School of Transportation Engineering, Shenyang Jianzhu University, Hunnan District, Shenyang, China.
PLoS One. 2020 Oct 1;15(10):e0239371. doi: 10.1371/journal.pone.0239371. eCollection 2020.
Mastering the evolution of urban land cover is important for urban management and planning. In this paper, a method for analyzing land cover evolution within urban built-up areas based on nighttime light data and Landsat data is proposed. The method solves the problem of inaccurate descriptions of urban built-up area boundaries from the use of single-source diurnal or nocturnal remote sensing data and was able to achieve an effective analysis of land cover evolution within built-up areas. Four main procedures are involved: (1) The neighborhood extremum method and maximum likelihood method are used to extract nighttime light data and the urban built-up area boundaries from the Landsat data, respectively; (2) multisource urban boundaries are obtained using boundary pixel fusion of the nighttime light data and Landsat urban built-up area boundaries; (3) the maximum likelihood method is used to classify Landsat data within multisource urban boundaries into land cover classes, such as impervious surface, vegetation and water, and to calculate landscape indexes, such as overall landscape trends, degree of fragmentation and degree of aggregation; (4) the changes in the multisource urban boundaries and landscape indexes were obtained using the abovementioned methods, which were supported by multitemporal nighttime light data and Landsat data, to model the urban land cover evolution. Using the cities of Shenyang, Changchun and Harbin in northeastern China as experimental areas, the multitemporal landscape index showed that the integration and aggregation of land cover in the urban areas had an increasing trend, the natural environment of Shenyang and Harbin was improving, while Changchun laid more emphasis on the construction of artificial facilities. At the same time, the method proposed in this paper to extract built-up areas from multi-source city data showed that the user accuracy, production accuracy, overall accuracy and Kappa coefficient are at least 3%, 1%, 1% and 0.04 higher than the single-source data method.
掌握城市土地覆盖的演变对于城市管理和规划非常重要。本文提出了一种基于夜间灯光数据和 Landsat 数据分析城市建成区土地覆盖演变的方法。该方法解决了单一源昼间或夜间遥感数据使用时城市建成区边界描述不准确的问题,能够有效地分析建成区内土地覆盖的演变。主要包括四个步骤:(1)利用邻域极值法和最大似然法分别从 Landsat 数据中提取夜间灯光数据和城市建成区边界;(2)利用夜间灯光数据和 Landsat 城市建成区边界的边界像素融合获取多源城市边界;(3)利用最大似然法对多源城市边界内的 Landsat 数据进行土地覆盖分类,如不透水面、植被和水,并计算景观指数,如整体景观趋势、破碎度和聚集度;(4)利用上述方法获得多源城市边界和景观指数的变化,结合多时相夜间灯光数据和 Landsat 数据,建立城市土地覆盖演变模型。以中国东北地区的沈阳、长春和哈尔滨三个城市为实验区,多时相景观指数表明,城市土地覆盖的整合和聚集呈增长趋势,沈阳和哈尔滨的自然环境得到改善,而长春更注重人工设施的建设。同时,本文提出的从多源城市数据中提取建成区的方法表明,与单一源数据方法相比,用户精度、生产精度、总体精度和 Kappa 系数至少提高了 3%、1%、1%和 0.04。