Affiliation:
1. CBQF—Centro de Biotecnologia e Química Fina—Laboratório Associado, Escola Superior de Biotecnologia, Universidade Católica Portuguesa, Rua Diogo Botelho 1327, 4169-005 Porto, Portugal
Abstract
Avocado production is mostly confined to tropical and subtropical regions, leading to lengthy distribution channels that, coupled with their unpredictable post-harvest behavior, render avocados susceptible to significant loss and waste. To enhance the monitoring of ‘Hass’ avocado ripening, a data-driven tool was developed using a deep learning approach. This study involved monitoring 478 avocados stored in three distinct storage environments, using a 5-stage Ripening Index to classify each fruit’s ripening phase based on their shared characteristics. These categories were paired with daily photographic records of the avocados, resulting in a database of labeled images. Two convolutional neural network models, AlexNet and ResNet-18, were trained using transfer learning techniques to identify distinct ripening indicators, enabling the prediction of ripening stages and shelf-life estimations for new unseen data. The approach achieved a final prediction accuracy of 88.8% for the ripening assessment, with 96.7% of predictions deviating by no more than half a stage from their actual classifications when considering the best side of the samples. The average shelf-life estimates based on the attributed classifications were within 0.92 days of the actual shelf-life, whereas the predictions made by the models had an average deviation of 0.96 days from the actual shelf-life.
Funder
FCT—Fundação para a Ciência e a Tecnologia
Reference53 articles.
1. Strategies to Reduce Post-Harvest Losses for Fruits and Vegetables;Elik;Strategies,2019
2. Chakraverty, A., and Singh, R.P. (2014). Postharvest Technology and Food Process Engineering, CRC Press.
3. Deep Learning and Machine Vision for Food Processing: A Survey;Zhu;Curr. Res. Food Sci.,2021
4. Shi, C., Zhao, Z., Jia, Z., Hou, M., Yang, X., Ying, X., and Ji, Z. (2023). Artificial Neural Network-Based Shelf Life Prediction Approach in the Food Storage Process: A Review. Crit. Rev. Food Sci. Nutr., 1–16. online ahead of print.
5. Albert-Weiss, D., and Osman, A. (2022). Interactive Deep Learning for Shelf Life Prediction of Muskmelons Based on an Active Learning Approach. Sensors, 22.