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Nagaraj  Yamanakkanavar
Nagaraj Yamanakkanavar
Central University of Karnataka
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Zitiert von
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MRI segmentation and classification of human brain using deep learning for diagnosis of Alzheimer’s disease: a survey
N Yamanakkanavar, JY Choi, B Lee
Sensors 20 (11), 3243, 2020
1622020
Automatic Segmentation of Brain MRI using a Novel Patch-wise U-net Deep Architecture
B Lee, N Yamanakkanavar, JY Choi
PLoS ONE 15 (8), e0236493, 2020
892020
A novel M-SegNet with global attention CNN architecture for automatic segmentation of brain MRI
N Yamanakkanavar, B Lee
Computers in Biology and Medicine 136, 104761, 2021
332021
Using a patch-wise M-net convolutional neural network for tissue segmentation in brain MRI images
N Yamanakkanavar, B Lee
IEEE Access 8, 120946-120958, 2020
282020
Segmentation of intima media complex from carotid ultrasound images using wind driven optimization technique
Y Nagaraj, P Madipalli, J Rajan, PK Kumar, AV Narasimhadhan
Biomedical Signal Processing and Control 40, 462-472, 2018
262018
MF2-Net: A multipath feature fusion network for medical image segmentation
N Yamanakkanavar, B Lee
Engineering Applications of Artificial Intelligence 114, 105004, 2022
212022
Automatic Segmentation of Intima Media Complex in Carotid Ultrasound Images Using Support Vector Machine
Y Nagaraj, AHS Teja, AV Narasimhadhan
Arabian Journal for Science and Engineering 44 (4), 3489-3496, 2019
132019
Carotid wall segmentation in longitudinal ultrasound images using structured random forest
Y Nagaraj, CS Asha, AV Narasimhadhan
Computers & Electrical Engineering 69, 753-767, 2018
132018
AMCC-Net: An asymmetric multi-cross convolution for skin lesion segmentation on dermoscopic images
C Dayananda, N Yamanakkanavar, T Nguyen, B Lee
Engineering Applications of Artificial Intelligence 122, 1-12, 2023
102023
Assessment of speckle denoising in ultrasound carotid images using least square bayesian estimation approach
Y Nagaraj, CS Asha, AV Narasimhadhan
2016 IEEE Region 10 Conference (TENCON), 1001-1004, 2016
102016
Automatic Segmentation of Intima Media Complex in Common Carotid Artery using Adaptive Wind Driven Optimization
P Madipalli, S Kotta, H Dadi, Y Nagaraj, CS Asha, AV Narasimhadhan
2018 Twenty Fourth National Conference on Communications (NCC), 1-6, 2018
62018
SM-SegNet: A lightweight squeeze M-SegNet for tissue segmentation in brain MRI scans
N Yamanakkanavar, JY Choi, B Lee
Sensors 22 (14), 5148, 2022
52022
Multiscale and hierarchical feature-aggregation network for segmenting medical images
N Yamanakkanavar, JY Choi, B Lee
Sensors 22 (9), 3440, 2022
52022
Brain tissue segmentation using patch-wise m-net convolutional neural network
N Yamanakkanavar, B Lee
2020 IEEE International Conference on Consumer Electronics-Asia (ICCE-Asia), 1-4, 2020
42020
Comparison of edge detection algorithms in the framework of despeckling carotid ultrasound images based on bayesian estimation approach
Y Nagaraj, AV Narasimhadhan
National Conference on Computer Vision, Pattern Recognition, Image …, 2017
32017
A No-reference Image Quality Assessment based on Reference Generating Network
S Ghimire, N Yamanakkanavar, B Lee
2020 IEEE International Conference on Consumer Electronics-Asia (ICCE-Asia), 1-4, 2020
12020
A squeeze M-SegNet architecture for segmentation of brain tissues on MRI
N Yamanakkanavar, B Lee
한국통신학회 학술대회논문집, 539-542, 2021
2021
Squeeze U-SegNet: A CNN architecture for Automatic segmentation of brain MRI
C Dayananda, N Yamanakkanavar, B Lee
The 9th International Conference on Smart Media and Applications (SMA 2020), 2020
2020
Automatic Segmentation of brain MRI using M-net convolutional neural network
N Yamanakkanavar, B Lee
32nd Image Processing and Image Understanding, 2020
2020
Robust and efficient methods for segmentation of intima media thickness of the common carotid artery
N Yamanakkanavar
National Institute of Technology Karnataka, Surathkal, 2018
2018
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