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Automated Tomato Maturity Estimation Using an Optimized Residual Model with Pruning and Quantization Techniques

13 March 2025
Muhammad Waseem
Chung-Hsuan Huang
Muhammad Muzzammil Sajjad
Laraib Haider Naqvi
Yaqoob Majeed
Tanzeel Ur Rehman
Tayyaba Nadeem
    MQ
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Abstract

Tomato maturity plays a pivotal role in optimizing harvest timing and ensuring product quality, but current methods struggle to achieve high accuracy along computational efficiency simultaneously. Existing deep learning approaches, while accurate, are often too computationally demanding for practical use in resource-constrained agricultural settings. In contrast, simpler techniques fail to capture the nuanced features needed for precise classification. This study aims to develop a computationally efficient tomato classification model using the ResNet-18 architecture optimized through transfer learning, pruning, and quantization techniques. Our objective is to address the dual challenge of maintaining high accuracy while enabling real-time performance on low-power edge devices. Then, these models were deployed on an edge device to investigate their performance for tomato maturity classification. The quantized model achieved an accuracy of 97.81%, with an average classification time of 0.000975 seconds per image. The pruned and auto-tuned model also demonstrated significant improvements in deployment metrics, further highlighting the benefits of optimization techniques. These results underscore the potential for a balanced solution that meets the accuracy and efficiency demands of modern agricultural production, paving the way for practical, real-world deployment in resource-limited environments.

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@article{waseem2025_2503.10940,
  title={ Automated Tomato Maturity Estimation Using an Optimized Residual Model with Pruning and Quantization Techniques },
  author={ Muhammad Waseem and Chung-Hsuan Huang and Muhammad Muzzammil Sajjad and Laraib Haider Naqvi and Yaqoob Majeed and Tanzeel Ur Rehman and Tayyaba Nadeem },
  journal={arXiv preprint arXiv:2503.10940},
  year={ 2025 }
}
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