This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Bahadure, N. B., Ray, A. K. and Thethi, H. P. 2017. Image analysis for MRI based brain tumor detection and feature extraction using biologically inspired BWT and SVM. International Journal of Biomedical Imaging 2017:9749108.BahadureN. B.RayA. K.ThethiH. P.2017Image analysis for MRI based brain tumor detection and feature extraction using biologically inspired BWT and SVM2017974910810.1155/2017/9749108535847828367213Search in Google Scholar
Cui, Y., Yongqiang, T., Binsheng, Z., Laura, L., Rakesh, P., Jennifer, K., Maria, T., Clifford, H. and Schwartz, L. H. 2009. Malignant lesion segmentation in contrast-enhanced breast MR images based on the marker-controlled watershed. Medical Physics 36(10): 4359–4369.CuiY.YongqiangT.BinshengZ.LauraL.RakeshP.JenniferK.MariaT.CliffordH.SchwartzL. H.2009Malignant lesion segmentation in contrast-enhanced breast MR images based on the marker-controlled watershed.36(10):4359436910.1118/1.3213514276833019928066Search in Google Scholar
Dhage, P., Phegade, M. R. and Shah, S. K. 2015. Watershed segmentation brain tumor detection. 2015 International Conference on Pervasive Computing (ICPC), IEEE, pp. 1–5.DhageP.PhegadeM. R.ShahS. K.2015Watershed segmentation brain tumor detectionpp.1510.1109/PERVASIVE.2015.7086967Search in Google Scholar
Hasan, S. M. K. and Ahmad, M. 2018. Two-step verification of brain tumor segmentation using watershed-matching algorithm. Brain Informatics 5: 1–11.HasanS. M. K.AhmadM.2018Two-step verification of brain tumor segmentation using watershed-matching algorithm511110.1186/s40708-018-0086-x617094430105425Search in Google Scholar
Hore, A. and Ziou, D. 2010. Image quality metrics: PSNR vs. SSIM. 2010 20th International Conference on Pattern Recognition, IEEE, pp. 2366–2369.HoreA.ZiouD.2010Image quality metrics: PSNR vs. SSIMpp.2366236910.1109/ICPR.2010.579Search in Google Scholar
Jemimma, T. A. and Vetharaj, Y. J. 2018. Watershed algorithm based DAPP features for brain tumor segmentation and classification. 2018 International Conference on Smart Systems and Inventive Technology (ICSSIT), IEEE, pp. 155–158.JemimmaT. A.VetharajY. J.2018Watershed algorithm based DAPP features for brain tumor segmentation and classificationpp.15515810.1109/ICSSIT.2018.8748436Search in Google Scholar
Khan, M. A., Lali, I. U., Rehman, A., Ishaq, M., Sharif, M., Saba, T., Zahoor, S. and Akram, T. 2019. Brain tumor detection and classification: a framework of marker-based watershed algorithm and multilevel priority features selection. Microscopy Research and Technique 82: 909–922.KhanM. A.LaliI. U.RehmanA.IshaqM.SharifM.SabaT.ZahoorS.AkramT.2019Brain tumor detection and classification: a framework of marker-based watershed algorithm and multilevel priority features selection8290992210.1002/jemt.2323830801840Search in Google Scholar
Lu, Y., Zhanjun, J., Tao Z. and Shengwen, F. 2019. An improved watershed segmentation algorithm of medical tumor image. IOP Conference Series: Materials Science and Engineering Vol. 677, p. 042028.LuY.ZhanjunJ.Tao Z.ShengwenF.2019An improved watershed segmentation algorithm of medical tumor imageVol.677, p.04202810.1088/1757-899X/677/4/042028Search in Google Scholar
Masson, A., Rioux, J., Clarke, S. E., Costa, A., Schmidt, M., Keough, V., Hyynh, T. and Beyea, S. 2019. Comparison of objective image quality metrics to expert radiologists’ scoring of diagnostic quality of MR images. IEEE Transactions on Medical Imaging 39: 1064–1072.MassonA.RiouxJ.ClarkeS. E.CostaA.SchmidtM.KeoughV.HyynhT.BeyeaS.2019Comparison of objective image quality metrics to expert radiologists’ scoring of diagnostic quality of MR images391064107210.1109/TMI.2019.293033831535985Search in Google Scholar
