Abstract
Remote sensing images are primary data sources for land use classification. High spatial resolution images enable more accurate analysis and identification of land cover types. However, a higher spatial resolution also brings new challenges to the existing classification methods. In the low-level feature spaces of remote sensing images, it is difficult to improve classification performance by modifying classifiers. Probabilistic topic models can connect low-level features and high-level semantics of remote sensing images. Latent Dirichlet allocation (LDA) models are representatives of probabilistic topic models. However, at present, probabilistic topic models are mainly adopted for scene classification and image retrieval in remote sensing image analysis only. In this study, multiscale segmentation was employed to construct bag-of-words (BoW) representations of high-resolution images. The segmented patches were then utilized as 'image documents.' A structural topic model was used with an LDA model to import spatial information from the image documents at two levels: topical prevalence and topical content in the form of covariates. In this way, latent topic features in image documents can be more accurately deduced. The proposed method showed more satisfactory classification performance than standard LDA models and demonstrated a certain degree of robustness against the changes in the segmentation scale. Acknowledgement for the data support from 'Yangtze River Delta Science Data Center, National Earth System Science Data Center, National Science Technology Infrastructure of China (http://nnu.geodata.cn:8008)'.
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CITATION STYLE
Shao, H., Li, Y., Ding, Y., Zhuang, Q., & Chen, Y. (2020). Land Use Classification Using High-Resolution Remote Sensing Images Based on Structural Topic Model. IEEE Access, 8, 215943–215955. https://doi.org/10.1109/ACCESS.2020.3041645
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