Tillage boundary detection based on RGB imagery classification for an autonomous tractor

Gook-Hwan Kim, Dasom Seo, Kyoung-Chul Kim, Youngki Hong, Meong-hun Lee, S. Lee, Hyunjong Kim, H. Ryu, Yong-Joo Kim, Sun-Ok Chung, Dae-Hyun Lee
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引用次数: 2

Abstract

In this study, a deep learning-based tillage boundary detection method for autonomous tillage by a tractor was developed, which consisted of image cropping, object classification, area segmentation, and boundary detection methods. Full HD (1920 × 1080) images were obtained using a RGB camera installed on the hood of a tractor and were cropped to 112 × 112 size images to generate a dataset for training the classification model. The classification model was constructed based on convolutional neural networks, and the path boundary was detected using a probability map, which was generated by the integration of softmax outputs. The results show that the F1-score of the classification was approximately 0.91, and it had a similar performance as the deep learning-based classification task in the agriculture field. The path boundary was determined with edge detection and the Hough transform, and it was compared to the actual path boundary. The average lateral error was approximately 11.4 cm, and the average angle error was approximately 8.9o. The proposed technique can perform as well as other approaches; however, it only needs low cost memory to execute the process unlike other deep learning-based approaches. It is possible that an autonomous farm robot can be easily developed with this proposed technique using a simple hardware configuration.
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基于RGB图像分类的自动拖拉机耕作边界检测
本文研究了一种基于深度学习的拖拉机自主耕作边界检测方法,该方法由图像裁剪、目标分类、区域分割和边界检测方法组成。使用安装在拖拉机引擎盖上的RGB相机获得全高清(1920 × 1080)图像,并将其裁剪为112 × 112大小的图像,生成用于训练分类模型的数据集。基于卷积神经网络构建分类模型,利用softmax输出积分生成的概率图检测路径边界。结果表明,该分类的f1得分约为0.91,在农业领域具有与基于深度学习的分类任务相近的性能。利用边缘检测和霍夫变换确定路径边界,并与实际路径边界进行比较。平均横向误差约为11.4 cm,平均角度误差约为8.90 cm。所提出的技术可以像其他方法一样执行得很好;然而,与其他基于深度学习的方法不同,它只需要低成本的内存来执行该过程。这是可能的,一个自主农场机器人可以很容易地开发与此技术提出使用一个简单的硬件配置。
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