Satellite remote sensing of inland water body requires a high spatial resolution and a multiband narrow spectral resolution, which makes the fusion between panchromatic(PAN) and multi-spectral(MS) images particularly ...Satellite remote sensing of inland water body requires a high spatial resolution and a multiband narrow spectral resolution, which makes the fusion between panchromatic(PAN) and multi-spectral(MS) images particularly important. Taking the Daquekou section of the Qiantang River as an observation target, four conventional fusion methods widely accepted in satellite image processing, including pan sharpening(PS), principal component analysis(PCA), Gram-Schmidt(GS), and wavelet fusion(WF), are utilized to fuse MS and PAN images of GF-1.The results of subjective and objective evaluation methods application indicate that GS performs the best,followed by the PCA, the WF and the PS in the order of descending. The existence of a large area of the water body is a dominant factor impacting the fusion performance. Meanwhile, the ability of retaining spatial and spectral informations is an important factor affecting the fusion performance of different fusion methods. The fundamental difference of reflectivity information acquisition between water and land is the reason for the failure of conventional fusion methods for land observation such as the PS to be used in the presence of the large water body. It is suggested that the adoption of the conventional fusion methods in the observing water body as the main target should be taken with caution. The performances of the fusion methods need re-assessment when the large-scale water body is present in the remote sensing image or when the research aims for the water body observation.展开更多
The Staring Area Imaging Technology(SAIT) satellite continuously "images" the target over a certain time range, and can realize continuous imaging and multi-angle imaging of the area of interest. It has the ...The Staring Area Imaging Technology(SAIT) satellite continuously "images" the target over a certain time range, and can realize continuous imaging and multi-angle imaging of the area of interest. It has the characteristics of flexible imaging parameter setting and fast image preprocessing speed, enabling dynamic target detection and tracking, super-resolution, surface 3 D model construction, night-time imaging and many other application tasks. Based on the technical characteristics of the SAIT satellite, this paper analyzes the challenges in satellite development and data processing, focuses on the quasi-realtime application of SAIT satellite data, and looks at the development trend of the SAIT satellite.展开更多
2013年4月成功发射的GF-1卫星是中国高分系列卫星的首发星,影像在中国农情遥感监测业务中得到了广泛应用,已成为大宗农作物种植面积遥感监测的主要数据源之一。高精度几何位置的配准是卫星农情定量化应用的基础与前提,该文提出了一种基...2013年4月成功发射的GF-1卫星是中国高分系列卫星的首发星,影像在中国农情遥感监测业务中得到了广泛应用,已成为大宗农作物种植面积遥感监测的主要数据源之一。高精度几何位置的配准是卫星农情定量化应用的基础与前提,该文提出了一种基于区域网平差方法修正GF-1卫星WFV(wide field view,WFV)影像RPC(rational polynomial coefficients,RPC)参数,获取更高几何定位精度的校正方法,形成了模式化的业务处理流程,为该影像在农情遥感监测中的应用奠定了基础。算法流程包括2个部分,首先是基于像面间仿射变换关系及有理多项式RFM(rational function model,RFM)模型构建轨道间的区域网平差数学模型,其次是根据影像连接点及少量控制点输入求解所有参与平差的卫星影像定向参数,获取亚像元级的校正结果。平差参数的解算是通过两步求解完成的,初始平差参数是根据连接点及对应的DEM高程值进行平差迭代至收敛,结果平差参数是将初始平差参数作为初始值代入区域网平差模型,并以逐点消元方式约化法方程,解算出各影像的仿射变换参数。该文在求解平差参数过程中,直接使用DEM(digital elevation model)上获取的高程值作为约束条件,消除了平面坐标与高程的相关性,保证了区域网平差模型能够解算。混合地形、平原、山区3种情况下区域网平差结果表明,全连接点平差结果具有较高的相对定位精度,其行方向的中误差分别为0.3046、0.4674、0.3365像元,列方向的中误差分别为0.3677、0.2849、0.2889像元;而结合少量控制点的区域网平差则同时具有很高的绝对定位精度,其行方向的中误差分别为0.3648、0.5041、0.3605像元,列方向的中误差分别为0.4954、0.4039、0.6323像元,整体达到了亚像素级。最后,在农业应用基础控制底图的支持下,分别对原始影像、RPC校正影像、区域网平差后的影像进行几何配准,分析不同输入影像条件下的几何校正精度,仅有区域网平差后的影像达到了亚像元的校正精度,混合地形、平原、山区3种情况下行方向的中误差分别为0.6857、0.6664、1.0646像元,列方向的均方差分别为0.4342、0.4696、0.5609像元,但与几何校正前精度相比没有明显改善,说明本文提出的研究方法可以实现少量控制点条件下的几何精校正。不同DEM校正结果表明,对于山区,更高分辨率的DEM可以获得更好的定位精度。上述研究充分表明,该方法对GF-1/WFV数据的处理有效且可行,并在农业部中国农情遥感业务工作中得到了初步应用。展开更多
