ASPEN study case: Real time in situ apples detection and characterization

IF 6.3 Q1 AGRICULTURAL ENGINEERING Smart agricultural technology Pub Date : 2024-08-01 DOI:10.1016/j.atech.2024.100506
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Abstract

Due to an increasing demand for food and pressures on our ecosystem, mechanisation and automation in agriculture has been proposed as one of the main solutions to the problems associated with overpopulation given today's life standards. To encourage the use of new technologies and bridge the gap between plant and computer science, here we validate an open-source pipeline capable of predicting real time in situ fruit characteristics, specifically in this case for apples. Using Agroscope's phenotyping tool (ASPEN), we achieve an average precision at intercept over union of 50 % of 0.75 when using YOLOv8 - m as the object detection algorithm, and with thanks to the use of multiple sensors, we find an average diameter error of 4.4 mm in the task of apple size determination. Our research demonstrates that although the pipeline tends to underestimate the actual fruit size, size estimation cannot only be used to determine the size of apples per scan, but also to track temporal apple size distribution in 4 different varieties. This research supports ASPEN in potentially replacing traditional field measurements, also suggesting that other traits could also be digitally measured for standard orchard phenotyping, either for scientific or agricultural output goals. Finally, we make publicly available a new dataset of more than 600 images (Agroscope_apple dataset) and a pre-trained model based on YOLOv8 and specifically trained for the in-situ apple detection task. By doing so, we hope to increase the accessibility and use of new technologies in the field of agriculture.

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ASPEN 研究案例:实时原位苹果检测和表征
由于对食物的需求不断增加以及生态系统面临的压力,农业机械化和自动化已被提出作为解决与当今生活水平下人口过剩相关问题的主要方案之一。为了鼓励使用新技术并缩小植物科学与计算机科学之间的差距,我们在此验证了能够实时预测原位果实特征的开源管道,特别是苹果。通过使用 Agroscope 的表型工具 (ASPEN),当使用 YOLOv8 - m 作为目标检测算法时,我们实现了 0.75 的平均截距精度,超过了 50% 的结合率;由于使用了多个传感器,我们发现在确定苹果大小的任务中,平均直径误差为 4.4 毫米。我们的研究表明,虽然管道往往会低估水果的实际大小,但大小估计不仅可用于确定每次扫描的苹果大小,还可用于跟踪 4 个不同品种的苹果大小的时间分布。这项研究支持 ASPEN 取代传统的田间测量,同时也表明,其他性状也可以通过数字测量进行标准果园表型,以实现科学或农业产出目标。最后,我们公开了一个包含 600 多张图像的新数据集(Agroscope_apple 数据集)和一个基于 YOLOv8 的预训练模型,该模型专门针对现场苹果检测任务进行了训练。我们希望通过这样做,提高新技术在农业领域的可及性和使用率。
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