DRONE FOR CAPTURING IMAGES OF FIELD CROPS
20210316857 · 2021-10-14
Inventors
Cpc classification
B64U2201/00
PERFORMING OPERATIONS; TRANSPORTING
B64U2101/30
PERFORMING OPERATIONS; TRANSPORTING
B64U20/87
PERFORMING OPERATIONS; TRANSPORTING
H04N7/18
ELECTRICITY
B64C39/024
PERFORMING OPERATIONS; TRANSPORTING
International classification
Abstract
The present invention provides a drone (unmanned aerial vehicle) capable of photographing a base part of the stem and a side of the leaf of the field crops for evaluating their growth status.
A camera directed backward with a depression angle of about 60 degrees is installed at the bottom of the drone. The camera is configured to capture an image of the crop temporarily knocked down by the downdraft created by the rotor of the drone. Since the base part of the stem and the side of the leaf are exposed to the sky, images can be appropriately captured. The depression angle of the camera may be automatically adjustable depending on the flight speed, wind force, and wind direction. Further, it is preferable to rotate the entire body so that the camera is always directed to backward when the drone changes flying directions.
Claims
1. An unmanned aerial vehicle comprising: a camera; and rotors, wherein: the unmanned aerial vehicle is used for capturing images of field crops to evaluate growth of the field crops, the camera is provided on the unmanned aerial vehicle at a position that is substantially rearward with respect to the traveling direction of the unmanned aerial vehicle, and the camera is configured to capturing images of roots or leaves of the field crops exposed by air flow made the rotors.
2. An unmanned aerial vehicle according to claim 1, further comprising an adjustor configured to adjust a depression angle of the camera to a horizontal line, according to a moving speed of the unmanned aerial vehicle, a wind force or a wind direction.
3. An unmanned aerial vehicle according to claim 1, further comprising a controller for controlling an orientation of the unmanned aerial vehicle so that a direction of the camera is fixed even when the unmanned aerial vehicle changes a flying direction.
4. (canceled)
5. An unmanned aerial vehicle according to claim 1, wherein a depression angle of the camera to a horizontal line is substantially 60 degree.
6. A method for evaluating growth status of field crops, comprising: capturing images of parts near roots or leaves of the field crops by a camera attached to an unmanned aerial vehicle, wherein the parts near the roots or the leaves of the field crops are exposed by an air flow made by rotors of the unmanned aerial vehicle.
7. A method according to claim 6, wherein: the camera is provided on the unmanned aerial vehicle at a position that is substantially rearward with respect to the traveling direction of the unmanned aerial vehicle and a depression angle of the camera to a horizontal line is substantially 60 degree.
8. A method according to claim 6, further comprising: adjusting a depression angle of the camera to a horizontal line, according to a moving speed of the unmanned aerial vehicle, a wind force or a wind direction.
9. A method according to claim 6, further comprising: controlling an orientation of the unmanned aerial vehicle so that a direction of the camera is fixed even when the unmanned aerial vehicle changes a flying direction.
10. A method according to claim 6, further comprising: evaluating a status of growth, pests or weeds of the field crop by using machine learning of the images of parts near roots or leaves of the field crops.
11. A method according to claim 6, further comprising: evaluating a status of growth, pests or weeds of the field crop by feeding the images of parts near roots or leaves of the field crops to a neural network.
12. A method according to claim 6, further comprising: detecting a presence of chlorophyll by analyzing a near-infrared image of the images of parts near roots or leaves of the field crops, and extracting an image consisting of only crops from the near-infrared image.
13. A method according to claim 12, further comprising: applying edge detection to the image consisting of only crops to extract the contour lines of the leaves, determining how much leaves bend when exposed to the wind, and evaluating a growth condition of the crop by estimating leaf thickness.
14. A method according to claim 6, further comprising: detecting water areas by applying near-infrared image analysis to images of parts near roots or leaves of the field crops, applying edge detection to an image of water areas, detecting base of the crop by identifying dense straight lines, and applying near-infrared edge detection to an image of the base of the crop to detect insect pests.
15. A method according to claim 6, further comprising: detecting water areas by applying near-infrared image analysis to images of parts near roots or leaves of the field crops, and detecting weeds by judging whether water areas are evenly spaced.
