A Deep Learning based Model for Fruit Grading using DenseNet

Authors

  • Dnyaneshwar V Dhande Student, Department of Computer Science and Engineering, Shri Sant Gadge Baba College of Engineering and Technology, Bhusawal, INDIA
  • Dinesh D Patil Head of the Department, Department of Computer Science and Engineering, Shri Sant Gadge Baba College of Engineering and Technology, Bhusawal, INDIA

DOI:

https://doi.org/10.31033/ijemr.12.5.2

Keywords:

Agricultural Industry, CNN, Pre-Trained Models, Softmax

Abstract

Detecting the rotten fruits become significant in the agricultural industry. Usually, the classification of fresh and rotten fruits is carried by humans is not effectual for the fruit farmers. Human beings will become tired after doing the same task multiple times, but machines do not. Thus, this paper proposes an approach to reduce human efforts, reduce the cost and time for production by identifying the defects in the fruits in the agricultural industry. If we do not detect those defects, those defected fruits may contaminate good fruits. Hence, we proposed a model to avoid the spread of rottenness. The proposed model classifies the fresh fruits and rotten fruits from the input fruit images. For this work, we have used three types of fruits, such as apple, banana, and oranges. A Convolutional Neural Network (CNN) is used for extracting the features from input fruit images, and Softmax is used to classify the images into fresh and rotten fruits. The performance of the proposed model is evaluated on a dataset that is downloaded from Kaggle and produces an accuracy of 97.82%. The results showed that the proposed CNN model can effectively classify the fresh fruits and rotten fruits.

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Published

2022-10-01

How to Cite

Dnyaneshwar V Dhande, & Dinesh D Patil. (2022). A Deep Learning based Model for Fruit Grading using DenseNet. International Journal of Engineering and Management Research, 12(5), 6–10. https://doi.org/10.31033/ijemr.12.5.2