4.7 Article

Improved Real-Time Semantic Segmentation Network Model for Crop Vision Navigation Line Detection

期刊

FRONTIERS IN PLANT SCIENCE
卷 13, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fpls.2022.898131

关键词

precision agriculture application; visual navigation; semantic segmentation; crop rows detection; navigation path recognition

资金

  1. National Natural Science Foundation of China [61903207]
  2. Key Research and Development Plan of Shandong Province [2019JZZY010731]
  3. Youth Innovation Science and Technology Support Plan of Colleges in Shandong Province [2021KJ025]

向作者/读者索取更多资源

Field crops are usually planted in rows for better efficiency and management. Automatic detection of crop planting rows is of great significance for autonomous navigation and precise spraying in intelligent agricultural machinery. In this study, an improved ENet semantic segmentation network model is proposed to perform row segmentation of farmland images. The network structure is designed to efficiently extract low-dimensional information and significantly improve the accuracy of boundary locations and row-to-row segmentation. An improved random sampling consensus algorithm is used to extract the navigation line based on the characteristics of the segmented image. The experimental results demonstrate the accurate and efficient extraction of farmland navigation lines, with strong robustness and high applicability. This algorithm provides important technical support for agricultural UAVs in farmland operations.
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.

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