Abstract

Broccoli is an example of a high-value crop that requires delicate handling throughout the growing season and during its post-harvesting treatment. As broccoli heads can be easily damaged, they are still harvested by hand. Moreover, human scouting is required to initially identify the field segments where several broccoli plants have reached the desired maturity level, such that they can be harvested while they are in the optimal condition. The aim of this study was to automate this process using state-of-the-art Object Detection architectures trained on georeferenced orthomosaic-derived RGB images captured from low-altitude UAV flights, and to assess their capacity to effectively detect and classify broccoli heads based on their maturity level. The results revealed that the object detection approach for automated maturity classification achieved comparable results to physical scouting overall, especially for the two best-performing architectures, namely Faster R-CNN and CenterNet. Their respective performances were consistently over 80% mAP@50 and 70% mAP@75 when using three levels of maturity, and even higher when simplifying the use case into a two-class problem, exceeding 91% and 83%, respectively. At the same time, geometrical transformations for data augmentations reported improvements, while colour distortions were counterproductive. The best-performing architecture and the trained model could be tested as a prototype in real-time UAV detections in order to assist in on-field broccoli maturity detection.

Highlights

  • Engineering, School of Environment and Agricultural Engineering, Agricultural University of Athens, Laboratory of Remote Sensing, Department of Topography, School of Rural, Surveying and Geoinformatics Engineering, National Technical University of Athens, 10682 Athens, Greece; Abstract: Broccoli is an example of a high-value crop that requires delicate handling throughout the growing season and during its post-harvesting treatment

  • Besides the performances on the test set, all of the tables include the mean Average Precision (mAP)@50 on the training set, in order to illustrate the chances of overfitting

  • The results have shown that, across all of the experiments, Faster R-CNN and Cen-The results have shown across all of the experiments, R-CNNmaturity and CenterNet werethat, the best-performing architectures for theFaster task of broccoli detection terNet were the best-performing for the task ofwere, broccoli maturity detection

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Summary

Introduction

As broccoli heads can be damaged, they are still harvested by hand. Human scouting is required to initially identify the field segments where several broccoli plants have reached the desired maturity level, such that they can be harvested while they are in the optimal condition. The best-performing architecture and the trained model could be tested as a prototype in real-time UAV detections in order to assist in on-field broccoli maturity detection. Organic broccoli is an example of a high-value crop that requires delicate handling throughout the growing season and during its post-harvesting handling. In the case of organic broccoli, as heads can be damaged, resulting in visible stains, it is still harvested ‘on sight’ by hand using handheld knives because it is targeted towards the fresh market. When the high-end quality broccoli heads should be harvested, before they remain exposed for too long in high-humidity conditions and become susceptible to fungal infections and published maps and institutional affiliations

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