4.7 Article

Remote Sensing Crop Recognition by Coupling Phenological Features and Off-Center Bayesian Deep Learning

Journal

REMOTE SENSING
Volume 15, Issue 3, Pages -

Publisher

MDPI
DOI: 10.3390/rs15030674

Keywords

crop mapping; crop phenology; remote sensing; Sentinel 2 time series; Bayesian deep learning; model generalization

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This study proposes a deep learning remote sensing crop classification method that highlights phenological features, and applies attention mechanism and residual connectivity. The method demonstrates high accuracy and reliability in classifying soybean, maize, and rice crops, with an overall classification accuracy of 90.73% and average F1 and IOU values of 89.57% and 81.48%, respectively. The proposed method can be readily applied to crop area estimations in different regions and years.
Obtaining accurate and timely crop area information is crucial for crop yield estimates and food security. Because most existing crop mapping models based on remote sensing data have poor generalizability, they cannot be rapidly deployed for crop identification tasks in different regions. Based on a priori knowledge of phenology, we designed an off-center Bayesian deep learning remote sensing crop classification method that can highlight phenological features, combined with an attention mechanism and residual connectivity. In this paper, we first optimize the input image and input features based on a phenology analysis. Then, a convolutional neural network (CNN), recurrent neural network (RNN), and random forest classifier (RFC) were built based on farm data in northeastern Inner Mongolia and applied to perform comparisons with the method proposed here. Then, classification tests were performed on soybean, maize, and rice from four measurement areas in northeastern China to verify the accuracy of the above methods. To further explore the reliability of the method proposed in this paper, an uncertainty analysis was conducted by Bayesian deep learning to analyze the model's learning process and model structure for interpretability. Finally, statistical data collected in Suibin County, Heilongjiang Province, over many years, and Shandong Province in 2020 were used as reference data to verify the applicability of the methods. The experimental results show that the classification accuracy of the three crops reached 90.73% overall and the average F1 and IOU were 89.57% and 81.48%, respectively. Furthermore, the proposed method can be directly applied to crop area estimations in different years in other regions based on its good correlation with official statistics.

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