Abstract

Land cover classification is the most important element of land cover mapping and is a key input to many societal benefits. Traditional classification methods require a large amount of remotely sensed images, which are time consuming and labour intensive. Recently, crowdsourcing geographic information (CGI), including geo-tagged photos and other sources, has been widely used with lower costs, but still requires extensive labour for data classification. Alternatively, CGI textual information is available from online sources containing land cover information, and it provides a useful source for land cover classification. However, the major challenge of utilising CGI is its uneven spatial distributions in land cover regions, leading to less reliability of regions for land cover classification with sparsely distributed CGI. Moreover, classifying various unorganised CGI texts automatically in each land cover region is another challenge. This paper investigates a faster and more automated method that does not require remotely sensed images for land cover classification. Spatial clustering is employed for CGI to reduce the effect of uneven spatial distributions by extracting land cover regions with high density of CGI. To classify unorganised various CGI texts in each extracted region, land cover topics are calculated using topic model. As a case study, we applied this method using points of interest (POIs) as CGI to classify land cover in Shandong province. The classification result using our proposed method achieved an overall accuracy of approximately 80%, providing evidence that CGI with textual information has a great potential for land cover classification.

Highlights

  • Land cover is essential to environmental change studies, land resource management, sustainable development, and many other societal benefits [1], and its classification is an indispensable component of land cover production for mapping various land cover information [2]

  • If we use spatial clustering only, the categories of points of interest (POIs), which we considered as crowdsourcing geographic information (CGI) textual textual information in this study, are more than 200 rather than 30 land cover topics

  • CGI, containing a large amount of textual information and latitude-longitude information, has great potential to be used for land cover classification

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Summary

Introduction

Land cover is essential to environmental change studies, land resource management, sustainable development, and many other societal benefits [1], and its classification is an indispensable component of land cover production for mapping various land cover information [2]. Traditional classification methods require a huge amount of remotely sensed images as it provides a representation of the Earth’s surface. It is proposed by identifying land cover on the basis of spectral similarity as well as expert knowledge [3]. This process is very complicated, time-consuming and labour intensive [4,5]. Because remotely sensed images are required to be interpreted by experts It becomes more difficult when classification needs to be done over a large area. Improving the efficiency of land cover classification becomes a significant part in the area of land cover production

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