Low-grade magnetic resonance image enhancement using adaptive sigmoid transformation function

El-Dahshan ES, Mohsen HM, Revett K, Salem ABM. Computer-aided diagnosis of human brain tumor through MRI: A survey and a new algorithm. Expert Syst Appl. 2014;41(11):5526–45.

Baradarani A, Wu QMJ, Ahmadi M. An efficient illumination invariant face recognition framework via illumination enhancement and DD-DTCWT filtering. Pattern Recognit. 2013;46(1):57–72.

Article  Google Scholar 

Sang J, Zhang B, Hong D, Xiang H, Xu H, Sang N. An image watermarking technique based on cascaded iterative Fourier transform. Optik (Stuttg). 2013;124(20):4522–5.

Article  Google Scholar 

Casaca W, Boaventura M, De Almeida MP, Nonato LG. Combining anisotropic diffusion, transport equation and texture synthesis for inpainting textured images. Pattern Recognit Lett. 2014;36:36–45.

Article  Google Scholar 

Condon BR, Patterson J, Wyper D, Jenkins A, Hadley DM. Image non-uniformity in magnetic resonance imaging: its magnitude and methods for its correction. Br J Radiol. 1987;60(709):83–7.

Article  Google Scholar 

Bahadure NB, Ray AK, Thethi HP. Image analysis for MRI based brain tumor detection and feature extraction using biologically inspired BWT and SVM. Int J Biomed Imaging. 2017;2017.

Wong KP. Medical image segmentation: methods and applications in functional imaging. Handbook of Biomedical Image Analysis: Volume II: Segmentation Models Part B. 2005;111–182.

Derraz F, Beladgham M, Khelif M. Application of active contour models in medical image segmentation. In Int Conf Inf Technol Coding Comput 2004 Proc ITCC 2004, IEEE. 2004;675–681.

Georgiadis P, et al. Improving brain tumor characterization on MRI by probabilistic neural networks and non-linear transformation of textural features. Comput Methods Programs Biomed. 2008;89(1):24–32.

Article  Google Scholar 

Shen S, Sandham W, Granat M, Sterr A. MRI fuzzy segmentation of brain tissue using neighborhood attraction with neural-network optimization. IEEE Trans Inf Technol Biomed. 2005;9(3):459–67.

Article  Google Scholar 

Badža MM, Barjaktarović MČ. Classification of brain tumors from MRI images using a convolutional neural network. Appl Sci. 2020;10(6):1999.

Article  Google Scholar 

Mengash HA, Mahmoud HAH. Brain cancer tumor classification from motion-corrected MRI images using convolutional neural network. Comput Mater Contin. 2021;68(2):1551–63.

Louis DN, et al. The 2016 World Health Organization classification of tumors of the central nervous system: a summary. Acta Neuropathol. 2016;131:803–20.

Article  Google Scholar 

Gonzalez RC, Richard E. Woods, Digital Image Processing. Prentice Hall, 2002.

Pal NR, Pal SK. Entropy: A new definition and its applications. IEEE Trans Syst Man Cybern. 1991;21(5):1260–70.

Article  MathSciNet  Google Scholar 

Celik T. Spatial mutual information and PageRank-based contrast enhancement and quality-aware relative contrast measure. IEEE Trans Image Process. 2016;25(10):4719–28.

Article  MathSciNet  Google Scholar 

Agaian SS, Silver B, Panetta KA. Transform coefficient histogram-based image enhancement algorithms using contrast entropy. IEEE Trans Image Process. 2007;16(3):741–58.

Article  MathSciNet  Google Scholar 

Wang S, Ma K, Yeganeh H, Wang Z, Lin W. A patch-structure representation method for quality assessment of contrast changed images. IEEE Signal Process Lett. 2015;22(12):2387–90.

Article  Google Scholar 

Beghdadi A, Le Negrate A. Contrast enhancement technique based on local detection of edges. Comput Vis Graph Image Process. 1989;46(2):162–74.

Article  Google Scholar 

Kim Y-T. Contrast enhancement using brightness preserving bi-histogram equalization. IEEE Trans Consum Electron. 1997;43(1):1–8.

Article  Google Scholar 

Wang Y, Chen Q, Zhang B. Image enhancement based on equal area dualistic sub-image histogram equalization method. IEEE Trans Consum Electron. 1999;45(1):68–75.

Article  Google Scholar 

Maragatham G, Roomi SMM, Prabu TM. Contrast enhancement by object based histogram equalization. In World Congr Inf Commun Technol IEEE 2011. 2011;1118–22.

Chen S-D, Ramli AR. Contrast enhancement using recursive mean-separate histogram equalization for scalable brightness preservation. IEEE Trans Consum Electron. 2003;49(4):1301–9.

Article  Google Scholar 

Sim KS, Tso CP, Tan YY. Recursive sub-image histogram equalization applied to gray scale images. Pattern Recognit Lett. 2007;28(10):1209–21.

Article  Google Scholar 

Ooi CH, Kong NSP, Ibrahim H. Bi-histogram equalization with a plateau limit for digital image enhancement. IEEE Trans Consum Electron. 2009;55(4):2072–80.

Article  Google Scholar 

Ooi CH, Isa NAM. Adaptive contrast enhancement methods with brightness preserving. IEEE Trans Consum Electron. 2010;56(4):2543–51.

Article  Google Scholar 

Abdullah-Al-Wadud M. A modified histogram equalization for contrast enhancement preserving the small parts in images. Int J Comput Sci Netw Secur (IJCSNS). 2012;12(2):1.

