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APPLICATION OF DEEP LEARNING ALGORITHMS CONSIDERING SPATIO-TEMPORAL FEATURES FOR CROP CLASSIFICATION

机译:考虑时空特征的深度学习算法在作物分类中的应用

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The purpose of this study is to compare deep learning models that consider characteristics of crops in the classification of multi-temporal and high spatial resolution images. We applied 2D-convolutional neural network (2D-CNN) and long short-term memory (LSTM) for crop classification to consider spatial and temporal features, respectively. In addition, 3D-CNN and convolutional LSTM (Conv-LSTM), which can account for both temporal and spatial features, were also applied and compared. From a case study of crop classification with multi-temporal unmanned aerial vehicle images. Conv-LSTM showed the best classification accuracy thanks to its ability to account for both spatial and temporal features. Since the growth cycles of crops should be properly considered for crop classification. LSTM-based models including LSTM and Conv-LSTM are more effective than CNN-based models.
机译:本研究的目的是比较在多时相和高空间分辨率图像分类中考虑作物特征的深度学习模型。我们将2D卷积神经网络(2D-CNN)和长短期记忆(LSTM)用于作物分类,以分别考虑空间和时间特征。此外,还应用并比较了3D-CNN和卷积LSTM(Conv-LSTM),它们可以说明时间和空间特征。从多时空无人机图像对作物进行分类的案例研究中得出。 Conv-LSTM能够同时考虑空间和时间特征,因此显示出最佳的分类精度。由于应适当考虑农作物的生长周期,以进行农作物分类。基于LSTM的模型(包括LSTM和Conv-LSTM)比基于CNN的模型更有效。

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