Cao Maoyong, Tang Fangfang, Ji Peng, Ma Fengying
School of Information and Automation Engineering, Qilu University of Technology (Shandong Academy of Sciences), Jinan, China.
Front Plant Sci. 2022 Jun 2;13:898131. doi: 10.3389/fpls.2022.898131. eCollection 2022.
Field crops are generally planted in rows to improve planting efficiency and facilitate field management. Therefore, automatic detection of crop planting rows is of great significance for achieving autonomous navigation and precise spraying in intelligent agricultural machinery and is an important part of smart agricultural management. To study the visual navigation line extraction technology of unmanned aerial vehicles (UAVs) in farmland environments and realize real-time precise farmland UAV operations, we propose an improved ENet semantic segmentation network model to perform row segmentation of farmland images. Considering the lightweight and low complexity requirements of the network for crop row detection, the traditional network is compressed and replaced by convolution. Based on the residual network, we designed a network structure of the shunting process, in which low-dimensional boundary information in the feature extraction process is passed backward using the residual stream, allowing efficient extraction of low-dimensional information and significantly improving the accuracy of boundary locations and row-to-row segmentation of farmland crops. According to the characteristics of the segmented image, an improved random sampling consensus algorithm is proposed to extract the navigation line, define a new model-scoring index, find the best point set, and use the least-squares method to fit the navigation line. The experimental results showed that the proposed algorithm allows accurate and efficient extraction of farmland navigation lines, and it has the technical advantages of strong robustness and high applicability. The algorithm can provide technical support for the subsequent quasi-flight of agricultural UAVs in farmland operations.
大田作物一般成行种植,以提高种植效率并便于田间管理。因此,自动检测作物种植行对于实现智能农业机械的自主导航和精准喷洒具有重要意义,是智慧农业管理的重要组成部分。为研究无人机在农田环境中的视觉导航线提取技术并实现实时精准的农田无人机作业,我们提出一种改进的ENet语义分割网络模型来对农田图像进行行分割。考虑到网络对作物行检测的轻量级和低复杂度要求,对传统网络进行压缩并用卷积进行替换。基于残差网络,设计了一种分流过程的网络结构,其中在特征提取过程中的低维边界信息通过残差流向后传递,从而高效提取低维信息,并显著提高农田作物边界位置和行与行分割的准确性。根据分割图像的特点,提出一种改进的随机抽样一致性算法来提取导航线,定义新的模型评分指标,找到最佳点集,并使用最小二乘法拟合导航线。实验结果表明,所提算法能够准确高效地提取农田导航线,具有较强的鲁棒性和较高的适用性等技术优势。该算法可为后续农业无人机在农田作业中的准飞行提供技术支持。