Follow
Çağatay Berke Erdaş
Title
Cited by
Cited by
Year
Integrating features for accelerometer-based activity recognition
ÇB Erdaş, I Atasoy, K Açıcı, H Oğul
Procedia Computer Science 98, 522-527, 2016
1042016
Parkinson's disease monitoring from gait analysis via foot-worn sensors
T Aşuroğlu, K Açıcı, ÇB Erdaş, MK Toprak, H Erdem, H Oğul
Biocybernetics and Biomedical Engineering 38 (3), 760-772, 2018
672018
A random forest method to detect Parkinson’s disease via gait analysis
K Açıcı, ÇB Erdaş, T Aşuroğlu, MK Toprak, H Erdem, H Oğul
Engineering Applications of Neural Networks: 18th International Conference …, 2017
582017
Neurodegenerative disease detection and severity prediction using deep learning approaches
ÇB Erdaş, E Sümer, S Kibaroğlu
Biomedical Signal Processing and Control 70, 103069, 2021
272021
Human activity recognition by using different deep learning approaches for wearable sensors
ÇB Erdaş, S Güney
Neural Processing Letters 53 (3), 1795-1809, 2021
262021
A deep LSTM approach for activity recognition
S Güney, ÇB Erdaş
2019 42nd International Conference on Telecommunications and Signal …, 2019
262019
CNN-based severity prediction of neurodegenerative diseases using gait data
Ç Berke Erdaş, E Sümer, S Kibaroğlu
Digital Health 8, 20552076221075147, 2022
212022
A machine learning-based approach to detect survival of heart failure patients
ÇB Erdaş, D Ölçer
2020 Medical Technologies Congress (TIPTEKNO), 1-4, 2020
162020
HANDY: A benchmark dataset for context-awareness via wrist-worn motion sensors
K Açıcı, ÇB Erdaş, T Aşuroğlu, H Oğul
Data 3 (3), 24, 2018
162018
T4SS effector protein prediction with deep learning
K Açıcı, T Aşuroğlu, ÇB Erdaş, H Oğul
Data 4 (1), 45, 2019
122019
A fully automated approach involving neuroimaging and deep learning for Parkinson’s disease detection and severity prediction
ÇB Erdaş, E Sümer
PeerJ Computer Science 9, e1485, 2023
82023
Texture of activities: exploiting local binary patterns for accelerometer data analysis
T Aşuroğlu, K Açici, ÇB Erdaş, H Oğul
2016 12th International Conference on Signal-Image Technology & Internet …, 2016
82016
Detection of cataract, diabetic retinopathy and glaucoma eye diseases with deep learning approach
G ARSLAN, ÇB Erdaş
Intelligent Methods In Engineering Sciences 2 (2), 42-47, 2023
72023
Neurodegenerative diseases detection and grading using gait dynamics
ÇB Erdaş, E Sümer, S Kibaroğlu
Multimedia tools and applications 82 (15), 22925-22942, 2023
72023
A deep learning method to detect Parkinson’s disease from MRI slices
ÇB Erdaş, E Sümer
SN Computer Science 3 (2), 120, 2022
62022
Detection and differentiation of COVID-19 using deep learning approach fed by x-rays
ÇB Erdaş, D Ölçer
International Journal of Applied Mathematics Electronics and Computers 8 (3 …, 2020
62020
A deep learning-based approach to detect neurodegenerative diseases
ÇB Erdaş, E Sümer
2020 Medical Technologies Congress (TIPTEKNO), 1-4, 2020
42020
Detection of visual impairment from retinal fundus images with deep learning
D Ölçer, ÇB Erdaş
2022 Medical Technologies Congress (TIPTEKNO), 1-4, 2022
22022
Automated detection of type 1 ROP, type 2 ROP and A-ROP based on deep learning
E Kıran Yenice, C Kara, ÇB Erdaş
Eye, 1-5, 2024
12024
Retinopathy of Prematurity in Late Preterm Twins with a Birth Weight Discordance: Can it be Predicted by Artificial Intelligence?
EK Yenice, C Kara, M Yenice, ÇB Erdaş
Beyoglu Eye Journal 8 (4), 287-292, 2023
12023
The system can't perform the operation now. Try again later.
Articles 1–20