Classification of Animals with Different Deep Learning Models    
Yazarlar (2)
Doç. Dr. Özkan İNİK Tokat Gaziosmanpaşa Üniversitesi, Türkiye
Bülent Turan
Tokat Gaziosmanpaşa Üniversitesi, Türkiye
Makale Türü Özgün Makale
Makale Alt Türü Uluslararası alan indekslerindeki dergilerde yayınlanan tam makale
Dergi Adı Journal of New Results in Science
Dergi ISSN 1304-7981
Dergi Tarandığı Indeksler WorldCat, Electronic Journals Library EZB, ResearchBib, Publons, Journal Factor, Journal Index, CiteFactor, Cosmos Impact Factor, Global Impact Factor, General Impact Factor, International, Innovative Journal Impact Factor, Impact Factor Services for International Journals, International Accreditation and Research Council IARC
Makale Dili İngilizce
Basım Tarihi 04-2018
Cilt No 7
Sayı 1
Sayfalar 9 / 16
Makale Linki https://dergipark.org.tr/en/pub/jnrs/issue/36616/387258
Özet
The purpose of this study is that using different deep learning models for classification of 14 different animals. Deep Learning, an area of artificial intelligence, has been used in a wide range of recent years. Especially, it using in advanced level of image processing, voice recognition and natural language processing fields. One of the most important reasons for using a large field in image analysis is that it performs the feature extraction itself on the image and gives high accuracy results. It performs learning by creating at different levels representations for each image. Unlike other machine learning methods, there is no need of an expert for feature extraction on the images. Convolution Neural Network (CNN), which is the basic architecture of deep learning models, consists of different layers. These are Convolution Layer, ReLu Layer, Pooling Layer and Full Connected Layer. Deep learning models are designed using different numbers of these layers. AlexNet and VggNet models are used for classified of 14 different animals. These animals are Horse, Camel, Cow, Goat, Sheep, Wolf, Dog, Cat, Deer, Pig, Bear, Leopard, Elephant and Kangaroo respectively. Animals that are most likely to encounter when during driving road were selected. Because thinking this work to be a preliminary work for the control of autonomous vehicle driving. The images of animals are collected in color (RGB) on the internet. In order to increase the data diversity, images were also taken from the ready data sets. A total of 150 images were collected with 125 training and 25 test data for each animal. Two different data sets have been created, with each image having …
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