Darıcı, Muazzez Buket

Loading...
Profile Picture
Name Variants
Muazzez Buket, Darici
D., Muazzez Buket
Darıcı,M.B.
D.,Muazzez Buket
Darıcı, M. B.
Darıcı, M.
Darıcı, Muazzez Buket
DARICI, MUAZZEZ BUKET
Darici,M.B.
Darici,Muazzez Buket
M. B. Darıcı
Darici, Muazzez Buket
Darıcı, MUAZZEZ BUKET
DARICI, Muazzez Buket
M. Darıcı
Muazzez Buket DARICI
Muazzez Buket Darıcı
MUAZZEZ BUKET DARICI
Job Title
Araş. Gör.
Email Address
buket.darici@khas.edu.tr
Main Affiliation
Electrical-Electronics Engineering
Status
Website
Scopus Author ID
Turkish CoHE Profile ID
Google Scholar ID
WoS Researcher ID

Sustainable Development Goals Report Points

SDG data could not be loaded because of an error. Please refresh the page or try again later.
Scholarly Output

9

Articles

4

Citation Count

6

Supervised Theses

1

Scholarly Output Search Results

Now showing 1 - 2 of 2
  • Article
    Brain Age Estimation From Mri Images Using 2d-Cnn Instead of 3d-Cnn
    (2021) Gezer, Murat; Darıcı, Muazzez Buket; Yıldırım, Şüheda; Darici, Muazzez Buket; Electrical-Electronics Engineering
    Human Brain Age has become a popular aging biomarker and is used to detect differences among healthy individuals. Because of the specific changes in the human brain with aging, it is possible to estimate patients’ brain ages from their brain images. Due to developments of the ability of CNN in classification and regression from images, in this study, one of the most popular state of the art models, the DenseNet model, is utilized to estimate human brain ages using transfer learning. Since this process requires high memory load with 3D-CNN, 2D-CNN is preferred for the task of Brain Age Estimation (BAE). In this study, some experiments are carried out to reduce the number of computations while preserving the total performance. With this aim, center slices of each three brain planes are used as the inputs of the DenseNet model, and different optimizers such as Adam, Adamax and Adagrad are used for each model. The dataset is selected from the IXI (Information Extraction from Images) MRI data repository. The MAE evaluation metric is used for each model with different input set to evaluate performance. The best achieved Mean Absolute Error (MAE) is 6.3 with the input set which consisted of center slices of the sagittal plane of brain scan and the Adamax parameter.
  • Article
    Citation - WoS: 8
    Performance Analysis of Combination of Cnn-Based Models With Adaboost Algorithm To Diagnose Covid-19 Disease
    (Gazi Univ, 2023) Darici, Muazzez Buket; Darıcı, Muazzez Buket; Electrical-Electronics Engineering
    At the end of 2019, Covid-19, which is a new form of Coronavirus, has spread widely all over the world. With the increasing daily cases of this disease, fast, reliable, and automatic detection systems have been more crucial. Therefore, this study proposes a new technique that combines the machine learning algorithm of Adaboost with Convolutional Neural Networks (CNN) to classify Chest X-Ray images. Basic CNN algorithm and pretrained ResNet-152 have been used separately to obtain features of the Adaboost algorithm from Chest X-Ray images. Several learning rates and the number of estimators have been used to compare these two different feature extraction methods on the Adaboost algorithm. These techniques have been applied to the dataset, which contains Chest X-Ray images labeled as Normal, Viral Pneumonia, and Covid-19. Since the used dataset is unbalanced between classes SMOTE method has been used to make the number of images of classes balance. This study shows that proposed CNN as a feature extractor on the Adaboost algorithm(learning rate of 0.1 and 25 estimators) provides higher classification performance with 94.5% accuracy, 93% precision, 94% recall, and 93% F1-score.