Estimation of crop pest risk and/or crop disease risk at sub-farm level
US-12141730-B2 · Nov 12, 2024 · US
US12405259B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-12405259-B2 |
| Application number | US-202418991999-A |
| Country | US |
| Kind code | B2 |
| Filing date | Dec 23, 2024 |
| Priority date | Sep 20, 2022 |
| Publication date | Sep 2, 2025 |
| Grant date | Sep 2, 2025 |
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A rapid monitoring and discrimination method for drought conditions in summer maize based on chlorophyll content includes: 1) Obtaining multi-spectral imagery through UAV multi-payload low-altitude remote sensing technology and measuring chlorophyll content on the ground. Additionally, calculating vegetation indices including Normalized Difference Vegetation Index (NDVI), Soil-Adjusted Vegetation Index (SAVI), and Renormalized Difference Vegetation Index (RENDVI). 2) Selecting vegetation indices and constructing regression equations with measured chlorophyll content during different growth stages. The regression equation with the highest correlation for each growth stage is chosen as the optimal model equation for that particular stage. 3) Using the optimal model equations to retrieve chlorophyll content for each period and determining thresholds for chlorophyll content across different drought levels through calibration. 4) Calculating the required vegetation indices from real-time multi-spectral imagery of the field under test, retrieving chlorophyll content, and comparing it with the established thresholds to assess the real-time drought level.
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The invention claimed is: 1. A rapid unmanned aerial vehicle (UAV)-based monitoring and discrimination method for drought conditions in summer maize based on chlorophyll content, characterized by the following steps: 1) obtaining multispectral imagery data by an FL-81 quadcopter integrated with a multispectral camera and ground-measured chlorophyll content data by a chlorophyll content analyzer, calculating, by a processor, vegetation indices NDVI, RENDVI, and SAVI from the multispectral imagery data, wherein the multispectral camera is configured to capture multispectral aerial images, with a flight height set at 55 meters, corresponding to a ground resolution of 4 centimeters, and the camera is capable of capturing wavelengths in blue, green, red, red-edge, and near-infrared bands; 2) constructing, by the processor, Inversion Models for Chlorophyll Content at Different Drought Levels and Growth Stages of Summer Maize: Performing soil background pixel removal on the multispectral imagery data to extract pure vegetation index pixel values corresponding to the summer maize canopy; selecting the vegetation indices NDVI, RENDVI, and SAVI calculated in step 1) and constructing three types of regression equations (linear, exponential, and logarithmic) with the ground-measured chlorophyll content data at different growth stages; choosing the regression equation with the highest correlation with chlorophyll content for each growth stage as the optimal model equation for that stage; the different growth stages referred to are the jointing stage, heading stage, silking stage, and maturity stage of maize; specifically, the optimal model equation for the jointing stage is a logarithmic model regression equation between SAVI and chlorophyll content, the optimal model equation for the heading stage is a linear model regression equation between RENDVI and chlorophyll content, the optimal model equation for the silking stage is a logarithmic model regression equation between NDVI and chlorophyll content, and the optimal model equation for the maturity stage is an exponential model regression equation between RENDVI and chlorophyll content; 3) threshold determination for Chlorophyll Content at Different Drought Levels: Using the optimal model equations obtained in step 2) to invert the chlorophyll content at each growth stage and determine thresholds for chlorophyll content between different drought levels; 4) real-time Drought Level Discrimination: obtaining multispectral imagery of the test field through real-time monitoring and calculating the required vegetation indices; using the vegetation indices to invert the chlorophyll content at each growth stage by substituting them into the optimal model equations obtained in step 2); comparing the inverted chlorophyll content values with the thresholds determined in step 3) to assess the real-time drought level. 2. The rapid UAV-based monitoring and discrimination method for drought conditions in summer maize based on chlorophyll content according to claim 1 , characterized in that: In step 1), ground-measured chlorophyll content is determined using the chlorophyll content analyzer to measure the SPAD value; eight plants in each plot are selected to measure the relative chlorophyll content SPAD value of their leaves, and the average value is taken as the SPAD value for that plot; the formula for calculating the absolute chlorophyll content Cab/μg·cm −2 of the leaves is as follows: Cab=0.11SPAD 1.5925 . 3. The rapid UAV-based monitoring and discrimination method for drought conditions in summer maize based on chlorophyll content according to claim 1 , characterized in that: The thresholds for chlorophyll content between different drought levels determined in step 3) are as follows: For the jointing stage, normal conditions >54.9, mild drought 53.1-54.9, moderate drought 51.0-53.1, severe drought <51.0; for the heading stage, normal conditions >65.4, mild drought 59.2-65.4, moderate drought 54.1-59.2, severe drought <54.1; for the silking stage, normal conditions >60.0, mild drought 56.1-60.0, moderate drought 52.0-56.1, severe drought <52.0; for the maturity stage, normal conditions >55.5, mild drought 47.8-55.5, moderate drought 43.5-47.8, severe drought <43.5. 4. A method for determining the chlorophyll content thresholds for different drought levels as recited in claim 1 , wherein the method for determining the thresholds for chlorophyll content between different drought levels in step 3) comprises: first, calculating the average chlorophyll content for each drought level obtained through inversion; and then, calculating the median value of the averages for adjacent drought levels, and using this median value as the threshold for the different drought levels.
Vegetation · CPC title
using hyperspectral data, i.e. more or other wavelengths than RGB · CPC title
taken from planes or by drones · CPC title
Plants or trees (wood G01N33/46) · CPC title
using photo-electric detection (G01N21/31 takes precedence){; circuits for computing concentration (logarithmic circuits G06G7/24; photometric circuits in general G01J)} · CPC title
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