Deep Learning-Based Tomato Ripeness Detection : A ResNet-152 Approach

Authors

  • Mohammed Mutahar  Computer Science and Engineering, Presidency University, Bangalore, Karnataka, India
  • Shyamalan Kannan  Computer Science and Engineering, Presidency University, Bangalore, Karnataka, India
  • Mohammed Mustafa Jafer  Computer Science and Engineering, Presidency University, Bangalore, Karnataka, India
  • Maneesh Ragavendra K  Computer Science and Engineering, Presidency University, Bangalore, Karnataka, India

DOI:

https://doi.org/10.32628/IJSRST5241113

Keywords:

Convolutional Neural Networks (CNNs), ResNet-152, deep neural network, fine-grained categorization, residual blocks, tomato ripeness detection, image classification, automated sorting system, agricultural, food processing industries.

Abstract

This research paper presents an advanced deep learning framework for tomato ripeness and maturity detection, employing Convolutional Neural Networks (CNNs) as the primary tool for automated classification. In particular, the study emphasizes the utilization of the ResNet-152 architecture, a sophisticated deep neural network known for its exceptional performance in image classification tasks. ResNet-152 addresses the challenges of fine-grained categorization by enabling the extraction of intricate visual features such as color nuances, textures, and shapes inherent to tomatoes. This eliminates the necessity for manual feature engineering, enhancing the model's ability to discern between "RIPE," "UNRIPE," and "ROTTEN" tomato classes with unprecedented accuracy. The ResNet-152 architecture's effectiveness lies in its unique design, featuring residual blocks that facilitate the training of very deep networks. This architecture mitigates the vanishing gradient problem and enables the model to learn complex hierarchical features, contributing to its state-of-the-art performance in image classification. In the context of tomato ripeness detection, ResNet-152 acts as a powerful tool for capturing and understanding the intricate visual cues that define different ripeness states, laying the foundation for an efficient and accurate automated sorting system in the agricultural and food processing industries.

References

  1. Agarwal, M., et al. Tomato Leaf Disease Detection using Convolutional Neural Networks. International Conference on Computational Intelligence and Data Science (ICCIDS 2019).
  2. Afonso, M., et al. Tomato Fruit Detection and Counting in Greenhouses Using Deep Learning. Frontiers in Plant Science, 2020. DOI: 10.3389/fpls.2020.571299.[2]
  3. Zhao, M., et al. Determination of Quality and Maturity of Processing Tomatoes Using Near-Infrared Hyperspectral Imaging with Interpretable Machine Learning Methods.
  4. Appe, S.R.N., et al. Tomato Ripeness Detection and Classification using VGG based CNN Models. International Journal of Intelligent Systems and Applications in Engineering (IJISAE, 2023, 11(1), 296–302). ISSN: 2147-6799.

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Published

2024-02-29

Issue

Section

Research Articles

How to Cite

[1]
Mohammed Mutahar, Shyamalan Kannan, Mohammed Mustafa Jafer, Maneesh Ragavendra K "Deep Learning-Based Tomato Ripeness Detection : A ResNet-152 Approach" International Journal of Scientific Research in Science and Technology(IJSRST), Online ISSN : 2395-602X, Print ISSN : 2395-6011,Volume 11, Issue 1, pp.34-41, January-February-2024. Available at doi : https://doi.org/10.32628/IJSRST5241113