基金The National Key Research and Development Program of China under contract Nos 2016YFC1400901 and 2018YFC1406600the National Natural Science Foundation of China under contract No.40706057+1 种基金the Environmental Protection and Science and Technology Plan Project of Zhejiang Province of China under contract No.2013A021the Research Center for Air Pollution and Health of Zhejiang University
文摘Satellite remote sensing of inland water body requires a high spatial resolution and a multiband narrow spectral resolution, which makes the fusion between panchromatic(PAN) and multi-spectral(MS) images particularly important. Taking the Daquekou section of the Qiantang River as an observation target, four conventional fusion methods widely accepted in satellite image processing, including pan sharpening(PS), principal component analysis(PCA), Gram-Schmidt(GS), and wavelet fusion(WF), are utilized to fuse MS and PAN images of GF-1.The results of subjective and objective evaluation methods application indicate that GS performs the best,followed by the PCA, the WF and the PS in the order of descending. The existence of a large area of the water body is a dominant factor impacting the fusion performance. Meanwhile, the ability of retaining spatial and spectral informations is an important factor affecting the fusion performance of different fusion methods. The fundamental difference of reflectivity information acquisition between water and land is the reason for the failure of conventional fusion methods for land observation such as the PS to be used in the presence of the large water body. It is suggested that the adoption of the conventional fusion methods in the observing water body as the main target should be taken with caution. The performances of the fusion methods need re-assessment when the large-scale water body is present in the remote sensing image or when the research aims for the water body observation.
文摘The Staring Area Imaging Technology(SAIT) satellite continuously "images" the target over a certain time range, and can realize continuous imaging and multi-angle imaging of the area of interest. It has the characteristics of flexible imaging parameter setting and fast image preprocessing speed, enabling dynamic target detection and tracking, super-resolution, surface 3 D model construction, night-time imaging and many other application tasks. Based on the technical characteristics of the SAIT satellite, this paper analyzes the challenges in satellite development and data processing, focuses on the quasi-realtime application of SAIT satellite data, and looks at the development trend of the SAIT satellite.
文摘2013年4月成功发射的GF-1卫星是中国高分系列卫星的首发星,影像在中国农情遥感监测业务中得到了广泛应用,已成为大宗农作物种植面积遥感监测的主要数据源之一。高精度几何位置的配准是卫星农情定量化应用的基础与前提,该文提出了一种基于区域网平差方法修正GF-1卫星WFV(wide field view,WFV)影像RPC(rational polynomial coefficients,RPC)参数,获取更高几何定位精度的校正方法,形成了模式化的业务处理流程,为该影像在农情遥感监测中的应用奠定了基础。算法流程包括2个部分,首先是基于像面间仿射变换关系及有理多项式RFM(rational function model,RFM)模型构建轨道间的区域网平差数学模型,其次是根据影像连接点及少量控制点输入求解所有参与平差的卫星影像定向参数,获取亚像元级的校正结果。平差参数的解算是通过两步求解完成的,初始平差参数是根据连接点及对应的DEM高程值进行平差迭代至收敛,结果平差参数是将初始平差参数作为初始值代入区域网平差模型,并以逐点消元方式约化法方程,解算出各影像的仿射变换参数。该文在求解平差参数过程中,直接使用DEM(digital elevation model)上获取的高程值作为约束条件,消除了平面坐标与高程的相关性,保证了区域网平差模型能够解算。混合地形、平原、山区3种情况下区域网平差结果表明,全连接点平差结果具有较高的相对定位精度,其行方向的中误差分别为0.3046、0.4674、0.3365像元,列方向的中误差分别为0.3677、0.2849、0.2889像元;而结合少量控制点的区域网平差则同时具有很高的绝对定位精度,其行方向的中误差分别为0.3648、0.5041、0.3605像元,列方向的中误差分别为0.4954、0.4039、0.6323像元,整体达到了亚像素级。最后,在农业应用基础控制底图的支持下,分别对原始影像、RPC校正影像、区域网平差后的影像进行几何配准,分析不同输入影像条件下的几何校正精度,仅有区域网平差后的影像达到了亚像元的校正精度,混合地形、平原、山区3种情况下行方向的中误差分别为0.6857、0.6664、1.0646像元,列方向的均方差分别为0.4342、0.4696、0.5609像元,但与几何校正前精度相比没有明显改善,说明本文提出的研究方法可以实现少量控制点条件下的几何精校正。不同DEM校正结果表明,对于山区,更高分辨率的DEM可以获得更好的定位精度。上述研究充分表明,该方法对GF-1/WFV数据的处理有效且可行,并在农业部中国农情遥感业务工作中得到了初步应用。