Fruit Quality Detection Using Medical Image Processing

Main Article Content

Thilak Raj M
Kavikarthik K
Nithish Kumar S.R
Shankar K.R

Keywords

Fruit quality, image processing, Tensor flow, Algorithm, organic, non-organic

Abstract

The equilibrium between the soil, plants, animals, and human health has been disrupted by the increased use of chemicals in intensive farming. Those who are concerned about their health have been encouraged to learn more about and support organic farming because of the significant usage of pesticides and antibiotics in inorganic food production systems. The study found that compared to other types of food, food grown organically tastes better and has a higher ratio of vitamins and minerals. The danger of heart attacks, colon cancer, and other ailments is significantly decreased by eating organic food. Due to its environmentally friendly practices and rising consumer awareness of food safety, organic farming has gained popularity. The government is vital in encouraging farmers to switch from inorganic to organic agriculture systems since organic farming is economically viable in the country.
The government must also take the necessary steps, including establishing a separate market for organic products, announcing a support price, increasing awareness-raising efforts through more programs, subsidizing suppliers of organic inputs, encouraging organic farmers with subsidies, accrediting farms, and boosting investment in research and development of organic farming methods.

Abstract 164 | PDF Downloads 157

References

1. Xiaoyang Liu, Dean Zhao,Weikuan jia, Wei Ji, Yueping Sun, “A Detection Method for Apple Fruits Based on Color and Shape Features” , IEEE Access, 22 May 2019
2. Seng, Woo Chaw, and Seyed Hadi Mirisaee. "A new method for fruits recognition system." Electrical Engineering and Informatics 2009. ICEEI'09. International Conference on. Vol. 1. IEEE, 2009.
3. Nishat Tasnim, Md. Romyull Islam, and Shaon Shuvo “A Convolution Neural Network Based Classification Approach for Recognizing Traditional Foods of Bangladesh from Food Images” Sahu, Dameshwari, and Chitesh Dewangan.
4. "Identification and Classification of Mango Fruits Using Image Processing." Int. J. Sci. Res. Comput. Sci. Eng. Inf. Technol 2.2 (2017): 203-210.
5. Shadman Sakib1, Zahidun Ashrafi2, Md. Abu Bakr Sidique3. ''Implementation of Fruits Recognition Classifier using Convolutional Neural Network Algorithm for Observation of Accuracies for Various Hidden Layers
6. Hannan M.W., Burks T.F., Bulanon D.M., “A Machine Vision Algorithm for Orange Fruit Detection”, Agricultural Engineering International: the CIGR E journal, volXI,Pages:1-7, December-2009.
7. Vyas et al, “Colour Feature Extraction Techniques of Fruits: A Survey”, International Journal of Computer Applications (0975 – 8887) Volume 83 – No 15, December 2013.
8. Ms. Snehal Mahajan, Prof. S. T. Patil “Optimization and Classification of Fruit using Machine Learning Algorithm”. IJIRST – International Journal for Innovative Research in Science & Technology Vol.3- No 01 June 2016
9. V. Leemans and M.-F. Destain, ``A real-time grading method of apples based on features extracted from defects,'' J. Food Eng., vol. 61, no. 1, pp. 83_89, Jan. 2004.
10. T.-N. Do and J.-D. Fekete, ``Large scale classification with support vector machine algorithms,'' in Proc. 6th Int. Conf. Mach. Learn. Appl., Cincinnati, OH, USA, Dec. 2007, pp. 7_12.
11. Bargoti, S. and Underwood, J., 2017, May. Deep fruit detection in orchards. In Robotics and Automation (ICRA), 2017 IEEE International Conference on(pp. 3626–3633). IEEE
12. Prabha, D. Surya, and J. Satheesh Kumar. "A study on image processing methods for fruit classification." Proc. Int. Conf. on Computational Intelligence and Information Technology, CIIT 2012.
13. Kavdır, I., Guyer, D.E.: Comparison of Artificial Neural Networks and Statistical Classifiers in Apple Sorting using Textural Feature,. Biosystems Engg. 89, 331-344 (2004)
14. Shadman Sakib1, Zahidun Ashrafi2, Md. Abu Bakr Sidique3. ''Implementation of Fruits Recognition Classifier using Convolutional Neural Network Algorithm for Observation of Accuracies for Various Hidden Layers
15. Xiaoyang Liu, Dean Zhao,Weikuan jia, Wei Ji, Yueping Sun, “A Detection Method for Apple Fruits Based on Color and Shape Features” , IEEE Access, 22 May 2019