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[IEEE 2018 37th Chinese Control Conference (CCC) - Wuhan (2018.7.25-2018.7.27)] 2018 37th Chinese Control Conference (CCC) - Wheat Drought Assessment by Remote Sensing Imagery Using Unmanned Aerial Vehicle

DOI:10.23919/ChiCC.2018.8484005 出版年份:2018 更新时间:2025-09-09 09:28:46
摘要: This work aims at evaluating the usability of remote sensing RGB imagery by an Unmanned Aerial Vehicle (UAV) in assessing wheat drought status. A UAV survey is conducted to collect high-resolution RGB imageries by using DJI S1000 for the experimental wheat ?elds of Gucheng town, Heibei Province, China. The soil moisture for different plots of the experimental ?led is kept at an approximately constant level for the whole growing season in a well controlled environment, where ?eld measurements are performed just after the UAV survey to obtain the soil water content for each plot. A machine learning based wheat drought assessment framework is proposed in this work. In the proposed framework, wheat pixels are ?rst segmented from the soil background using the classical normalized excess green index (NExG). Rather than using pixel-wise classi?cation, a pixel square of appropriate dimension is de?ned as the samples, based on which various features are extracted for the wheat pixels including statistical features and spectral index features. Different classi?cation algorithms are experimented to identify a suitable one in terms of classi?cation accuracy and computation time. It is discovered that Support Vector Machine with Gaussian kernel can obtain an accuracy over 90%, which demonstrates the usefulness of RGB imagery in wheat drought assessment.
作者: Jinya Su,Matthew Coombes,Cunjia Liu,Lei Guo,Wen-Hua Chen
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Evaluating the usability of remote sensing RGB imagery by an Unmanned Aerial Vehicle (UAV) in assessing wheat drought status.

The developed framework demonstrates the usefulness of UAV RGB imagery in assessing wheat drought status, achieving over 90% accuracy with SVM. Future work includes incorporating more spectral bands and designing experiments for different drought levels.

The study is limited to RGB imagery, which may not capture all necessary spectral information for drought assessment. Future work could include other bands like NIR and SWIR for better discrimination.

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