Mustaqeem, A., Javed, A. and Fatima, T. 2012. An efficient brain tumor detection algorithm using watershed & thresholding based segmentation. International Journal of Image, Graphics and Signal Processing 4: 34.MustaqeemA.JavedA.FatimaT.2012An efficient brain tumor detection algorithm using watershed & thresholding based segmentation43410.5815/ijigsp.2012.10.05Search in Google Scholar
Oo, S. Z. and Khaing, A. 2014. Brain tumor detection and segmentation using watershed segmentation and morphological operation. International Journal of Research in Engineering and Technology 3: 367–374.OoS. Z.KhaingA.2014Brain tumor detection and segmentation using watershed segmentation and morphological operation336737410.15623/ijret.2014.0303068Search in Google Scholar
Pambrun, J. -F. and Noumeir, R. 2015. Limitations of the SSIM quality metric in the context of diagnostic imaging. 2015 IEEE International Conference on Image Processing (ICIP), IEEE, pp. 2960–2963.PambrunJ. -F.NoumeirR.2015Limitations of the SSIM quality metric in the context of diagnostic imagingpp.2960296310.1109/ICIP.2015.7351345Search in Google Scholar
Sara, U., Akter, M. and Uddin, M. S. 2019. Image quality assessment through FSIM, SSIM, MSE and PSNR—a comparative study. Journal of Computer and Communications 7: 8–18.SaraU.AkterM.UddinM. S.2019Image quality assessment through FSIM, SSIM, MSE and PSNR—a comparative study781810.4236/jcc.2019.73002Search in Google Scholar
Seere, S. K. H. and Karibasappa, K. 2020. Threshold segmentation and watershed segmentation algorithm for brain tumor detection using support vector machine. European Journal of Engineering and Technology Research 5: 516–519.SeereS. K. H.KaribasappaK.2020Threshold segmentation and watershed segmentation algorithm for brain tumor detection using support vector machine551651910.24018/ejeng.2020.5.4.1902Search in Google Scholar
Shahin, O. R. 2018. Brain tumor detection using watershed transform. Annals of Clinical and Cytology and Pathology 4: 1–6.ShahinO. R.2018Brain tumor detection using watershed transform416Search in Google Scholar
Sivakumar, V. and Janakiraman, N. 2020. A novel method for segmenting brain tumor using modified watershed algorithm in MRI image with FPGA. Biosystems 198: 104226.SivakumarV.JanakiramanN.2020A novel method for segmenting brain tumor using modified watershed algorithm in MRI image with FPGA19810422610.1016/j.biosystems.2020.10422632861800Search in Google Scholar
Tarhini, G. M. and Shbib, R. 2020. Detection of brain tumor in mri images using watershed and threshold-based segmentation. International Journal of Signal Processing Systems 8: 19–25.TarhiniG. M.ShbibR.2020Detection of brain tumor in mri images using watershed and threshold-based segmentation8192510.18178/ijsps.8.1.19-25Search in Google Scholar
Zhang, L., Zhang, L., Mou, X. and Zhang, D. 2011. FSIM: a feature similarity index for image quality assessment. IEEE Transactions on Image Processing 20: 2378–2386.ZhangL.ZhangL.MouX.ZhangD.2011FSIM: a feature similarity index for image quality assessment202378238610.1109/TIP.2011.210973021292594Search in Google Scholar
Zhao, F., Huang, Q. and Gao, W. 2006. Image matching by normalized cross-correlation. 2006 IEEE International Conference on Acoustics Speech and Signal Processing Proceedings IEEE, Vol. 2, p. II.ZhaoF.HuangQ.GaoW.2006Image matching by normalized cross-correlationVol.2p. IISearch in Google Scholar