- Abdel-Basset, R. Mohamed, N. M. AbdelAziz, and M. Abouhawwash, HWOA: A hybrid whale optimization algorithm with a novel local minima avoidance method for multi-level thresholding color image segmentation, Expert Systems with Applications, 190 (2022), p. 116145.
- Aghajari and G. D. Chandrashekhar, Self-organizing map based extended fuzzy C-means (SEEFC) algorithm for image segmentation, Applied Soft Computing, 54 (2017), pp. 347–363.
- Aouat, I. Ait-hammi, and I. Hamouchene, A new approach for texture segmentation based on the gray level co-occurrence matrix, Multimedia Tools and Applications, 80 (2021), pp. 24027–24052.
- Bigdeli, A. Maghsoudi, and R. Ghezelbash, Application of self-organizing map (SOM) and K-means clustering algorithms for portraying geochemical anomaly patterns in moalleman district, NE iran, Journal of Geochemical Exploration, 233 (2022), p. 106923.
- Borjigin and P. K. Sahoo, Color image segmentation based on multi-level Tsallis–Havrda–Charv´at entropy and 2D histogram using PSO algorithms, Pattern Recognition, 92 (2019), pp. 107–118.
- Bouwmans, A. Sobral, S. Javed, S. K. Jung, and E.-H. Zahzah, Decomposition into low-rank plus additive matrices for background/foreground separation: A review for a comparative evaluation with a large-scale dataset, Computer Science Review, 23 (2017), pp. 1–71.
- Cheng, C. Cao, J. Yang, Z. Zhang, and Y. Chen, A spatially constrained skew student’s-t mixture model for brain MR image segmentation and bias field correction, Pattern Recognition, 128 (2022), p. 108658.
- Cuevas, D. Berjon, and N. Garc´ ´ıa, Grass band detection in soccer images for improved image registration, Signal Processing: Image Communication, 109 (2022), p. 116837.
- Dehghanian, S. S. M. Nadoushani, B. Saghafian, and R. Akhtari, Performance evaluation of a fuzzy hybrid clustering technique to identify flood source areas, Water Resources Management, 33 (2019), pp. 4621–4636.
- Gagliardi, A. Raffo, U. Fugacci, S. Biasotti, W. Rocchia, H. Huang, B. B. Amor, Y. Fang, Y. Zhang, X. Wang, et al., Shrec 2022: Protein–ligand binding site recognition, Computers & Graphics, 107 (2022), pp. 20–31.
- Ghaseminezhad and A. Karami, A novel self-organizing map (SOM) neural network for discrete groups of data clustering, Applied Soft Computing, 11 (2011), pp. 3771–3778.
- C. Gonzalez and R. E. Woods, Digital image processing, hoboken, NJ: Pearson, (2018).
- Guo and H. Peng, A novel multilevel color image segmentation technique based on an improved firefly algorithm and energy curve, Evolving Systems, (2022), pp. 1–49.
- R. Hait, R. Mesiar, P. Gupta, D. Guha, and D. Chakraborty, The bonferroni mean-type preaggregation operators construction and generalization: Application to edge detection, Information fusion, 80 (2022), pp. 226–240.
- Karami, S. Bohluli, C. Huang, and N. Sohaee, Deep learning model for express lane traffic forecasting, AUT Journal of Mathematics and Computing, 3 (2022), pp. 129–135.
- Kohonen and P. Somervuo, Self-organizing maps of symbol strings, Neurocomputing, 21 (1998), pp. 19– 30.
- Liang, Z. Cheng, H. Zhong, A. Qu, and L. Chen, A region-based convolutional network for nuclei detection and segmentation in microscopy images, Biomedical Signal Processing and Control, 71 (2022), p. 103276.
- Lu, S. Young, H. Wang, and N. Wijewardane, Robust plant segmentation of color images based on image contrast optimization, Computers and Electronics in Agriculture, 193 (2022), p. 106711.
