Classification of Trifolium Seeds by Computer Vision Methods
Author:
Eryigit Recep1, Ar Yilmaz1, Tugrul Bulent1
Affiliation:
1. Department of Computer Engineering Ankara University Golbasi, Ankara, TURKEY
Abstract
Traditional machine learning methods have been extensively used in computer vision applications. However, recent improvements in computer technology have changed this trend. The dominance of deep learning methods in the field is observed when state-of-the-art studies are examined. This study employs traditional computer vision methods and deep learning to classify five different types of Trifolium seeds. Trifolium, the leading food for nutritious dairy products, plays an essential role in livestock in some parts of the world. First, an image data set consisting of 1903 images belonging to five different species of Trifolium was created. Descriptive and quantitative morphological features of each species are extracted using image-processing techniques. Then a feature matrix was created using eight different features. After feature selection and transformation, unnecessary and irrelevant features were removed from the data set to build more accurate and robust classification models. Four common and frequently applied classification algorithms created a prediction model in the seed data set. In addition, the same dataset was trained using VGG19, a convolutional neural network. Finally, the performance metrics of each classifier were computed and evaluated. The decision tree has the worst accuracy among the four traditional methods, 92.07%. On the other hand, Artificial Neural Network has the highest accuracy with 94.59%. As expected, VGG19 outperforms all traditional methods with 96.29% accuracy. However, as the results show, traditional methods can also produce results close to the deep learning methods.
Publisher
World Scientific and Engineering Academy and Society (WSEAS)
Subject
Computer Science Applications,Control and Systems Engineering
Reference24 articles.
1. P. Ridao, M. Carreras, D. Ribas, and R. Garcia, “Visual inspection of hydroelectric dams using an autonomous underwater vehicle,” Journal of Field Robotics, vol. 27, no. 6, pp. 759– 778, 2010. 2. C. Kanellakis and G. Nikolakopoulos, “Survey on computer vision for uavs: Current developments and trends,” Journal of Intelligent & Robotic Systems, vol. 87, no. 1, pp. 141–168, 2017. 3. J. Gao, Y. Yang, P. Lin, and D. S. Park, “Computer vision in healthcare applications,” Journal of Healthcare Engineering, vol. 2018, 2018. 4. A. Esteva, A. Robicquet, B. Ramsundar, V. Kuleshov, M. DePristo, K. Chou, C. Cui, G. Corrado, S. Thrun, and J. Dean, “A guide to deep learning in healthcare,” Nature Medicine, vol. 25, no. 1, pp. 24–29, 2019. 5. J. Ma, D.-W. Sun, J.-H. Qu, D. Liu, H. Pu, W.-H. Gao, and X.-A. Zeng, “Applications of computer vision for assessing quality of agrifood products: A review of recent research advances,” Critical Reviews in Food Science and Nutrition, vol. 56, no. 1, pp. 113–127, 2016.
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|