MobileNets-V1 Architecture for Web Based Fish Image Classification

Authors

  • Herlambang Duwi Prasetyo University of Pembangunan Nasional Veteran
  • Pandu Ananto Hogantara University of Pembangunan Nasional Veteran
  • Ika Nurlaili Isnainiyah University of Pembangunan Nasional Veteran

DOI:

https://doi.org/10.32734/jocai.v5.i2-6291

Keywords:

MobileNets-V1, Fish Image Classification, Transfer Learning, Deep Learning, Epoch

Abstract

Recently, the research study about fish identification become a very challenging to researchers. Climate and environmental changes have a major impact on fish species and their environment. To identify fish using manual process is time consuming and need effort to gather samples in different environment. The identification of fish species is performed by using feature extraction and a series of features. Generally, the characteristic is divided into two groups namely general characteristics and anatomical features. General characteristics is characteristic that can be seen directly without the aid of tools. The characteristics include color, texture, and fiber direction. Although, manual is performed by expert but is possible that identification is not accurate. Therefore, to overcome the problem, we create a web-based application for identifying fish by using image as input. We use 10 class data with 300 images for each class. Then, we split into training and testing with 80:20 ratio. The application was developed by using the MobileNets- V1 model. The proposed method has accuracy on 89 %, that obtain from training score is 91.04%, validation is 88,96%. This score is higher than other methods that used in this application. Total time for computation process is about 127 minutes.

Downloads

Download data is not yet available.

References

D. Rathi, S. Jain and D. S. Indu, "Underwater Fish Species Classification Using Convolutional Neural Network and Deep Learning," arXiv, pp. 1-6, 2018.

M. A. Iqbal, Z. Wang, Z. A. Ali and S. Riaz, "Automatic Fish Species Classification Using Deep Convolutional Neural Networks," Wireless Personal Communications, vol. 116, no. 2, pp. 1043-1053, 2021.

S. Fauzi, P. Eosina and G. F. Laxmi, "Implementasi Convolutional Neural Network Untuk Identifikasi Ikan Air Tawar," Seminar Nasional Teknologi Informasi, pp. 163-167, 2019.

N. E. M. Khalifa, M. H. N. Taha and A. E. Hassanien, "Aquarium Family Fish Species Identification System Using Deep Neural Networks," Advances in Intelligent Systems and Computing, vol. 845, pp. 347-356, 2019.

Hendriyana and Y. H. Maulana, "Identifikasi Jenis Kayu menggunakan Convolutional Neural Network dengan Arsitektur Mobilenet," Jurnal RESTI (Rekayasa Sistem dan Teknologi Informasi), vol. 4, no. 1, pp. 70-76, 2020.

A. Rajbongshi, T. Sarker and M. M. Ahamad, "Rose Diseases Recognition using MobileNet," 4th International Symposium on Multidisciplinary Studies and Innovative Technologies, ISMSIT 2020 - Proceedings, 2020.

E. Suharto, Suhartono, A. P. Widodo and S. E. A. , "The use of mobilenet v1 for identifying various types of freshwater fish," Journal of Physics: Conference Series, vol. 1524, no. 1, pp. 1-6, 2020.

W. Ansar, A. R. Shahid, B. Raza, A. H. Dar and A. A. Safi, "Breast cancer detection and localization using mobilenet based transfer learning for mammograms," Communications in Computer and Information Science, vol. 1187 CCIS, pp. 11-21, 2020.

C. Pornpanomchai, B. L. P. Leerasakultham and W. Kitiyanan, "Shape-and Texture-Based Fish Image Recognition System," Nat. Sci., vol. 47, pp. 624-634, 2013.

A. Hernandez-Serna and L. F. Jimenez-Segura, "Automatic identification ofspecies with neural networks," PeerJ, 2014.

C. Spampinato, Y.-H. Chen-Burger, G. Nadarajan and R. B. Fisher, "DETECTING ,TRACKING AND COUNTING FISH IN LOW QUALITY UNCONSTRAINED UNDERWATER VIDEOS".

I. N. Purnama, "HERBAL PLANT DETECTION BASED ON LEAVES IMAGE USING CONVOLUTIONAL NEURAL NETWORK WITH MOBILE NET ARCHITECTURE," Jurnal Ilmu Pengetahuan dan Teknologi Komputer (JITK), vol. 6, no. 1, 2020.

K. Anantharajah, Z. Y. Ge, C. McCool, S. Denman, C. Fookes, P. Corke, D. Tjondronegoro and S. Sridharan, "Local Inter-Session Variability Modelling for Object Classification," IEEE Winter Conference on Applications of Computer Vision, pp. 309-316, 2014.

Srinivasan and Sripaad, "Kaggle: Fish Species Image Data," 9 November 2020. [Online]. Available: https://www.kaggle.com/sripaadsrinivasan/fish-species-image-data. [Accessed 1 May 2021].

Q. Xiang, X. Wang, R. Li, G. Zhang, J. Lai and Q. Hu, "Fruit Image Classification Based on MobileNetV2 with Transfer Learning Technique," ACM International Conference Proceeding Series, 2019.

S. I. Saedi and H. Khosravi, "A Deep Neural Network Approach Towards Real-Time On-Branch Fruit Recognition for Precision Horticulture," Expert Systems with Applications, 2020.

T. Nguyen, I. Hettiarachchi, A. Khatami, L. Gordon-Brown, C. P. Lim and S. Nahavandi, "Classification of Multi-Class BCI Data by Common Spatial Pattern and Fuzzy System," IEEE Access, vol. 6, pp. 27873-27884, 2018.

Published

2021-07-30

How to Cite

Herlambang Duwi Prasetyo, Pandu Ananto Hogantara, & Ika Nurlaili Isnainiyah. (2021). MobileNets-V1 Architecture for Web Based Fish Image Classification. Data Science: Journal of Computing and Applied Informatics, 5(2), 60-70. https://doi.org/10.32734/jocai.v5.i2-6291