Harvest Smarter, Not Harder: Machine Learning Meets Tomato Farming

23 January, 2025
Harvest Smarter, Not Harder: Machine Learning Meets Tomato Farming

Researchers have developed a machine learning model using hyperspectral imaging to assess pre-harvest tomato quality. The study introduces a cost-effective, non-destructive method to predict key quality parameters, including weight, firmness, and lycopene (a natural antioxidant) content. This innovative approach enables farmers to monitor fruit development in real-time, optimizing harvest timing and improving crop quality. The research demonstrates a significant leap forward in precision agriculture and sustainable food production.


 

A research team led by Dr. David Helman from the Faculty of Agriculture, Food and Environment at the Hebrew University of Jerusalem has developed a novel machine learning model employing hyperspectral imaging to assess the quality of tomatoes before harvest. Hyperspectral images of specific ranges of light wavelengths, known as spectral bands, are used to study objects' properties based on how they reflect light. This pioneering approach addresses challenges associated with traditional methods, offering a faster, non-destructive, and cost-effective alternative.

The study, conducted in collaboration with researchers from Bar-Ilan University and the Volcani Center, used a handheld hyperspectral camera to collect data from 567 tomato fruits across five cultivars. Machine learning algorithms, including Random Forest and Artificial Neural Networks, were employed to predict seven critical quality parameters: weight, firmness, total soluble solids (TSS), citric acid, ascorbic acid, lycopene, and pH. The models demonstrated high accuracy, with the Random Forest algorithm achieving an R² of 0.94 for weight and 0.89 for firmness, among others.

Key findings of the study include:


•    Efficiency in Band Selection: The model effectively predicts quality parameters using only five spectral bands, paving the way for the development of affordable, portable devices.
•    Broader Applicability: Tested across diverse cultivars and growing conditions, the model exhibits robustness and scalability.
•    Pre-Harvest Benefits: Farmers can now monitor fruit quality during ripening stages, optimizing harvest timing and improving produce quality.

“Our research aims to bridge the gap between advanced imaging technology, AI, and practical agricultural applications,” said Dr. Helman. “This work has the potential to revolutionize quality monitoring not only in tomatoes but also in other crops. Our next step is to build a low-cost device (ToMAI-SENS) based on our model that will be used across the fruit value chain, from farms to consumers.”

The study highlights the potential integration of this technology into agricultural practices, from smart harvesting systems to consumer tools for evaluating produce quality in supermarkets.

The research paper titled “Machine learning models based on hyperspectral imaging for pre-harvest tomato fruit quality monitoring” is now available in Computers and Electronics in Agriculture and can be accessed at https://doi.org/10.1016/j.compag.2024.109788

 

Researchers:
Eitan Fass1, Eldar Shlomi2, Carmit Ziv3, Oren Glikman2, David Helman1,4

Institutions:
1)    Department of Soil and Water Sciences, Institute of Environmental Sciences, The Robert H. Smith Faculty of Agriculture, Food and Environment, The Hebrew University of Jerusalem
2)    Department of Computer Science, Bar-Ilan University
3)    Department of Postharvest Science, Agricultural Research Organization, Volcani Center
4)    The Advanced School for Environmental Studies, The Hebrew University of Jerusalem

For a century, the Hebrew University of Jerusalem has been a beacon for visionary minds who challenge norms and shape the future. Founded by luminaries like Albert Einstein, who entrusted his intellectual legacy to the university, it is dedicated to advancing knowledge, fostering leadership, and promoting diversity. Home to over 23,000 students from 90 countries, the Hebrew University drives much of Israel’s civilian scientific research, with over 11,000 patents and groundbreaking contributions recognized by eight Nobel Prizes, two Turing Awards, and a Fields Medal. Ranked 81st globally by the Shanghai Ranking (2024), it celebrates a century of excellence in research, education, and innovation. To learn more about the university’s academic programs, research, and achievements, visit the official website at http://new.huji.ac.il/en.