Acta Laser Biology Sinica, Volume. 33, Issue 4, 335(2024)
Unmanned Aerial Vehicle Hyperspectral Imaging for Weeds Identification and Spatial Distribution in Paddy Fields
[2] [2] SMITH M L, SMITH L N, HANSEN M F. The quiet revolution in machine vision- a state-of-the-art survey paper, including historical review, perspectives, and future directions[J]. Computers in Industry, 2021, 130: 103472.
[3] [3] MISHRA A M, HARNAL S, GAUTAM V, et al. Weed density estimation in soya bean crop using deep convolutional neural networks in smart agriculture[J]. Journal of Plant Diseases Protection, 2022, 129(3): 593-604.
[4] [4] LU B, DAO P D, LIU J, et al. Recent advances of hyperspectral imaging technology and applications in agriculture[J]. Remote Sensing, 2020, 12(16): 2659.
[5] [5] FLETCHER R S, REDDY K N. Random forest and leaf multispectral reflectance data to differentiate three soybean varieties from two pigweeds[J]. Computers Electronics in Agriculture, 2016, 128: 199-206.
[6] [6] ZHANG Y, GAO J, CEN H, et al. Automated spectral feature extraction from hyperspectral images to differentiate weedy rice and barnyard grass from a rice crop[J]. Computers Electronics in Agriculture, 2019, 159: 42-49.
[8] [8] GAO J, LIAO W, NUYTTENS D, et al. Fusion of pixel and object-based features for weed mapping using unmanned aerial vehicle imagery[J]. International Journal of Applied Earth Observation Geoinformation, 2018, 67: 43-53.
[9] [9] CHE’YA N N, DUNWOODY E, GUPTA M. Assessment of weed classification using hyperspectral reflectance and optimal multispectral UAV imagery[J]. Agronomy, 2021, 11(7): 1435.
[10] [10] SU J, YI D, COOMBES M, et al. Spectral analysis and mapping of blackgrass weed by leveraging machine learning and UAV multispectral imagery[J]. Computers Electronics in Agriculture, 2022, 192: 106621.
[12] [12] PRESS W H, TEUKOLSKY S A. Savitzky-Golay smoothing filters[J]. Computers in Physics, 1990, 4(6): 669-672.
[13] [13] LYU X, LI X, DANG D, et al. A new method for grassland degradation monitoring by vegetation species composition using hyperspectral remote sensing[J]. Ecological Indicators, 2020, 114: 106310.
Get Citation
Copy Citation Text
YAN Ziyi, SHEN Yiyang, TANG Wei, ZHANG Yanchao, ZHOU Haozhe. Unmanned Aerial Vehicle Hyperspectral Imaging for Weeds Identification and Spatial Distribution in Paddy Fields[J]. Acta Laser Biology Sinica, 2024, 33(4): 335
Category:
Received: Feb. 22, 2024
Accepted: Dec. 20, 2024
Published Online: Dec. 20, 2024
The Author Email: Yanchao ZHANG (yczhang@zstu.edu.cn)