Abstract

Producing accurate land cover maps is time-consuming and estimating land cover changes between two generated maps is affected by error propagation. The increased availability of analysis-ready Earth Observation (EO) data and the access to big data analytics capabilities on Google Earth Engine (GEE) have opened the opportunities for continuous monitoring of environment changing patterns. This research proposed a framework for analyzing urban land cover change trajectories based on Landsat time series and LandTrendr, a well-known spectral-temporal segmentation algorithm for land-based disturbance and recovery detection. The framework involved the use of baseline land cover maps generated at the beginning and at the end of the considered time interval and proposed a new approach to merge the LandTrendr results using multiple indices for reconstructing dense annual land cover maps within the considered period. A supervised support vector machine (SVM) classification was first performed on the two Landsat scenes, respectively, acquired in 1987 and 2019 over Kigali, Rwanda. The resulting land cover maps were then imported in the GEE platform and used to label the interannual LandTrendr-derived changes. The changes in duration, year, and magnitude of land cover disturbance were derived from six different indices/bands using the LandTrendr algorithm. The interannual change LandTrendr results were then combined using a robust estimation procedure based on principal component analysis (PCA) for reconstructing the annual land cover change maps. The produced yearly land cover maps were assessed using validation data and the GEE-based Area Estimation and Accuracy Assessment (Area2) application. The results were used to study the Kigali’s urbanization in the last three decades since 1987. The results illustrated that from 1987 to 1998, the urbanization was characterized by slow development, with less than a 2% annual growth rate. The post-conflict period was characterized by accelerated urbanization, with a 4.5% annual growth rate, particularly from 2004 onwards due to migration flows and investment promotion in the construction industry. The five-year interval analysis from 1990 to 2019 revealed that impervious surfaces increased from 4233.5 to 12116 hectares, with a 3.7% average annual growth rate. The proposed scheme was found to be cost-effective and useful for continuously monitoring the complex urban land cover dynamics, especially in environments with EO data affordability issues, and in data-sparse regions.

Highlights

  • Since 2007, our planet has reached a significant landmark, with urban inhabitants outnumbering those of rural settlements and projections illustrated that urban areas would be housing two-thirds (66%) of the world population by 2050 [1]

  • To trace the land cover changes, we proposed the use of a combination of six indices/bands, including red (R) and shortwave infrared (SWIR) bands, normalized difference vegetation index (NDVI), normalized difference moisture index (NDMI), Tasseled Cap Greenness (TCG), and Tasseled Cap Wetness (TCW)

  • A new Google Earth Engine (GEE)-LandTrendr cloud-computing framework based on Landsat time series and LT stacked bands and indices for reconstructing annual land cover maps was developed

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Summary

Introduction

Since 2007, our planet has reached a significant landmark, with urban inhabitants outnumbering those of rural settlements and projections illustrated that urban areas would be housing two-thirds (66%) of the world population by 2050 [1]. Previous studies illustrated that mapping and modeling urban land cover and land-use change, based on Earth Observation (EO) data, was deemed a timely and cost-effective method for quantifying the impact of the urban environmental footprint [12,13,14]. On a pixel-to-pixel approach with simultaneous multispectral pattern analysis in two or more time-series images [21,22,23] By using such traditional methods, it is evident that producing reliable and accurate land cover maps is time-consuming. The availability of analysis-ready EO data cubes and the access to big data analytics capabilities in a cloud-computing environment, such as Google Earth Engine (GEE), has opened the opportunities for continuous monitoring of our changing environment, such as tracking urbanization development and its associated environmental impact. With free and open access to Landsat archives, novel change detection algorithms based on Landsat time series were simulated, and large-scale land change mapping at a medium resolution was significantly improved [15,16,26]

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