Abstract

Land cover (LC) information plays an important role in different geoscience applications such as land resources and ecological environment monitoring. Enhancing the automation degree of LC classification and updating at a fine scale by remote sensing has become a key problem, as the capability of remote sensing data acquisition is constantly being improved in terms of spatial and temporal resolution. However, the present methods of generating LC information are relatively inefficient, in terms of manually selecting training samples among multitemporal observations, which is becoming the bottleneck of application-oriented LC mapping. Thus, the objectives of this study are to speed up the efficiency of LC information acquisition and update. This study proposes a rapid LC map updating approach at a geo-object scale for high-spatial-resolution (HSR) remote sensing. The challenge is to develop methodologies for quickly sampling. Hence, the core step of our proposed methodology is an automatic method of collecting samples from historical LC maps through combining change detection and label transfer. A data set with Chinese Gaofen-2 (GF-2) HSR satellite images is utilized to evaluate the effectiveness of our method for multitemporal updating of LC maps. Prior labels in a historical LC map are certified to be effective in a LC updating task, which contributes to improve the effectiveness of the LC map update by automatically generating a number of training samples for supervised classification. The experimental outcomes demonstrate that the proposed method enhances the automation degree of LC map updating and allows for geo-object-based up-to-date LC mapping with high accuracy. The results indicate that the proposed method boosts the ability of automatic update of LC map, and greatly reduces the complexity of visual sample acquisition. Furthermore, the accuracy of LC type and the fineness of polygon boundaries in the updated LC maps effectively reflect the characteristics of geo-object changes on the ground surface, which makes the proposed method suitable for many applications requiring refined LC maps.

Highlights

  • Land use and land cover change (LUCC) has always been the main tool to investigate and update the Earth surface resources and environment, and it is the basis of geographical research and applications in remote sensing [1]

  • We propose a geo-object-based Land cover (LC) map update method, which focuses on an automatic scheme of object-level training sample collection using previous LC maps

  • The background database of historical LC maps contains a large amount of domain knowledge, which can effectively reflect the actual meaning and spatial locations of LC classification objects, and provide heuristic information for extracting spatial samples

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Summary

Introduction

Land use and land cover change (LUCC) has always been the main tool to investigate and update the Earth surface resources and environment, and it is the basis of geographical research and applications in remote sensing [1]. This paper pays more attention to the land information of LC whose change has been a hot topic in land resources research. This has important impacts on other environmental issues such as biodiversity, water, carbon, and nutrient cycling, energy balance, and increased greenhouse gas emissions in terrestrial ecosystems. The emergence of remote sensing technology provides a vital role for the timely and accurate acquisition of LC information [5]. With the opening of the Google Earth Engine (GEE) platform in recent years, geospatial data, including a variety of remote sensing data, strongly support the monitoring and mapping of LC change [6,7]

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