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Dive into the research topics where Murat Karabatak is active.

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Featured researches published by Murat Karabatak.


Expert Systems With Applications | 2009

An expert system for detection of breast cancer based on association rules and neural network

Murat Karabatak; M. Cevdet Ince

This paper presents an automatic diagnosis system for detecting breast cancer based on association rules (AR) and neural network (NN). In this study, AR is used for reducing the dimension of breast cancer database and NN is used for intelligent classification. The proposed AR+NN system performance is compared with NN model. The dimension of input feature space is reduced from nine to four by using AR. In test stage, 3-fold cross validation method was applied to the Wisconsin breast cancer database to evaluate the proposed system performances. The correct classification rate of proposed system is 95.6%. This research demonstrated that the AR can be used for reducing the dimension of feature space and proposed AR+NN model can be used to obtain fast automatic diagnostic systems for other diseases.


Expert Systems With Applications | 2009

A new feature selection method based on association rules for diagnosis of erythemato-squamous diseases

Murat Karabatak; M. Cevdet Ince

In this paper, a new feature selection method based on Association Rules (AR) and Neural Network (NN) is presented for the diagnosis of erythemato-squamous diseases. AR is used for reducing the dimension of erythemato-squamous diseases dataset and NN is used for efficient classification. The proposed AR+NN system performance is compared with that of other feature selection algorithms+NN. The dimension of input feature space is reduced from thirty four to twenty four by using AR. In test stage, 3-fold cross validation method is applied to the erythemato-squamous diseases dataset to evaluate the proposed system performances. The correct classification rate of proposed system is 98.61%. This research demonstrated that the AR can be used for reducing the dimension of feature space and proposed AR+NN model can be used to obtain fast automatic diagnostic systems for other diseases.


Drying Technology | 2011

An Investigation of Drying Process of Shelled Pistachios in a Newly Designed Fixed Bed Dryer System by Using Artificial Neural Network

Asım Balbay; Ömer Şahin; Murat Karabatak

In this paper, the drying of Siirt pistachios (SSPs) in a newly designed fixed bed dryer system and the prediction of drying characteristics using artificial neural network (ANN) are presented. Drying characteristics of SSPs with initial moisture content (MC) of 42.3% dry basis (db) were studied at different air temperatures (60, 80, and 100 °C) and air velocities (0.065, 0.1, and 0.13 m/s) in a newly designed fixed bed dryer system. Obtained results of experiments were used for ANN modeling and compared with experimental data. Falling rate period was observed during all the drying experiments; constant rate period was not observed. Furthermore, in the presented study, the application of ANN for predicting the drying time (DT) for a good quality product (output parameter for ANN modeling) was investigated. In order to train the ANN, experimental measurements were used as training data and test data. The back propagation learning algorithm with two different variants, so-called Levenberg–Marguardt (LM) and scaled conjugate gradient (SCG), and tangent sigmoid transfer function were used in the network so that the best approach can be determined. The most suitable algorithm and neuron number in the hidden layer are found out as LM with 15 neurons. For this number level, after the training, it is found that Root-mean squared (RMS) value is 0.3692, and absolute fraction of variance (R2) value is 99.99%. It is concluded that ANNs can be used for prediction of drying SSPs as an accurate method in similar systems.


Applied Soft Computing | 2011

Wavelet domain association rules for efficient texture classification

Murat Karabatak; M. Cevdet Ince; Abdulkadir Sengur

The wavelet domain association rules method is proposed for efficient texture characterization. The concept of association rules to capture the frequently occurring local intensity variation in textures. The frequency of occurrence of these local patterns within a region is used as texture features. Since texture is basically a multi-scale phenomenon, multi-resolution approaches such as wavelets, are expected to perform efficiently for texture analysis. Thus, this study proposes a new algorithm which uses the wavelet domain association rules for texture classification. Essentially, this work is an extension version of an early work of the Rushing et al. [10,11], where the generation of intensity domain association rules generation was proposed for efficient texture characterization. The wavelet domain and the intensity domain (gray scale) association rules were generated for performance comparison purposes. As a result, Rushing et al. [10,11] demonstrated that intensity domain association rules performs much more accurate results than those of the methods which were compared in the Rushing et al. work. Moreover, the performed experimental studies showed the effectiveness of the wavelet domain association rules than the intensity domain association rules for texture classification problem. The overall success rate is about 97%.


IEEE Geoscience and Remote Sensing Letters | 2016

Efficient Airport Detection Using Line Segment Detector and Fisher Vector Representation

Umit Budak; Ugur Halici; Abdulkadir Sengur; Murat Karabatak; Yang Xiao

In this letter, a two-stage method for airport detection on remote sensing images is proposed. In the first stage, a new algorithm composed of several line-based processing steps is used for extraction of candidate airport regions. In the second stage, the scale-invariant feature transformation and Fisher vector coding are used for efficient representation of the airport and nonairport regions and support vector machines employed for classification. In order to evaluate the performance of the proposed method, extensive experiments are conducted on airports around the world with different layouts. The measures used in the evaluation are accuracy, sensitivity, and specificity. The proposed method achieved an accuracy of 94.6%, which was benchmarked with two previous methods to prove its superiority.


signal processing and communications applications conference | 2008

An expert sytem for diagnosis breast cancer based on Principal Component Analysis method

Murat Karabatak; M.C. Ince; E. Avci

This paper presents an expert diagnosis system for detecting breast cancer based on Principle Component Analysis (PCA). In this study, PCA is used for reducing the dimension of breast cancer database and adaptive network based fuzzy inference system (ANFIS) and artificial neural network (ANN) are used for intelligent classification respectively. In there, PCA-ANN system performance is compared with PCA-ANFIS. The dimension of input feature space is reduced from nine to four by using PCA. In test stage, 3-fold cross validation method was applied to the Wisconsin breast cancer database to evaluate the proposed systems performances. The correct classification rates of proposed systems are 97.2 % and 95.3 % for PCA-YSA and PCA-ANFIS respectively.


signal processing and communications applications conference | 2010

Rotational invariant image matching based on phase only correlation

Abdulkadir Sengur; Murat Karabatak

In this work, a rotational invariant image template matching method based on log-polar transform and phase only correlation is presented. The method is composed of two stages. While applying the 2nd Hanning window is formed the first stage, several steps, for phase-based rotational image template matching constitutes the second stage. MATLAB is used for computer simulations. We cropped various image templates for matching purposes. We then rotated that template images with 15, 30 45, 60 and 75 degrees respectively and we saved them. Thus, we obtained totally 60 images for 10 different template images. We finally obtained 93.33% matching accuracy.


Measurement | 2015

A new classifier for breast cancer detection based on Naïve Bayesian

Murat Karabatak


2018 6th International Symposium on Digital Forensic and Security (ISDFS) | 2018

Terrorist attacks in Turkey: An evaluate of terrorist acts that occurred in 2016

Dilkhaz Yaseen Mohammed; Murat Karabatak


2018 6th International Symposium on Digital Forensic and Security (ISDFS) | 2018

Perceptions of high school students regarding cyberbullying and precautions on coping with cyberbullying

Songül Karabatak; Aysel Namli; Murat Karabatak

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Ugur Halici

Middle East Technical University

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