METHOD OF COUNTING OBJECTS IN AN ORCHARD IN REAL TIME

O. Melnychenko
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Abstract

The paper proposes a novel method for counting apples in an orchard using unmanned aerial vehicles (UAVs), also known as drones. The authors acknowledge that traditional methods of counting apples are time-consuming and labor-intensive and therefore propose a more efficient and accurate solution using a group of drones equipped with high-resolution cameras. The proposed method involves using a convolutional neural network (CNN) called YOLOv5-v1 to detect and count the apples in the images captured by the drones. YOLOv5-v1 was trained using a dataset of annotated images of apples in different lighting conditions and orientations and was found to be highly accurate in identifying and counting apples in test images. The proposed method was tested on two different orchards and was highly accurate. Specifically, the results of the experimental studies show that the model accuracy was: i) in sunny weather – 92.11%, ii) in cloudy weather – 90.76%, and iii) in sunny weather, but with high shading – 82.69%. Such results indicate that under sunny and overcast weather conditions with a low level of shade, the proposed approach demonstrates high accuracy and reliability in real-time operation. At the same time, it should be noted that due to the presence of significant visual noise in the orchard, such as the covering of fruits by leaves and branches, the efficiency of the UAV group and the automated system, in general, cannot be 100% fulfilled in natural conditions, which can serve as a promising task for further of research. Overall, the proposed method of counting structural objects provides an efficient and accurate solution for counting apples in orchards, which could save time and resources for farmers. The use of UAVs and CNNs in agriculture is a promising area of research, and this paper presents a practical application of these technologies in fruit counting.
实时计数果园中物体的方法
本文提出了一种利用无人驾驶飞行器(uav)在果园里数苹果的新方法。作者承认,传统的数苹果方法既耗时又费力,因此提出了一种更高效、更准确的解决方案,即使用一组配备高分辨率摄像头的无人机。提出的方法包括使用名为YOLOv5-v1的卷积神经网络(CNN)来检测和计数无人机捕获的图像中的苹果。YOLOv5-v1使用不同光照条件和方向下带注释的苹果图像数据集进行训练,发现在测试图像中识别和计数苹果的准确性很高。该方法在两个不同的果园进行了测试,具有很高的准确性。具体而言,实验研究结果表明,该模型在晴朗天气下的精度为92.11%,在多云天气下的精度为90.76%,在高遮阳天气下的精度为82.69%。结果表明,在低遮荫度的晴阴天气条件下,该方法具有较高的实时运行精度和可靠性。同时,需要注意的是,由于果园中存在明显的视觉噪声,如树叶和树枝覆盖水果,一般来说,无人机群和自动化系统的效率在自然条件下无法100%实现,这可以作为进一步研究的一个有前途的任务。综上所述,本文提出的结构物计数方法为果园苹果计数提供了一种高效、准确的解决方案,为农民节省了时间和资源。无人机和cnn在农业中的应用是一个很有前途的研究领域,本文介绍了这些技术在水果计数中的实际应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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