首页|Multi-view density-based field-road classification for agricultural machinery: DBSCAN and object detection

Multi-view density-based field-road classification for agricultural machinery: DBSCAN and object detection

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? 2022 Elsevier B.V.Field-road classification that automatically identifies the operation modes (either in-field or on-road) of GNSS (Global Navigation Satellite System) points plays an important role for the operational performance analysis of agricultural vehicles. Intuitively, a field often has high point density because in-field driving speed is rather low and the distance between consecutive strips is closed. In this paper, two methods were used to capture the in-field high-density characteristic: DBSCAN (Density-Based Spatial Clustering of Applications with Noise) and an object detection model. DBSCAN is a widely-used density-based clustering algorithm, which clusters the points with high point density into a cluster. Alternatively, a trajectory can be transformed into an image, and an object detection model can be applied to detect objects in the image, where an object is a set of pixels with high pixel density (i.e., a set of points with high point density). Finally, the two field-road classification results are combined using DBI (Davis Bouldin index), a metric which can evaluate the quality of either classification result. The developed method was validated by the harvesting trajectories of two crops (wheat and paddy), and the density-based field-road classification achieved 85.97% and 73.34% accuracy on the wheat data and the paddy data, respectively.

DBIDBSCANField-road classificationObject detectionOperation mode classification

Zhang X.、Jia J.、Kuang K.、Wu C.、Lan Y.、Chen Y.

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College of Information and Electrical Engineering China Agricultural University

School of Agricultural Engineering and Food Science Shandong University of Technology

2022

Computers and Electronics in Agriculture

Computers and Electronics in Agriculture

EISCI
ISSN:0168-1699
年,卷(期):2022.200
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