利用先进的图像预处理技术,设计并实现用于农业应用的人工智能控制喷洒无人机

Cemalettin Akdoğan, Tolga Özer, Y. Oğuz
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摘要

目的 如今,由于全球人口不断增加,可耕地不断减少,粮食问题很可能会出现。因此,有必要提高农产品的产量。农药可用于改善农田产品。本研究旨在利用所设计的基于人工智能(AI)的农用无人飞行器(UAV),使樱桃树的喷洒更加有效和高效:在方法 1 中,YOLOv5、YOLOv7 和 YOLOv8 模型分别采用 70、100 和 150 个历元进行训练。在方法 2 中,提出了一种新方法来改进方法 1 中获得的性能指标。在方法 2 中,对生成的数据集采用了高斯、小波变换(WT)和直方图均衡化(HE)预处理技术。方法 1 和方法 2 中表现最好的模型被用于所开发的农用无人机的实时测试应用中。研究结果在方法 1 中,YOLOv5s 模型在 100 个历时中的最佳 F1 分数为 98%。在方法 2 中,YOLOv5m 模型在 150 个历时中的最佳 F1 分数和 mAP 值分别为 98.6% 和 98.9%,F1 分数提高了 0.6%。在实时测试中,基于人工智能的无人机喷洒系统检测和喷洒樱桃树的准确率在方法 1 中为 66%,在方法 2 中为 77%。原创性/价值通过设计农业无人机,利用人工智能检测和喷洒樱桃树,创建了一个原创数据集。使用 YOLOv5、YOLOv7 和 YOLOv8 模型对樱桃树进行检测和分类。比较了这些模型的性能指标结果。在方法 2 中,提出了一种包括 HE、高斯和 WT 的方法,并改进了性能指标。对所提方法在实时实验应用中的效果进行了深入分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and implementation of an AI-controlled spraying drone for agricultural applications using advanced image preprocessing techniques
Purpose Nowadays, food problems are likely to arise because of the increasing global population and decreasing arable land. Therefore, it is necessary to increase the yield of agricultural products. Pesticides can be used to improve agricultural land products. This study aims to make the spraying of cherry trees more effective and efficient with the designed artificial intelligence (AI)-based agricultural unmanned aerial vehicle (UAV). Design/methodology/approach Two approaches have been adopted for the AI-based detection of cherry trees: In approach 1, YOLOv5, YOLOv7 and YOLOv8 models are trained with 70, 100 and 150 epochs. In Approach 2, a new method is proposed to improve the performance metrics obtained in Approach 1. Gaussian, wavelet transform (WT) and Histogram Equalization (HE) preprocessing techniques were applied to the generated data set in Approach 2. The best-performing models in Approach 1 and Approach 2 were used in the real-time test application with the developed agricultural UAV. Findings In Approach 1, the best F1 score was 98% in 100 epochs with the YOLOv5s model. In Approach 2, the best F1 score and mAP values were obtained as 98.6% and 98.9% in 150 epochs, with the YOLOv5m model with an improvement of 0.6% in the F1 score. In real-time tests, the AI-based spraying drone system detected and sprayed cherry trees with an accuracy of 66% in Approach 1 and 77% in Approach 2. It was revealed that the use of pesticides could be reduced by 53% and the energy consumption of the spraying system by 47%. Originality/value An original data set was created by designing an agricultural drone to detect and spray cherry trees using AI. YOLOv5, YOLOv7 and YOLOv8 models were used to detect and classify cherry trees. The results of the performance metrics of the models are compared. In Approach 2, a method including HE, Gaussian and WT is proposed, and the performance metrics are improved. The effect of the proposed method in a real-time experimental application is thoroughly analyzed.
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