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2021
DOI: 10.1186/s13007-021-00752-3
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Method for accurate multi-growth-stage estimation of fractional vegetation cover using unmanned aerial vehicle remote sensing

Abstract: Background Fractional vegetation cover (FVC) is an important parameter for evaluating crop-growth status. Optical remote-sensing techniques combined with the pixel dichotomy model (PDM) are widely used to estimate cropland FVC with medium to high spatial resolution on the ground. However, PDM-based FVC estimation is limited by effects stemming from the variation of crop canopy chlorophyll content (CCC). To overcome this difficulty, we propose herein a “fan-shaped method” (FSM) that uses a CCC s… Show more

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Cited by 36 publications
(14 citation statements)
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References 63 publications
(63 reference statements)
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“…Testing the model achieves a class-balanced accuracy of 78.32%. S.Natesan et al [19][20][21][22][23] proposed a new method of UAV monitoring tree species based on residual neural network, using the images collected by UAV in the past three years to train the artificial neural network, respectively conducted two groups of experiments, obtained 80% and 51% tree species classification accuracy. Franklin et al proposed a new method for UAV tree species classification based on object image analysis and machine learning, using image segmentation technology to segment the acquired images.…”
Section: Introductionmentioning
confidence: 99%
“…Testing the model achieves a class-balanced accuracy of 78.32%. S.Natesan et al [19][20][21][22][23] proposed a new method of UAV monitoring tree species based on residual neural network, using the images collected by UAV in the past three years to train the artificial neural network, respectively conducted two groups of experiments, obtained 80% and 51% tree species classification accuracy. Franklin et al proposed a new method for UAV tree species classification based on object image analysis and machine learning, using image segmentation technology to segment the acquired images.…”
Section: Introductionmentioning
confidence: 99%
“…Morphological parameters (MPs), such as plant height ( H ) and canopy cover (CC), are direct expressions of crop growth and nutritional status, as well as a comprehensive reflection of N metabolism in the crop ( Yue et al., 2021b ; Li et al., 2022 ). Similar to the red-edge and near-infrared bands, MPs can provide structural information closely related to crop growth.…”
Section: Introductionmentioning
confidence: 99%
“…The dimidiate pixel model is a method for calculating vegetation coverage based on the pixel linear decomposition model, which is based on the principle of decomposing the spectral information of the ground surface acquired by remote sensing sensors into two parts, one is the information S V contributed entirely by green vegetation, and the other is the information S S of bare ground without vegetation coverage, the pixel information S is synthesized by these two parts (Yue et al, 2021), Namely:…”
Section: Estimation Of Vegetation Coveragementioning
confidence: 99%