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Derin Öğrenme ve Görüntü Analizinde Kullanılan Derin Öğrenme Modelleri

Cilt: 6 Sayı: 3 29 Aralık 2017
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Deep Learning and Deep Learning Models Used in Image Analysis

Öz

In order to establish a  machine learning system or model definition with classical machine learning techniques, it is necessary to first extract the feature vector. Experts are needed for extract the feature vector. For this reason, these techniques are insufficient at the point where a raw data can be processed. Deep learning has made tremendous progress by eliminating this problem, which has been a challenge for many years in the field of machine learning. Unlike traditional machine learning and image processing techniques, Deep Learning do the learning process on raw data. It obtains the necessary information from the representations that it formed in different layers. Deep learning uses many areas such as image recognition, voice recognition, natural language processing and gene analysis etc. Deep learning first attracted attention with its success in the Large Scale Visual Recognition (ImageNet) competition for object classification in 2012. In fact, the foundations of Deep Learning depend on the past. But it has become popular in recent years mainly due to two reasons. The first is the existence of as much data as training. The second is the hardware infrastructure that will process this data. In this study, information about deep learning was given and detailed information about layers of convolution, pooling, ReLu and fully connected layers, which are layers of Convolution Neural Network (CNN) architecture. It also describes AlexNet, ZFNet, GoogLeNet, Microsoft RestNet and Region with Convolution Neural Network (R-CNN) architectures, which can be considered as basic architects for Deep Learning.

Anahtar Kelimeler

Kaynakça

  1. Amodei, D., S. Ananthanarayanan, R. Anubhai, J. Bai, E. Battenberg, C. Case, J. Casper, B. Catanzaro, Q. Cheng and G. Chen (2016). Deep speech 2: End-to-end speech recognition in english and mandarin. International Conference on Machine Learning.
  2. Assael, Y. M., B. Shillingford, S. Whiteson and N. de Freitas (2016). "LipNet: End-to-End Sentence-level Lipreading."
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  4. Bengio, Y., A. Courville and P. Vincent (2013). "Representation Learning: A Review and New Perspectives." Ieee Transactions on Pattern Analysis and Machine Intelligence 35(8): 1798-1828.
  5. Bengio, Y., P. Lamblin, D. Popovici and H. Larochelle (2007). "Greedy layer-wise training of deep networks." In NIPS’2006 . 14, 19, 200, 323, 324, 530, 532.
  6. Bengio, Y. and Y. LeCun (2007). "Scaling learning algorithms towards AI." In Large Scale Kernel Machines . 19.
  7. Bergstra, J. and Y. Bengio (2012). "Random search for hyper-parameter optimization." Journal of Machine Learning Research 13(Feb): 281-305.
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Ayrıntılar

Birincil Dil

Türkçe

Konular

Mühendislik

Bölüm

Derleme

Yazarlar

Özkan İnik
GAZİOSMANPAŞA ÜNİVERSİTESİ
Türkiye

Yayımlanma Tarihi

29 Aralık 2017

Gönderilme Tarihi

24 Temmuz 2017

Kabul Tarihi

8 Aralık 2017

Yayımlandığı Sayı

Yıl 2017 Cilt: 6 Sayı: 3

Kaynak Göster

APA
İnik, Ö., & Ülker, E. (2017). Derin Öğrenme ve Görüntü Analizinde Kullanılan Derin Öğrenme Modelleri. Gaziosmanpaşa Bilimsel Araştırma Dergisi, 6(3), 85-104. https://izlik.org/JA96NA82MN
AMA
1.İnik Ö, Ülker E. Derin Öğrenme ve Görüntü Analizinde Kullanılan Derin Öğrenme Modelleri. GBAD. 2017;6(3):85-104. https://izlik.org/JA96NA82MN
Chicago
İnik, Özkan, ve Erkan Ülker. 2017. “Derin Öğrenme ve Görüntü Analizinde Kullanılan Derin Öğrenme Modelleri”. Gaziosmanpaşa Bilimsel Araştırma Dergisi 6 (3): 85-104. https://izlik.org/JA96NA82MN.
EndNote
İnik Ö, Ülker E (01 Aralık 2017) Derin Öğrenme ve Görüntü Analizinde Kullanılan Derin Öğrenme Modelleri. Gaziosmanpaşa Bilimsel Araştırma Dergisi 6 3 85–104.
IEEE
[1]Ö. İnik ve E. Ülker, “Derin Öğrenme ve Görüntü Analizinde Kullanılan Derin Öğrenme Modelleri”, GBAD, c. 6, sy 3, ss. 85–104, Ara. 2017, [çevrimiçi]. Erişim adresi: https://izlik.org/JA96NA82MN
ISNAD
İnik, Özkan - Ülker, Erkan. “Derin Öğrenme ve Görüntü Analizinde Kullanılan Derin Öğrenme Modelleri”. Gaziosmanpaşa Bilimsel Araştırma Dergisi 6/3 (01 Aralık 2017): 85-104. https://izlik.org/JA96NA82MN.
JAMA
1.İnik Ö, Ülker E. Derin Öğrenme ve Görüntü Analizinde Kullanılan Derin Öğrenme Modelleri. GBAD. 2017;6:85–104.
MLA
İnik, Özkan, ve Erkan Ülker. “Derin Öğrenme ve Görüntü Analizinde Kullanılan Derin Öğrenme Modelleri”. Gaziosmanpaşa Bilimsel Araştırma Dergisi, c. 6, sy 3, Aralık 2017, ss. 85-104, https://izlik.org/JA96NA82MN.
Vancouver
1.Özkan İnik, Erkan Ülker. Derin Öğrenme ve Görüntü Analizinde Kullanılan Derin Öğrenme Modelleri. GBAD [Internet]. 01 Aralık 2017;6(3):85-104. Erişim adresi: https://izlik.org/JA96NA82MN