4.7 Article

Using UAV-Based Hyperspectral Imagery to Detect Winter Wheat Fusarium Head Blight

Journal

REMOTE SENSING
Volume 13, Issue 15, Pages -

Publisher

MDPI
DOI: 10.3390/rs13153024

Keywords

crop disease; remote sensing detection; hyperspectral imaging; spectral feature combination; data normalization

Funding

  1. National Key R&D Program of China [2017YFE0122400]
  2. National Natural Science Foundation of China [42071423]
  3. Beijing Nova Program of Science and Technology [Z191100001119089]
  4. China Postdoctoral Science Foundation [2020M680685]
  5. Special Research Assistant Project of CAS

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This study explored the potential of using hyperspectral imagery obtained from an unmanned aerial vehicle to detect wheat FHB by combining different spectral features. The field-scale wheat FHB detection model based on a combination of SBs, VIs, and WFs achieved the highest accuracy among the tested models. Our results suggest that UAV-based hyperspectral imaging technology is promising for the field-scale detection of wheat FHB.
Fusarium head blight (FHB) is a major winter wheat disease in China. The accurate and timely detection of wheat FHB is vital to scientific field management. By combining three types of spectral features, namely, spectral bands (SBs), vegetation indices (VIs), and wavelet features (WFs), in this study, we explore the potential of using hyperspectral imagery obtained from an unmanned aerial vehicle (UAV), to detect wheat FHB. First, during the wheat filling period, two UAV-based hyperspectral images were acquired. SBs, VIs, and WFs that were sensitive to wheat FHB were extracted and optimized from the two images. Subsequently, a field-scale wheat FHB detection model was formulated, based on the optimal spectral feature combination of SBs, VIs, and WFs (SBs + VIs + WFs), using a support vector machine. Two commonly used data normalization algorithms were utilized before the construction of the model. The single WFs, and the spectral feature combination of optimal SBs and VIs (SBs + VIs), were respectively used to formulate models for comparison and testing. The results showed that the detection model based on the normalized SBs + VIs + WFs, using min-max normalization algorithm, achieved the highest R-2 of 0.88 and the lowest RMSE of 2.68% among the three models. Our results suggest that UAV-based hyperspectral imaging technology is promising for the field-scale detection of wheat FHB. Combining traditional SBs and VIs with WFs can improve the detection accuracy of wheat FHB effectively.

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