- Mohammadi and M. I. Mobarakeh, An integrated clustering algorithm based on firefly algorithm and self-organized neural network, Progress in Artificial Intelligence, 11 (2022), pp. 207–217.
- Motta, L. Callea, L. Bonati, and A. Pandini, Pathdetect-SOM: A neural network approach for the identification of pathways in ligand binding simulations, Journal of Chemical Theory and Computation, 18 (2022), pp. 1957–1968. PMID: 35213804.
- Murawwat, H. M. Asif, S. Ijaz, M. I. Malik, and K. Raahemifar, Denoising and classification of arrhythmia using memd and ann, Alexandria Engineering Journal, 61 (2022), pp. 2807–2823.
- Nan, Y. Li, X. Jia, L. Dong, and Y. Chen, Application of improved som network in gene data cluster analysis, Measurement, 145 (2019), pp. 370–378.
- Nayak, B. Naik, and H. Behera, Fuzzy C-means (FCM) clustering algorithm: a decade review from 2000 to 2014, in Computational Intelligence in Data Mining-Volume 2: Proceedings of the International Conference on CIDM, 20-21 December 2014, Springer, 2015, pp. 133–149.
- Oliva, S. Hinojosa, V. Osuna-Enciso, E. Cuevas, M. Perez-Cisneros, and G. Sanchez-Ante´ , Image segmentation by minimum cross entropy using evolutionary methods, Soft Computing, 23 (2019), pp. 431–450.
- G. Oskouei, M. Hashemzadeh, B. Asheghi, and M. A. Balafar, Cgffcm: Cluster-weight and grouplocal feature-weight learning in fuzzy C-means clustering algorithm for color image segmentation, Applied Soft Computing, 113 (2021), p. 108005.
- T. Ouyang, S. K. Liao, Y. K. Gong, et al., Optimization of K-means image segmentation based on manta ray foraging algorithm, in 2022 3rd International Conference on Electronic Communication and Artificial Intelligence (IWECAI), IEEE, 2022, pp. 151–155.
- Prezelj, J. Murovec, S. Huemer-Kals, K. Hasler, and P. Fischer¨ , Identification of different manifestations of nonlinear stick–slip phenomena during creep groan braking noise by using the unsupervised learning algorithms k-means and self-organizing map, Mechanical systems and signal processing, 166 (2022), p. 108349.
- Saberi, R. Sharbati, and B. Farzanegan, A gradient ascent algorithm based on possibilistic fuzzy C-means for clustering noisy data, Expert Systems with Applications, 191 (2022), p. 116153.
- G. Sodjinou, V. Mohammadi, A. T. S. Mahama, and P. Gouton, A deep semantic segmentationbased algorithm to segment crops and weeds in agronomic color images, Information Processing in Agriculture, 9 (2022), pp. 355–364.
- Song, Y. Liu, X. Zhang, Q. Wu, J. Gao, W. Wang, J. Li, Y. Song, and C. Yang, Entropy subspace separation-based clustering for noise reduction (ENCORE) of scRNA-seq data, Nucleic acids research, 49 (2021), pp. e18–e18.
- Wang and S. Sun, A rock fabric classification method based on the grey level co-occurrence matrix and the gaussian mixture model, Journal of Natural Gas Science and Engineering, 104 (2022), p. 104627.
- Yang, J. Wu, J. Huo, Y.-K. Lai, and Y. Gao, Learning 3D face reconstruction from a single sketch, Graphical Models, 115 (2021), p. 101102.
- M. Zareian, M. Mesbah, S. Moradi, and M. Ghatee, A combined apriori algorithm and fuzzy controller for simultaneous ramp metering and variable speed limit determination in a freeway, AUT Journal of Mathematics and Computing, 3 (2022), pp. 237–251.
- Zhang, H. Li, N. Chen, S. Chen, and J. Liu, Novel fuzzy clustering algorithm with variable multi-pixel fitting spatial information for image segmentation, Pattern Recognition, 121 (2022), p. 108201.
|