This work is licensed under the Creative Commons Attribution 4.0 International License.
[1] Brauwers, G., & Frasincar, F. (2021). A general survey on attention mechanisms in deep learning. IEEE Transactions on Knowledge and Data Engineering, 35(4), 3279-3298.BrauwersG.FrasincarF. (2021). A general survey on attention mechanisms in deep learning. IEEE Transactions on Knowledge and Data Engineering, 35(4), 3279-3298.Search in Google Scholar
[2] LIU, J. W., LIU, J. W., & LUO, X. L. (2021). Research progress in attention mechanism in deep learning. Chinese Journal of Engineering, 43(11), 1499-1511.LIUJ. W.LIUJ. W.LUOX. L. (2021). Research progress in attention mechanism in deep learning. Chinese Journal of Engineering, 43(11), 1499-1511.Search in Google Scholar
[3] Hu, D. (2020). An introductory survey on attention mechanisms in NLP problems. In Intelligent Systems and Applications: Proceedings of the 2019 Intelligent Systems Conference (IntelliSys) Volume 2 (pp. 432-448). Springer International Publishing.HuD. (2020). An introductory survey on attention mechanisms in NLP problems. In Intelligent Systems and Applications: Proceedings of the 2019 Intelligent Systems Conference (IntelliSys) Volume 2 (pp. 432-448). Springer International Publishing.Search in Google Scholar
[4] Hernández, A., & Amigó, J. M. (2021). Attention mechanisms and their applications to complex systems. Entropy, 23(3), 283.HernándezA.AmigóJ. M. (2021). Attention mechanisms and their applications to complex systems. Entropy, 23(3), 283.Search in Google Scholar
[5] Minaee, S., Boykov, Y., Porikli, F., Plaza, A., Kehtarnavaz, N., & Terzopoulos, D. (2021). Image segmentation using deep learning: A survey. IEEE transactions on pattern analysis and machine intelligence, 44(7), 3523-3542.MinaeeS.BoykovY.PorikliF.PlazaA.KehtarnavazN.TerzopoulosD. (2021). Image segmentation using deep learning: A survey. IEEE transactions on pattern analysis and machine intelligence, 44(7), 3523-3542.Search in Google Scholar
[6] Yu, Y., Wang, C., Fu, Q., Kou, R., Huang, F., Yang, B., ... & Gao, M. (2023). Techniques and challenges of image segmentation: A review. Electronics, 12(5), 1199.YuY.WangC.FuQ.KouR.HuangF.YangB.GaoM. (2023). Techniques and challenges of image segmentation: A review. Electronics, 12(5), 1199.Search in Google Scholar
[7] Bali, A., & Singh, S. N. (2015, February). A review on the strategies and techniques of image segmentation. In 2015 Fifth international conference on advanced computing & communication technologies (pp. 113-120). IEEE.BaliA.SinghS. N. (2015, February). A review on the strategies and techniques of image segmentation. In 2015 Fifth international conference on advanced computing & communication technologies (pp. 113-120). IEEE.Search in Google Scholar
[8] Ghosh, S., Das, N., Das, I., & Maulik, U. (2019). Understanding deep learning techniques for image segmentation. ACM computing surveys (CSUR), 52(4), 1-35.GhoshS.DasN.DasI.MaulikU. (2019). Understanding deep learning techniques for image segmentation. ACM computing surveys (CSUR), 52(4), 1-35.Search in Google Scholar
[9] Kaur, D., & Kaur, Y. (2014). Various image segmentation techniques: a review. International Journal of Computer Science and Mobile Computing, 3(5), 809-814.KaurD.KaurY. (2014). Various image segmentation techniques: a review. International Journal of Computer Science and Mobile Computing, 3(5), 809-814.Search in Google Scholar
[10] Chouhan, S. S., Kaul, A., & Singh, U. P. (2019). Image segmentation using computational intelligence techniques. Archives of Computational Methods in Engineering, 26, 533-596.ChouhanS. S.KaulA.SinghU. P. (2019). Image segmentation using computational intelligence techniques. Archives of Computational Methods in Engineering, 26, 533-596.Search in Google Scholar
[11] Khan, W. (2013). Image segmentation techniques: A survey. Journal of image and graphics, 1(4), 166-170.KhanW. (2013). Image segmentation techniques: A survey. Journal of image and graphics, 1(4), 166-170.Search in Google Scholar
