Detection of artichoke on seedling based on YOLOV5 model

E. Kahya, Y. Aslan
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Abstract

Robotic systems have become essential in the industrial field today. Robotic systems used in many areas of industry enable the development of mechanization of agriculture. Researches in recent years have focused on the introduction of automatic systems and robot prototypes in the field of agriculture in order to reduce production costs. The developed smart harvest robots are systems that can work uninterrupted for hours and guarantee minimum cost and high production. The main element of these systems is the determination of the location of the product to be harvested by image processing. In addition to the programs used for image processing, deep learning models have become popular today. Deep learning techniques offer high accuracy in analyzing and processing agricultural data. Due to this feature, the use of deep learning techniques in agriculture is becoming increasingly widespread. During the harvest of the artichoke, its head should generally be cut off with one or two leaves. One main head and usually two side heads occur from one shoot. Harvest maturity degree is the time when the heads reach 2/3 of their size, depending on the variety character. In this study, classification was made by using the deep learning method, considering the head size of the fruit. YOLOv5 (nano-small-medium and large models) was used for the deep learning method. All metric values ​​of the models were examined. It was observed that the most successful model was the model trained with the YOLOv5n algorithm, 640x640 sized images with 20 Batch, 90 Epoch. Model values ​​results were examined as “metrics/precision”, “metrics/recall”, “metrics/mAP_0.5” and “metrics/mAP_0.5:0.95”. These are key metrics that measure the detection success of a model and indicate the performance of the relevant model on the validation dataset. It was determined that the metric data of the “YOLOv5 nano” model was higher compared to other models. The measured value was Model 1= Size: 640x640, Batch: 20, Epoch: 90, Algorithm: YOLOv5n. Hence, it was understood that “Model 1” was the best detection model to be used in separating artichokes from branches in robotic artichoke harvesting.
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根据 YOLOV5 模型检测幼苗上的朝鲜蓟
机器人系统已成为当今工业领域必不可少的设备。在许多工业领域使用的机器人系统促进了农业机械化的发展。近年来的研究重点是在农业领域引入自动系统和机器人原型,以降低生产成本。所开发的智能收割机器人是一种可以不间断工作数小时的系统,可保证最低成本和高产量。这些系统的主要要素是通过图像处理确定待收割产品的位置。除了用于图像处理的程序外,深度学习模型如今也很流行。深度学习技术在分析和处理农业数据方面具有很高的准确性。基于这一特点,深度学习技术在农业领域的应用越来越广泛。在收获朝鲜蓟时,一般应将其头部连同一片或两片叶子一起切下。一个主头和通常两个侧头来自一个嫩芽。收获成熟度是指头部达到其大小的 2/3 时,具体取决于品种特性。本研究采用深度学习方法,根据果实头部大小进行分类。深度学习方法使用了 YOLOv5(纳米-小-中-大模型)。对模型的所有度量值进行了检查。据观察,最成功的模型是使用 YOLOv5n 算法、640x640 尺寸图像、20 Batch、90 Epoch 训练的模型。模型值结果以 "度量/精确度"、"度量/召回"、"度量/mAP_0.5 "和 "度量/mAP_0.5:0.95 "进行检验。这些都是衡量模型检测成功率的关键指标,表明相关模型在验证数据集上的性能。经测定,与其他模型相比,"YOLOv5 nano "模型的度量数据较高。测量值为模型 1=尺寸:640x640,批次:20,时间:90,算法:YOLOv5n:YOLOv5n。因此,可以认为 "模型 1 "是机器人朝鲜蓟收割中用于将朝鲜蓟从枝条中分离出来的最佳检测模型。
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审稿时长
8 weeks
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