A robust gap-filling method for predicting missing observations in daily Black Marble nighttime light data

IF 6 2区 地球科学 Q1 GEOGRAPHY, PHYSICAL GIScience & Remote Sensing Pub Date : 2023-12-14 DOI:10.1080/15481603.2023.2282238
Xiangyu Hao, Jinxiu Liu, J. Heiskanen, E. Maeda, Si Gao, Xuecao Li
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Abstract

ABSTRACT Nighttime light (NTL) remote sensing data plays a crucial role in comprehending changes in human activities. The availability of the daily lunar BRDF-corrected Black Marble NTL product (VNP46A2) enables the use of NTL data to detect and assess the impact of short-term emergencies. However, daily NTL data often experience missing values due to cloud cover and low-quality signals. To address this issue, many studies utilize monthly or annual time-composite NTL products, which restrict the timeliness and potential application scenarios of NTL data usage. Therefore, it is necessary to generate the gap-filled daily NTL product. This study presented a novel NTL gap-filling method comprising rough reconstruction based on spatiotemporal weighting and refined gap-filling using a Bidirectional Long Short-Term Memory (Bi-LSTM) model. We evaluate the accuracy of the proposed method using the “remove-reconstruct-compare” approach, which randomly removes some original data from the complete image, fills the gaps with the proposed gap-filling method, and compares the reconstructed NTL data with the original observations in Beijing, Shanghai, Xi’an and New York. The results reveal that when the rate of missing values in Beijing is 40% and 50%, the proposed gap-filling method achieves accuracy with mean coefficient of determination (R2) values of 0.834 and 0.841, accompanied by corresponding root mean square (RMSE) values of 7.793 and 7.171, respectively. Furthermore, the gap-filling accuracy was evaluated quantitatively, and our proposed gap-filling method performed better than the Spatial and Temporal Adaptive Reflectance Fusion Model (STARFM). Our proposed gap-filling method had R2 values of 0.685, 0.781, 0.720 and 0.642, which were higher than those for STARFM (0.430, 0.662, 0.221 and 0.345). The RMSE values of our gap-filling method were 9.628, 12.083, 10.963 and 19.882 for the four sites, while those of STARFM were 12.953, 14.872, 18.280 and 26.990, respectively. The temporal and spatial analysis results demonstrate that this model is robust, capturing city boundaries and NTL high-brightness hotspots with high accuracy and stability. The gap-filling model proposed in this study provides a new technique for expanding the potential applications and reliability of NASA’s daily Black Marble product (VNP46A2) in remote sensing.
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用于预测每日黑云石夜间光照数据中缺失观测值的稳健填隙法
摘要 夜间光线(NTL)遥感数据在理解人类活动变化方面发挥着至关重要的作用。经过月球BRDF校正的黑云母NTL产品(VNP46A2)的提供,使人们能够利用NTL数据探测和评估短期紧急事件的影响。然而,由于云层覆盖和信号质量低劣,每日 NTL 数据经常会出现缺失值。为解决这一问题,许多研究使用月度或年度时间复合 NTL 产品,这限制了 NTL 数据使用的及时性和潜在应用场景。因此,有必要生成间隙填充的每日 NTL 产品。本研究提出了一种新颖的 NTL 缺口填补方法,包括基于时空加权的粗略重建和使用双向长短期记忆(Bi-LSTM)模型的精细缺口填补。我们采用 "移除-重建-比较 "的方法评估了所提方法的准确性,即从完整图像中随机移除一些原始数据,用所提间隙填充方法填充间隙,并将重建的 NTL 数据与北京、上海、西安和纽约的原始观测数据进行比较。结果表明,当北京的缺失值率为 40% 和 50%时,所提出的补缺方法达到了精确度,其平均决定系数 (R2) 值分别为 0.834 和 0.841,相应的均方根 (RMSE) 值分别为 7.793 和 7.171。此外,还对填隙精度进行了定量评估,我们提出的填隙方法比时空自适应反射率融合模型(STARFM)表现更好。我们提出的间隙填充方法的 R2 值分别为 0.685、0.781、0.720 和 0.642,高于 STARFM 的 R2 值(0.430、0.662、0.221 和 0.345)。我们的填空方法在四个站点的 RMSE 值分别为 9.628、12.083、10.963 和 19.882,而 STARFM 的 RMSE 值分别为 12.953、14.872、18.280 和 26.990。时空分析结果表明,该模型具有很强的鲁棒性,能准确捕捉城市边界和 NTL 高亮度热点,具有很高的准确性和稳定性。本研究提出的补缺模型为拓展 NASA 每日黑云石产品(VNP46A2)在遥感领域的潜在应用和可靠性提供了一种新技术。
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来源期刊
CiteScore
11.20
自引率
9.00%
发文量
84
审稿时长
6 months
期刊介绍: GIScience & Remote Sensing publishes original, peer-reviewed articles associated with geographic information systems (GIS), remote sensing of the environment (including digital image processing), geocomputation, spatial data mining, and geographic environmental modelling. Papers reflecting both basic and applied research are published.
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