[12] Anjna, E., & Kaur, E. R. (2017). Review of image segmentation technique. International Journal of Advanced Research in Computer Science, 8(4), 36-39.AnjnaE.KaurE. R. (2017). Review of image segmentation technique. International Journal of Advanced Research in Computer Science, 8(4), 36-39.Search in Google Scholar
[13] Guo, Z., Li, X., Huang, H., Guo, N., & Li, Q. (2019). Deep learning-based image segmentation on multimodal medical imaging. IEEE Transactions on Radiation and Plasma Medical Sciences, 3(2), 162-169.GuoZ.LiX.HuangH.GuoN.LiQ. (2019). Deep learning-based image segmentation on multimodal medical imaging. IEEE Transactions on Radiation and Plasma Medical Sciences, 3(2), 162-169.Search in Google Scholar
[14] 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.WangR.LeiT.CuiR.ZhangB.MengH.NandiA. K. (2022). Medical image segmentation using deep learning: A survey. IET image processing, 16(5), 1243-1267.Search in Google Scholar
[15] Karanam, S. R., Srinivas, Y., & Krishna, M. V. (2020). Study on image processing using deep learning techniques. Materials Today: Proceedings, 10, 2020.KaranamS. R.SrinivasY.KrishnaM. V. (2020). Study on image processing using deep learning techniques. Materials Today: Proceedings, 10, 2020.Search in Google Scholar
[16] Hesamian, M. H., Jia, W., He, X., & Kennedy, P. (2019). Deep learning techniques for medical image segmentation: achievements and challenges. Journal of digital imaging, 32, 582-596.HesamianM. H.JiaW.HeX.KennedyP. (2019). Deep learning techniques for medical image segmentation: achievements and challenges. Journal of digital imaging, 32, 582-596.Search in Google Scholar
[17] Jiao, L., & Zhao, J. (2019). A survey on the new generation of deep learning in image processing. Ieee Access, 7, 172231-172263.JiaoL.ZhaoJ. (2019). A survey on the new generation of deep learning in image processing. Ieee Access, 7, 172231-172263.Search in Google Scholar
[18] Haque, I. R. I., & Neubert, J. (2020). Deep learning approaches to biomedical image segmentation. Informatics in Medicine Unlocked, 18, 100297.HaqueI. R. I.NeubertJ. (2020). Deep learning approaches to biomedical image segmentation. Informatics in Medicine Unlocked, 18, 100297.Search in Google Scholar
[19] Roth, H. R., Shen, C., Oda, H., Oda, M., Hayashi, Y., Misawa, K., & Mori, K. (2018). Deep learning and its application to medical image segmentation. Medical Imaging Technology, 36(2), 63-71.RothH. R.ShenC.OdaH.OdaM.HayashiY.MisawaK.MoriK. (2018). Deep learning and its application to medical image segmentation. Medical Imaging Technology, 36(2), 63-71.Search in Google Scholar
[20] Moorthy, J., & Gandhi, U. D. (2022). A Survey on medical image segmentation based on deep learning techniques. Big Data and Cognitive Computing, 6(4), 117.MoorthyJ.GandhiU. D. (2022). A Survey on medical image segmentation based on deep learning techniques. Big Data and Cognitive Computing, 6(4), 117.Search in Google Scholar
[21] Baihong Zhong, Minghang Zhao, Shisheng Zhong, Lin Lin & Yongjian Zhang. (2024). Deep exponential excitation networks: toward stronger attention mechanism for weak fault diagnosis. Structural Health Monitoring(6),3850-3866.ZhongBaihongZhaoMinghangZhongShishengLinLinZhangYongjian (2024). Deep exponential excitation networks: toward stronger attention mechanism for weak fault diagnosis. Structural Health Monitoring(6),3850-3866.Search in Google Scholar
[22] Moumita Roy, Anindya Halder, Sukanta Majumder & Utpal Biswas. (2024). AttentivECGRU: GRU based autoencoder with attention mechanism and automated fuzzy thresholding for ECG arrhythmia detection. Applied Soft Computing(PB),112337-112337.RoyMoumitaHalderAnindyaMajumderSukantaBiswasUtpal (2024). AttentivECGRU: GRU based autoencoder with attention mechanism and automated fuzzy thresholding for ECG arrhythmia detection. Applied Soft Computing(PB),112337-112337.Search in Google Scholar