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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Correcting the Pixel Blooming Effect (PiBE) of DMSP-OLS nighttime light imagery
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Correcting the Pixel Blooming Effect (PiBE) of DMSP-OLS nighttime light imagery

机译:纠正DMSP-OLS夜间灯图像的像素盛开效果(PIBE)

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In the last two decades, the advance in nighttime light (NTL) remote sensing has fueled a surge in extensive research towards mapping human footprints. Nevertheless, the full potential of NTL data is largely constrained by the blooming effect. In this study, we propose a new concept, the Pixel Blooming Effect (PiBE), to delineate the mutual influence of lights from a pixel and its neighbors, and an integrated framework to eliminate the PiBE in radiance calibrated DMSP-OLS datasets (DMSPgrc). First, lights from isolated gas flaring sources and a Gaussian model were used to model how the PiBE functions on each pixel through point spread function (PSF). Second, a two-stage deblurring approach (TSDA) was developed to deconvolve DMSPgrc images with Tikhonov regularization to correct the PiBE and reconstruct PiBE-free images. Third, the proposed framework was assessed by synthetic data and VIIRS imagery and by testing the resulting image with two applications. We found that high impervious surface fraction pixels (ISF > 0.6) were impacted by the highest absolute magnitude of PiBE, whereas NTL pattern of low ISF pixels (ISF < 0.2) was more sensitive to the PiBE. By using TSDA the PiBE in DMSPgrc images was effectively corrected which enhanced data variation and suppressed pseudo lights from non-built-up pixels in urban areas. The reconstructed image had the highest similarity to reference data from synthetic image (SSIM = 0.759) and VIIRS image (r = 0.79). TSDA showed an acceptable performance for linear objects (width > 1.5 km) and circular objects (radius > 0.5 km), and for NTL data with different noise levels (< 0.6 sigma). In summary, the proposed framework offers a new opportunity to improve the quality of DMSP-OLS images and subsequently will be conducive to NTL-based applications, such as mapping urban extent, estimating socioeconomic variables, and exploring eco-impact of artificial lights.
机译:在过去的二十年中,夜间光线(NTL)遥感的进步促使对绘制人类足迹的广泛研究引起了激增。然而,NTL数据的全部潜力主要受盛开效果的限制。在这项研究中,我们提出了一种新的概念,像素盛开效果(PIBE),描绘来自像素及其邻居的灯光的相互影响,以及一个集成框架,以消除辐射校准DMSP-OLS数据集(DMSPGRC) 。首先,来自隔离气体辐射源和高斯模型的灯用于模拟PIBE如何通过点扩展功能(PSF)来模拟每个像素。其次,通过Tikhonov正规向Dikhonov正规开发了两阶段的去掩盖方法(TSDA),以纠正PIBE并重建无处理图像。第三,通过合成数据和Viirs图像评估所提出的框架,并通过两个应用测试所得到的图像。我们发现,高透不透过的表面分数像素(ISF> 0.6)受到最高绝对幅度的影响,而低ISF像素的NTL模式(ISF <0.2)对PIBE更敏感。通过使用TSDA,DMSPGRC图像中的PIBE得到了有效地校正了来自城市区域中非构建像素的数据变化和抑制伪灯。重建图像与来自合成图像(SSIM = 0.759)和VIIR图像(R = 0.79)的引用数据具有最高的相似性。 TSDA显示了线性物体(宽度> 1.5 km)和圆形物体(半径> 0.5 km)的可接受性能,以及具有不同噪声水平的NTL数据(<0.6 sigma)。总之,拟议的框架提供了提高DMSP-OLS图像质量的新机会,随后将有利于基于NTL的应用,例如绘制城市范围,估算社会经济变量,并探索人造灯的生态影响。

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