiW. WangB. LiuH. ZhouD. DeepACLSTM: deep asymmetric convolutional long short-term memory neural models for protein secondary structure prediction BMC bioinformatics 2019 20 1 1 12 Search in Google Scholar

[9] Rahaman, H., Kamrul Hasan, M., Ali, A. & Shamsul Alam, M. Implicit Methods for Numerical Solution of Singular Initial Value Problems. Applied Mathematics and Nonlinear Sciences.,2020. 6(1): 1-8 RahamanH. Kamrul HasanM. AliA. Shamsul AlamM. Implicit Methods for Numerical Solution of Singular Initial Value Problems Applied Mathematics and Nonlinear Sciences 2020 6 1 1 8 Search in Google Scholar

[10] El-Borhamy, M. & Mosalam, N. On the existence of periodic solution and the transition to chaos of Rayleigh-Duffing equation with application of gyro dynamic. Applied Mathematics and Nonlinear Sciences.,2020. 5(1): 93-108. El-BorhamyM. MosalamN. On the existence of periodic solution and the transition to chaos of Rayleigh-Duffing equation with application of gyro dynamic Applied Mathematics and Nonlinear Sciences 2020 5 1 93 108 Search in Google Scholar

[11] Kaji, S., & Kida, S. Overview of image-to-image translation by use of deep neural networks: denoising, superresolution, modality conversion, and reconstruction in medical imaging. Radiological physics and technology.,2019. 12(3): 235-248. KajiS. KidaS. Overview of image-to-image translation by use of deep neural networks: denoising, superresolution, modality conversion, and reconstruction in medical imaging Radiological physics and technology 2019 12 3 235 248 Search in Google Scholar

[12] Karimi, D., & Salcudean, S. E. Reducing the hausdorff distance in medical image segmentation with convolutional neural networks. IEEE Transactions on medical imaging.,2019. 39(2): 499-513. KarimiD. SalcudeanS. E. Reducing the hausdorff distance in medical image segmentation with convolutional neural networks IEEE Transactions on medical imaging 2019 39 2 499 513 Search in Google Scholar

eISSN:
2444-8656
Język:
Angielski
Częstotliwość wydawania:
Volume Open
Dziedziny czasopisma:
Life Sciences, other, Mathematics, Applied Mathematics, General Mathematics, Physics