Singh K, Kapoor R. Image enhancement using exposure based sub image histogram equalization. Pattern Recognit Lett. 2014;36:10–4.

Article  Google Scholar 

Zhu Y, Huang C. An adaptive histogram equalization algorithm on the image gray level mapping. Phys Procedia. 2012;25:601–8.

Article  Google Scholar 

Babu P, Rajamani V, Balasubramanian K. Multipeak mean based optimized histogram modification framework using swarm intelligence for image contrast enhancement. Math Probl Eng. 2015;2015.

Gu K, Zhai G, Wang S, Liu M, Zhoi J, Lin W. A general histogram modification framework for efficient contrast enhancement. In IEEE Int Symp Circ Syst (ISCAS). 2015;2015:2816–9.

Sengee N, Choi HK. A novel filter ed Bi-histogram equalization method. J Korea Multimed Soc. 2015;18(6):691–700.

Aquino-Morínigo PB, Lugo-Solís FR, Pinto-Roa DP, Ayala HL, Noguera JLV. Bi-histogram equalization using two plateau limits. Signal Image Video Process. 2017;11:857–64.

Article  Google Scholar 

Dhal KG, Sen S, Sarkar K, Das S. Entropy based range optimized brightness preserved histogram-equalization for image contrast enhancement. IntJ Comput Vis Image Process (IJCVIP). 2016;6(1):59–72.

Chang Y-C, Chang C-M. A simple histogram modification scheme for contrast enhancement. IEEE Trans Consum Electron. 2010;56(2):737–42.

Article  Google Scholar 

Ibrahim H, Kong NSP. Brightness preserving dynamic histogram equalization for image contrast enhancement. IEEE Trans Consum Electron. 2007;53(4):1752–8.

Article  Google Scholar 

Maurya L, Mahapatra PK, Kumar A. A social spider optimized image fusion approach for contrast enhancement and brightness preservation. Appl Soft Comput. 2017;52:575–92.

Article  Google Scholar 

Hossain F, Alsharif MR. Image enhancement based on logarithmic transform coefficient and adaptive histogram equalization. In Int Conf Converg Inf Technol (ICCIT 2007) IEEE. 2007;2007:1439–44.

Kim W, You J, Jeong J. Contrast enhancement using histogram equalization based on logarithmic mapping. Opt Eng. 2012;51(6):67002.

Article  Google Scholar 

Yadav PS, Gupta B, Lamba SS. A new approach of contrast enhancement for Medical Images based on entropy curve. Biomed Signal Process Control. 2024;88: 105625.

Article  Google Scholar 

Subramani B, Veluchamy M. A fast and effective method for enhancement of contrast resolution properties in medical images. Multimed Tools Appl. 2020;79(11–12):7837–55.

Article  Google Scholar 

Kumar R, Bhandari AK. Spatial mutual information based detail preserving magnetic resonance image enhancement. Comput Biol Med. 2022;146: 105644.

Article  Google Scholar 

Srinivas K, Bhandari AK. Low light image enhancement with adaptive sigmoid transfer function. IET Image Process. 2020;14(4):668–78.

Article  Google Scholar 

Arici T, Dikbas S, Altunbasak Y. A histogram modification framework and its application for image contrast enhancement. IEEE Trans Image Process. 2009;18(9):1921–35.

Article  MathSciNet  Google Scholar 

Gu K, Zhai G, Lin W, Liu M. The analysis of image contrast: From quality assessment to automatic enhancement. IEEE Trans Cybern. 2015;46(1):284–97.

Article  Google Scholar 

Agrawal S, Panda R, Mishro PK, Abraham A. A novel joint histogram equalization based image contrast enhancement. J King Saud Univ Comput Inf Sci. 2022;34(4):1172–82.

Demirel H, Ozcinar C, Anbarjafari G. Satellite image contrast enhancement using discrete wavelet transform and singular value decomposition. IEEE Geosci Remote Sens Lett. 2009;7(2):333–7.

Article  Google Scholar 

Ying Z, Li G, Gao W. A bio-inspired multi-exposure fusion framework for low-light image enhancement. arXiv preprint arXiv:1711.00591, 2017.

Kim M, Chung MG. Recursively separated and weighted histogram equalization for brightness preservation and contrast enhancement. IEEE Trans Consum Electron. 2008;54(3):1389–97.

Article  Google Scholar 

Parthasarathy S, Sankaran P. An automated multi scale retinex with color restoration for image enhancement. In 2012 Natl Conf Commun (NCC) IEEE. 2012;1–5.

Xu J, et al. Star: A structure and texture aware retinex model. IEEE Trans Image Process. 2020;29:5022–37.

Article  Google Scholar 

Xu Y, Yang C, Sun B, Yan X, Chen M. A novel multi-scale fusion framework for detail-preserving low-light image enhancement. Inf Sci (N Y). 2021;548:378–97.

Article  MathSciNet  Google Scholar 

Wang S, Zheng J, Hu H-M, Li B. Naturalness preserved enhancement algorithm for non-uniform illumination images. IEEE Trans Image Process. 2013;22(9):3538–48.

Article  Google Scholar 

Bhandari AK, Srinivas K, Kumar A. Optimized histogram computation model using cuckoo search for color image contrast distortion. Digit Signal Process. 2021;118: 103203.

Article  Google Scholar 

Bhandari AK, Shahnawazuddin S, Meena AK. A novel fuzzy clustering-based histogram model for image contrast enhancement. IEEE Trans Fuzzy Syst. 2019;28(9):2009–21.

Article  Google Scholar 

留言 (0)

沒有登入
gif