2023
DOI: 10.3390/rs15153792
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Crop-Planting Area Prediction from Multi-Source Gaofen Satellite Images Using a Novel Deep Learning Model: A Case Study of Yangling District

Xiaofei Kuang,
Jiao Guo,
Jingyuan Bai
et al.

Abstract: Neural network models play an important role in crop extraction based on remote sensing data. However, when dealing with high-dimensional remote sensing data, these models are susceptible to performance degradation. In order to address the challenges associated with multi-source Gaofen satellite data, a novel method is proposed for dimension reduction and crop classification. This method combines the benefits of the stacked autoencoder network for data dimensionality reduction, and the convolutional neural net… Show more

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Cited by 6 publications
(8 citation statements)
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“…ACCSH is used for wheat and corn classification in northern France. The following new findings are obtained from the study: (1) The influence of the mean annual precipitation on wheat is significantly positive. The better condition for wheat growth is due to relatively high precipitation; (2) Corn growth is sensitive to both precipitation and temperature, where the former exhibits an overall positive driving effect, whereas the latter tends to have a negative effect on crop growth; (3) The accuracies of ACCSH evaluated using the kappa coefficient are 15% for wheat and 26% for corn, higher than those of classification at the global scale; (4) The accuracies of ACCSH are also much higher than those of classifications based on non-optimized classification indexes.…”
Section: Discussionmentioning
confidence: 72%
See 1 more Smart Citation
“…ACCSH is used for wheat and corn classification in northern France. The following new findings are obtained from the study: (1) The influence of the mean annual precipitation on wheat is significantly positive. The better condition for wheat growth is due to relatively high precipitation; (2) Corn growth is sensitive to both precipitation and temperature, where the former exhibits an overall positive driving effect, whereas the latter tends to have a negative effect on crop growth; (3) The accuracies of ACCSH evaluated using the kappa coefficient are 15% for wheat and 26% for corn, higher than those of classification at the global scale; (4) The accuracies of ACCSH are also much higher than those of classifications based on non-optimized classification indexes.…”
Section: Discussionmentioning
confidence: 72%
“…Crop classification with high precision is in demand. The current widely used method is crop classification based on remote sensing image data, given its capacity to obtain the spatial distribution of a crop planting structure [1].…”
Section: Introductionmentioning
confidence: 99%
“…On the other hand, the panchromatic image underwent radiometric calibration and orthorectification. Radiometric calibration facilitates the mapping of digital values in remote sensing images to actual radiometric measurements, establishing a precise relationship between pixel values and ground reflectance or radiance [39]. Atmospheric correction is employed to remove the effects of atmospheric scattering and absorption during data transmission, thereby restoring the accurate reflectance information from the Earth's surface.…”
Section: Datamentioning
confidence: 99%
“…The pre-processing process of multispectral images included radiometric calibration, atmospheric correction, and orthorectification, and the pre-processing process of panchromatic images included radiometric calibration and orthorectification. Radiometric calibration is used to map the digital values of the remote sensing image to the actual radiometric measure so that an accurate relationship is established between each pixel value in the image and the ground reflectance or radiance [54]. Atmospheric correction is used to remove the effects of atmospheric scattering and absorption during data transmission to restore the true reflectance information of the ground surface [54].…”
Section: Remote Sensing Datamentioning
confidence: 99%