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The Implementation of DCGAN in the Data Augmentation for the Sperm Morphology Datasets

Sayı: 26 31 Temmuz 2021
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The Implementation of DCGAN in the Data Augmentation for the Sperm Morphology Datasets

Öz

A large amount of data is the key requirement in order to train a neural network efficiently. Using a small size training set in network training causes low accuracy for model performance over the testing set and also hard to implement the model in practice. Similar to many other problems, sperm morphology datasets are also limited for training the neural network-based deep networks in order to provide an automatic evaluation of sperm morphometry. Data augmentation mitigates this problem by utilizing actual data more effectively. The standard data augmentation techniques focus on only spatial changes over the images and can only produce a restricted number of useful informative and disjunctive data. Therefore, in order to create more distinctive and diverse data than the regular spatial domain-based augmentation techniques, a deep learning-based data augmentation technique which is known as the generative model, is trained in this study for the sperm morphology datasets. The deep convolutional generative adversarial network (DCGAN) was optimized and utilized in this study for three well-known sperm morphometry datasets as SMIDS, HuSHeM, and SCIAN-Morpho. Each dataset was individually augmented to a 1000 sample size by the proposed approach. In order to optimize the network with different parameters and observe the generated data, a graphical user interface has been designed. For the similarity evaluation of the generated images to original images, the Fréchet Inception Distance (FID) score was utilized. The FID results indicate that the most similar generated images have been obtained for SMIDS with an average of 29.06 FID score. The worst performance (Average FID = 53.46) was obtained for the SCIAN-Morpho dataset, which has low resolution and data imbalance problems. Lastly, DCGAN based proposed approach resulted in an average of 44.25 FID score for the HuSHeM dataset.

Anahtar Kelimeler

Teşekkür

Important! This paper has been accepted in HORA 2021 conference for publication in your valuable journal. Our conference paper ID is 114. I have added the related reviewers who are the conference holders.

Kaynakça

  1. Balayev, K., & et al. (2020). Synthetic data generation with DCGAN. GitHub. https://github.com/Kamran017/Synthetic-Data-Generation-With-DCGAN
  2. Barışkan, M. A., Orman, Z., & Şamlı, R. (2020). Common generative adversarial network types and practical applications. Avrupa Bilim ve Teknoloji Dergisi, 585–590.
  3. Chang, V., Garcia, A., Hitschfeld, N., & Härtel, S. (2017). Gold-standard for computer-assisted morphological sperm analysis. Computers in Biology and Medicine, 83, 143–150.
  4. Goodfellow, I., Pouget-Abadie, J., Mirza, M., Xu, B., Warde-Farley, D., Ozair, S., Courville, A., & Bengio, Y. (2014). Generative adversarial nets. In Z. Ghahramani, M. Welling, C. Cortes, N. Lawrence, & K. Q. Weinberger (Eds.), Advances in Neural Information Processing Systems (27).
  5. Ilhan, H. O, Sigirci, I. O., Serbes, G., & Aydin, N. (2020). A fully automated hybrid human sperm detection and classification system based on mobile-net and the performance comparison with conventional methods. Medical & Biological Engineering & Computing, 58(5), 1047–1068.
  6. Ilhan, H. O., & Aydin, N. (2018). A novel data acquisition and analyzing approach to spermiogram tests. Biomedical Signal Processing and Control, 41, 129–139.
  7. Kapoor, D. A. (2021). The changing landscape of urologic practice. Urologic Clinics, 48(2).
  8. Karras, T., Aila, T., Laine, S., & Lehtinen, J. (2018). Progressive growing of GANs for improved quality, stability, and variation. https://arxiv.org/abs/1710.10196

Ayrıntılar

Birincil Dil

İngilizce

Konular

Mühendislik

Bölüm

Konferans Bildirisi

Yayımlanma Tarihi

31 Temmuz 2021

Gönderilme Tarihi

15 Haziran 2021

Kabul Tarihi

26 Haziran 2021

Yayımlandığı Sayı

Yıl 2021 Sayı: 26

Kaynak Göster

APA
Balayev, K., Guluzade, N., Aygün, S., & O.ilhan, H. (2021). The Implementation of DCGAN in the Data Augmentation for the Sperm Morphology Datasets. Avrupa Bilim ve Teknoloji Dergisi, 26, 307-314. https://doi.org/10.31590/ejosat.952561
AMA
1.Balayev K, Guluzade N, Aygün S, O.ilhan H. The Implementation of DCGAN in the Data Augmentation for the Sperm Morphology Datasets. EJOSAT. 2021;(26):307-314. doi:10.31590/ejosat.952561
Chicago
Balayev, Kamran, Nihad Guluzade, Sercan Aygün, ve Hamza O.ilhan. 2021. “The Implementation of DCGAN in the Data Augmentation for the Sperm Morphology Datasets”. Avrupa Bilim ve Teknoloji Dergisi, sy 26: 307-14. https://doi.org/10.31590/ejosat.952561.
EndNote
Balayev K, Guluzade N, Aygün S, O.ilhan H (01 Temmuz 2021) The Implementation of DCGAN in the Data Augmentation for the Sperm Morphology Datasets. Avrupa Bilim ve Teknoloji Dergisi 26 307–314.
IEEE
[1]K. Balayev, N. Guluzade, S. Aygün, ve H. O.ilhan, “The Implementation of DCGAN in the Data Augmentation for the Sperm Morphology Datasets”, EJOSAT, sy 26, ss. 307–314, Tem. 2021, doi: 10.31590/ejosat.952561.
ISNAD
Balayev, Kamran - Guluzade, Nihad - Aygün, Sercan - O.ilhan, Hamza. “The Implementation of DCGAN in the Data Augmentation for the Sperm Morphology Datasets”. Avrupa Bilim ve Teknoloji Dergisi. 26 (01 Temmuz 2021): 307-314. https://doi.org/10.31590/ejosat.952561.
JAMA
1.Balayev K, Guluzade N, Aygün S, O.ilhan H. The Implementation of DCGAN in the Data Augmentation for the Sperm Morphology Datasets. EJOSAT. 2021;:307–314.
MLA
Balayev, Kamran, vd. “The Implementation of DCGAN in the Data Augmentation for the Sperm Morphology Datasets”. Avrupa Bilim ve Teknoloji Dergisi, sy 26, Temmuz 2021, ss. 307-14, doi:10.31590/ejosat.952561.
Vancouver
1.Kamran Balayev, Nihad Guluzade, Sercan Aygün, Hamza O.ilhan. The Implementation of DCGAN in the Data Augmentation for the Sperm Morphology Datasets. EJOSAT. 01 Temmuz 2021;(26):307-14. doi:10.31590/ejosat.952561

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