College of Geo-Exploration Science and Technology, Jilin University, Changchun 130026, China.
College of Construction Engineering, Jilin University, Changchun 130026, China.
Sensors (Basel). 2020 Sep 22;20(18):5447. doi: 10.3390/s20185447.
Nighttime lights (NTL) create a unique footprint left by human activities, which can reflect the economic index and demographic characteristics of a country or region to some extent. It is of great significance to explore the impact of land features related to social-economic indexes to NTL intensity in urban areas. At present, there are few studies on the impact factors of high-resolution NTL remote sensing data to analyze the influence of NTL intensity variation at a fine scale. In this paper, taking Changchun, China as a case study, we selected the new generation of high spatial resolution (0.92 m) and multispectral bands NTL image JL1-3B data to evaluate the relationship between NTL intensity and related land features such as the normalized difference vegetation index (NDVI), land use types and point of information (POI) at the parcel level, and combined Luojia 1-01 images for comparative analysis. After screening features by the Gini index, 17 variables were selected to establish the best random forest (RF) regression model for the Luojia 1-01 and JL1-3B data, corresponding to out-of-bag (oob) scores of 0.8304 and 0.9054, respectively. The impact of features on NTL was determined by calculating the features contribution. It was found that JL1-3B data perform better on a finer scale and provide more information. In addition, JL1-3B data are less affected by light overflow effect and saturation, and they could provide more accurate information at smaller parcels. Through the impact analysis of land features on the two kinds of NTL data, it is proven that JL1-3B images can be used to study effectively the relationship between NTL and human activities information. This paper aims to establish a regression model between the radiance of two types of NTL data and land features by RF algorithm, to further excavate the main land features that impact radiance according to the feature contribution, and compare the performance of two types of NTL data in regression. The study is expected to provide a reference to the further application of NTL data such as land feature inversion, artificial surface monitoring and evaluation, geographic information point estimation, information mining, etc., and a more comprehensive cognition of land feature impact to urban social-economic indexes from a unique perspective, which can be used to assist urban planning and related decision-making.
夜间灯光(NTL)产生了人类活动留下的独特足迹,在一定程度上可以反映一个国家或地区的经济指标和人口特征。探索与社会经济指标相关的土地特征对城市 NTL 强度的影响具有重要意义。目前,关于高分辨率 NTL 遥感数据影响因素的研究较少,难以分析精细尺度上 NTL 强度变化的影响。本文以中国长春为例,选取新一代高空间分辨率(0.92m)多光谱波段 NTL 图像 JL1-3B 数据,评估 NTL 强度与归一化植被指数(NDVI)、土地利用类型和信息点(POI)等相关土地特征之间的关系,并结合珞珈一号 01 星图像进行对比分析。通过基尼指数筛选特征后,选择 17 个变量建立珞珈一号 01 星和 JL1-3B 数据的最优随机森林(RF)回归模型,对应的袋外(oob)得分分别为 0.8304 和 0.9054。通过计算特征贡献来确定特征对 NTL 的影响。结果表明,JL1-3B 数据在更精细的尺度上表现更好,提供了更多信息。此外,JL1-3B 数据受光溢出效应和饱和的影响较小,可以在较小的图斑上提供更准确的信息。通过分析土地特征对两种 NTL 数据的影响,证明 JL1-3B 图像可以有效地用于研究 NTL 与人类活动信息之间的关系。本文旨在通过 RF 算法建立两种 NTL 数据的辐射率与土地特征之间的回归模型,根据特征贡献进一步挖掘影响辐射率的主要土地特征,并比较两种 NTL 数据在回归中的性能。本研究期望为 NTL 数据在土地特征反演、人工表面监测与评价、地理信息点估计、信息挖掘等方面的进一步应用提供参考,并从独特的视角对土地特征对城市社会经济指标的影响有更全面的认识,为城市规划和相关决策提供辅助。