Abstract

Hierarchical classification of land cover can be used to describe the Earth’s surface with different scales and properties. However, existing studies have rarely considered hierarchical information for land-cover classification, and have ignored dependencies in the hierarchical structure. In this study, we propose a hierarchical category structure-based convolutional recurrent neural network (HCS-ConvRNN). The HCS-ConvRNN method constrains the input through the leaf node of the hierarchical structure based input layer, and then constructs the dependencies among different layers in a top-down manner, in order to classify the pixels into the most relevant classes in a layer-by-layer manner. A total of 219 Moderate Resolution Imaging Spectroradiometer (MODIS) images of China from 2015 to 2017, at a 5-day interval, were used in the reported experiments. It is shown that: 1) the results of HCS-ConvRNN have rich spatial details; 2) the accuracy at each level of HCS-ConvRNN is better than that of MOD12Q1; and 3) generally HCS-ConvRNN can obtain a better classification performance than other networks such as the convolutional neural network (CNN) and gated recurrent unit (GRU). In summary, the proposed HCS-ConvRNN method can effectively achieve hierarchical land cover classification, and has the potential for accurate land cover classification at a large scale.

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