Jeny Rajan
Cited by
Cited by
Machine learning study of several classifiers trained with texture analysis features to differentiate benign from malignant soft‐tissue tumors in T1‐MRI images
J Juntu, J Sijbers, S De Backer, J Rajan, D Van Dyck
Journal of Magnetic Resonance Imaging: An Official Journal of theá…, 2010
Recent advancements in retinal vessel segmentation
C L Srinidhi, P Aparna, J Rajan
Journal of medical systems 41, 1-22, 2017
Automatic detection of tuberculosis bacilli from microscopic sputum smear images using deep learning methods
RO Panicker, KS Kalmady, J Rajan, MK Sabu
Biocybernetics and Biomedical Engineering 38 (3), 691-699, 2018
Noise measurement from magnitude MRI using local estimates of variance and skewness
J Rajan, D Poot, J Juntu, J Sijbers
Physics in medicine & biology 55 (16), N441, 2010
Speckle reduction in medical ultrasound images using an unbiased non-local means method
PV Sudeep, P Palanisamy, J Rajan, H Baradaran, L Saba, A Gupta, ...
Biomedical Signal Processing and Control 28, 1-8, 2016
Comprehensive framework for accurate diffusion MRI parameter estimation
J Veraart, J Rajan, RR Peeters, A Leemans, S Sunaert, J Sijbers
Magnetic resonance in medicine 70 (4), 972-984, 2013
Segmentation of intra-retinal cysts from optical coherence tomography images using a fully convolutional neural network model
GN Girish, B Thakur, SR Chowdhury, AR Kothari, J Rajan
IEEE journal of biomedical and health informatics 23 (1), 296-304, 2018
An improved hybrid model for molecular image denoising
J Rajan, K Kannan, MR Kaimal
Journal of Mathematical Imaging and Vision 31, 73-79, 2008
Maximum likelihood estimation-based denoising of magnetic resonance images using restricted local neighborhoods
J Rajan, B Jeurissen, M Verhoye, J Van Audekerke, J Sijbers
Physics in Medicine & Biology 56 (16), 5221, 2011
Nonlocal maximum likelihood estimation method for denoising multiple-coil magnetic resonance images
J Rajan, J Veraart, J Van Audekerke, M Verhoye, J Sijbers
Magnetic Resonance Imaging 30 (10), 1512-1518, 2012
A review of automatic methods based on image processing techniques for tuberculosis detection from microscopic sputum smear images
RO Panicker, B Soman, G Saini, J Rajan
Journal of medical systems 40, 1-13, 2016
Medical Image Segmentation with 3D Convolutional Neural Networks: A Survey
S Niyas, SJ Pawan, MA Kumar, J Rajan
Neurocomputing 493, 397-413, 2022
An empirical study of the impact of masks on face recognition
G Jeevan, GC Zacharias, MS Nair, J Rajan
Pattern Recognition 122, 108308, 2022
A Review on Carotid Ultrasound Atherosclerotic Tissue Characterization and Stroke Risk Stratification in Machine Learning Framework
AM Sharma, A Gupta, PK Kumar, J Rajan, L Saba, I Nobutaka, JR Laird, ...
Current Atherosclerosis Reports 17 (9), 1-13, 2015
Multi-Res-Attention UNet: A CNN Model for the Segmentation of Focal Cortical Dysplasia Lesions from Magnetic Resonance Images
E Thomas, SJ Pawan, S Kumar, A Horo, S Niyas, S Vinayagamani, ...
IEEE journal of biomedical and health informatics 25 (5), 1724-1734, 2021
Iterative bilateral filter for Rician noise reduction in MR images
R Riji, J Rajan, J Sijbers, MS Nair
Signal, image and video processing 9, 1543-1548, 2015
A new non-local maximum likelihood estimation method for Rician noise reduction in magnetic resonance images using the Kolmogorov–Smirnov test
J Rajan, AJ den Dekker, J Sijbers
Signal processing 103, 16-23, 2014
Automated method for retinal artery/vein separation via graph search metaheuristic approach
CL Srinidhi, P Aparna, J Rajan
IEEE Transactions on Image Processing 28 (6), 2705-2718, 2019
Enhancement and bias removal of optical coherence tomography images: An iterative approach with adaptive bilateral filtering
PV Sudeep, SI Niwas, P Palanisamy, J Rajan, Y Xiaojun, X Wang, Y Luo, ...
Computers in biology and medicine 71, 97-107, 2016
Automatic detection and localization of focal cortical dysplasia lesions in MRI using fully convolutional neural network
KMB Dev, PS Jogi, S Niyas, S Vinayagamani, C Kesavadas, J Rajan
Biomedical Signal Processing and Control 52, 218-225, 2019
The system can't perform the operation now. Try again later.
Articles 1–20