16. A non-transitory computer readable medium that stores a computer-executable program for evaluating growth status of field crops, comprising instructions for: capturing images of parts near roots or leaves of the field crops by a camera attached to an unmanned aerial vehicle, wherein the parts near the roots or the leaves of the field crops are exposed by an air flow made by rotors of the unmanned aerial vehicle.
17. A non-transitory computer readable medium according to claim 16, wherein: the camera is provided on the unmanned aerial vehicle at a position that is substantially rearward with respect to the traveling direction of the unmanned aerial vehicle and a depression angle of the camera to a horizontal line is substantially 60 degree.
18. A non-transitory computer readable medium according to claim 16, further comprising instructions for: adjusting a depression angle of the camera to a horizontal line, according to a moving speed of the unmanned aerial vehicle, a wind force or a wind direction.
19. A non-transitory computer readable medium according to claim 16, further comprising instructions for: controlling an orientation of the unmanned aerial vehicle so that a direction of the camera is fixed even when the unmanned aerial vehicle changes a flying direction.
20. A non-transitory computer readable medium according to claim 16, further comprising instructions for: evaluating a status of growth, pests or weeds of the field crop by using machine learning of the images of parts near roots or leaves of the field crops.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
[0011]
[0012]
[0013]
[0014]
DESCRIPTION OF THE EMBODIMENTS
[0015] Hereinafter, embodiments of the present invention will be described with reference to the drawings. All drawings/figures are exemplary.
[0016]
[0017]
[0018] As shown in
[0019] The inventors' experiments have shown that when the drone is moving at a typical speed (about 5 meters per second), the crops most affected by the airflow created by the rotor blades are behind the direction of travel of the drone at an depression angle of about 60 degrees. The camera (103) preferably may be pointed to this direction. Alternatively, the wide-angle camera (103) may be pointed downward of the drone body and the image of the root of the crop and the sides of the leaves can be extracted later.
[0020] Since the optimal direction of the camera can vary depending on the flying speed of the drone, a speed sensor may be installed in the drone (100) and the direction of the camera (103) may be adjusted depending of the flying speed using a stepping motor or the like. In addition, since the relative position the area where the crops are temporarily knocked down may be affected by the wind force and direction, the drone (100) may be provided with a wind sensor, and the direction of the camera (103) may be adjusted depending on the wind force and/or direction. The images captured by the camera (103) may be displayed on the remote control unit of the drone (100), and the position of the camera (103) may be fine-tuned manually by the operator of the remote control unit. The camera (103) may be controlled such that it does not take pictures when the drone (100) is hovering or flying at a low speed (e.g., about 3 meters per second or less).
[0021]
[0022]
[0023] As an alternative method, as shown in
[0024] Analysis of the images taken by the camera (103) provides a variety of information that could not be obtained previously. For example, the presence of chlorophyll can be detected by analyzing a near-infrared image (e.g., near 780 nm wavelength), which allows only the crop parts to be extracted from the images. Edge detection can be applied to the extracted image of the crop parts to extract the contour lines of the leaves to determine how much the leaves bend when exposed to the wind. This allows the leaf thickness to be estimated and, as a result, the growth condition of the crop can be estimated. Particularly when the crop is rice, it is also possible to determine the amount of silicon accumulation (because silicon increases the hardness of the leaves). In addition, in the water area detected with near-infrared image analysis, the area with dense straight lines (detected by the edge detection) can be presumed to be the base (near-to-the-root) part of the crop. When near-infrared edge detection is applied to the base parts, if the spotted areas are detected, the plant is suspected to be attached to planthoppers. If there are strong red areas are seen at the base of the plant, it is suspected to suffer from sheath blight disease. In addition, since plants are usually planted at 20 to 30 centimeters apart to each other, if the water surface area does not appear evenly spaced in the image, the weeds are presumed to be present. In addition to these image analyses, as the inventors experiments have shown, it is possible to perform an efficient and accurate analysis with machine learning using a large number of image data samples as input to a neural network (preferably a deep neural network).
[0025] (Technically Significant Advantageous Effect of the Present Invention.)
[0026] With the drone according to the present application, it is possible to efficiently acquire images of the root part of the stems and the side of the leaves of the entire crop in the field. The image thus obtained can be analyzed for an effective and efficient pest control and fertilization plans. In addition, in the case of rice, the shape of the leaves as they are exposed to the wind can be analyzed to evaluate the amount of silicon accumulation, which can be used to estimate the level of growth of the rice plant and optimize a fertilizer plan.