4.7 Article

Efficient in-field plant phenomics for row-crops with an autonomous ground vehicle

期刊

JOURNAL OF FIELD ROBOTICS
卷 34, 期 6, 页码 1061-1083

出版社

WILEY
DOI: 10.1002/rob.21728

关键词

agriculture; hyperspectral and lidar sensing; plant phenomics; row-crop phenotyping; terrestrial robotics

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  1. SARDI

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The scientific areas of plant genomics and phenomics are capable of improving plant productivity, yet they are limited by the manual labor that is currently required to perform in-field measurement, and a lack of technology for measuring the physical performance of crops growing in the field. A variety of sensor technology has the potential to efficiently measure plant characteristics that are related to production. Recent advances have also shown that autonomous airborne and manually driven ground-based sensor platforms provide practical mechanisms for deploying the sensors in the field. This paper advances the state-of-the-art by developing and rigorously testing an efficient system for high throughput in-field agricultural row-crop phenotyping. The system comprises an autonomous unmanned ground-vehicle robot for data acquisition and an efficient data post-processing framework to provide phenotype information over large-scale real-world plant-science trials. Experiments were performed at three trial locations at two different times of year, resulting in a total traversal of 43.8 km to scan 7.24 hectares and 2423 plots (including repeated scans). The height and canopy closure datawere found to be highly repeatable (r(2) = 1.00 N= 280, r(2) = 0.99 N= 280, respectively) and accurate with respect tomanually gathered field data (r(2) = 0.95 N = 470, r(2) = 0.91 N = 361, respectively), yetmore objective and less-reliant on human skill and experience. The system was found to be a more labor-efficient mechanism for gathering data, which compares favorably to current standardmanual practices.

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