高光谱图像空间光谱维去相关噪声评估
Optimized spatial and spectral decorrelation method for noise estimation in hyperspectral images
查看参考文献19篇
文摘
|
高光谱图像噪声评估既是评价图像质量的重要内容,也是衡量传感器性能的重要指标。一般噪声评估方法通过对图像规则分割或利用某种距离准则对图像进行连续性分割,计算图像子块的局部标准差或多元线性回归的残差来实现对图像噪声的估计。但这些方法获取的图像子块并不是完全均匀的,图像子块中仍然会存在地物边界,导致图像噪声评估的结果不准确。为了有效提取图像中的均匀子块,本文提出了一种优化的空间光谱维去相关(OSSDC)方法,基于光谱角距离和欧氏距离双重判定,从光谱曲线的形状和数值上寻找相似像元,获取图像中的均匀子块,然后利用多元线性回归计算残差实现对图像噪声的估算。利用模拟图像和实际航空飞行实验获取的高光谱图像对优化算法进行检验,同时与几种常用噪声评估方法进行对比分析,结果表明优化后的算法计算结果更准确,稳定性和适用性优于其他方法。 |
其他语种文摘
|
Noise estimation of hyperspectral images (HSIs) is not only a crucial part of image quality evaluation but is also an important index of sensor performance.Spatial and spectral decorrelation method is a widely used approach for estimating noise in HSIs.This method is based on the high correlation of HSIs in space and spectrum,and a pixel can be predicted well using its spatial and spectral neighbors.Any prediction error can be considered noise.A series of noise estimation algorithms,such as Spatial and Spectral Decorrelation (SSDC),Residual-scaled Local Standard Deviation (RLSD),and Homogeneous Region Division and Spectral Decorrelation (HRDSDC),have been developed on this basis.The images are divided by rule or by some distances between spectrums in the general noise estimated methods.The local standard deviations or the residuals of multiple linear regression of imaging blocks are calculated as the image noise estimation.However,the subblocks of the images acquired by these methods are not completely uniform,and the edges of objects are still retained,thereby resulting in inaccurate outcomes of the image noise estimation.To obtain the uniform imaging blocks in the image effectively,an optimized SSDC method for estimating noise in HSIs has been used.The spectral angle and Euclidean distance are used to obtain the uniform imaging blocks,and the residuals of the heterogeneous blocks are calculated by multiple linear regression as the estimation of image noise.The optimized method is validated with simulated and radiance images acquired in the same aerial experiment and is compared with several useful noise estimation methods (e.g.,LMLSD,RLSD,SSDC,and HRDSDC).The LMLSD method,which is based on spatial dimension,is susceptible to image texture features and is only suitable for images with relatively uniform landcover.The RLSD method has better noise estimation results than LMLSD.However,the uncertainty of the results is large and cannot indicate the noise level of images accurately.The three methods,namely,SSDC,HRDSDC and OSSDC,are all based on the spatial and spectral dimensions,have high stability,and can be applied to various images.The results of HRDSDC are significantly better than those of SSDC,and the OSSDC method exhibits better performance than HRDSDC.The OSSDC method uses the spectral angle and the Euclidean distance to determine the heterogeneous blocks,which reduce the influence of the edge of objects and the texture features.The results of image noise estimation are also accurate.In the validation,the optimized method shows distinctly enhanced robustness compared with the common methods.The estimation of the noise is also proved to be accurate.In addition,the effect of texture features on noise estimation is discussed in this paper.Results show that larger noise estimation results yield complex texture features. |
来源
|
遥感学报
,2021,25(7):1411-1421 【核心库】
|
DOI
|
10.11834/jrs.20219043
|
关键词
|
高光谱影像
;
噪声评估
;
空间光谱维
;
去相关法
;
图像质量评估
;
传感器性能评价
|
地址
|
1.
中国科学院空天信息创新研究院, 北京, 100101
2.
中国科学院大学, 北京, 100049
|
语种
|
中文 |
文献类型
|
研究性论文 |
ISSN
|
1007-4619 |
学科
|
自动化技术、计算机技术 |
基金
|
国家重点研发计划
;
国家自然科学基金
|
文献收藏号
|
CSCD:7024679
|
参考文献 共
19
共1页
|
1.
陈秋林. OMIS成像光谱数据信噪比的估算.
遥感学报,2000,4(4):284-289
|
CSCD被引
13
次
|
|
|
|
2.
Corner B R. Noise estimation in remote sensing imagery using data masking.
International Journal of Remote Sensing,2003,24(4):689-702
|
CSCD被引
20
次
|
|
|
|
3.
Curran P J. Estimation of signal-to-noise: a new procedure applied to AVIRIS data.
IEEE Transactions on Geoscience and Remote Sensing,1989,27(5):620-628
|
CSCD被引
16
次
|
|
|
|
4.
Fu P. Hyperspectral image segmentation via frequency-based similarity for mixed noise estimation.
Remote Sensing,2017,9(12):1237
|
CSCD被引
2
次
|
|
|
|
5.
Fu P. Estimation of signal-dependent and-independent noise from hyperspectral images using a waveletbased superpixel model.
Remote Sensing Letters,2018,9(9):906-915
|
CSCD被引
2
次
|
|
|
|
6.
Gao B C. An operational method for estimating signal to noise ratios from data acquired with imaging spectrometers.
Remote Sensing of Environment,1993,43(1):23-33
|
CSCD被引
38
次
|
|
|
|
7.
高连如. 基于局部标准差的遥感图像噪声评估方法研究.
遥感学报,2007,11(2):201-208
|
CSCD被引
36
次
|
|
|
|
8.
Gao L R. A new operational method for estimating noise in hyperspectral images.
IEEE Geoscience and Remote Sensing Letters,2008,5(1):83-87
|
CSCD被引
13
次
|
|
|
|
9.
Goetz A F H. Imaging spectrometry for earth remote sensing.
Science,1985,228(4704):1147-1153
|
CSCD被引
117
次
|
|
|
|
10.
蒋青松. 实用型模块化成像光谱仪多光谱图像的信噪比估算及压缩方法研究.
光学学报,2003,23(11):1335-1340
|
CSCD被引
15
次
|
|
|
|
11.
Mahmood A. Estimation of correlated noise in hyperspectral images.
Proceedings of the 6th Workshop on Hyperspectral Image and Signal Processing: Evolution in Remote Sensing (WHISPERS),2014:1-4
|
CSCD被引
1
次
|
|
|
|
12.
Mahmood A. Modified residual method for the estimation of noise in hyperspectral images.
IEEE Transactions on Geoscience and Remote Sensing,2017,55(3):1451-1460
|
CSCD被引
1
次
|
|
|
|
13.
Roger R E. Reliably estimating the noise in AVIRIS hyperspectral images.
International Journal of Remote Sensing,1996,17(10):1951-1962
|
CSCD被引
25
次
|
|
|
|
14.
Stein D W J. Anomaly detection from hyperspectral imagery.
IEEE Signal Processing Magazine,2002,19(1):58-69
|
CSCD被引
45
次
|
|
|
|
15.
孙艳丽. 光谱角—欧氏距离的高光谱图像辐射归一化.
遥感学报,2015,19(4):618-626
|
CSCD被引
14
次
|
|
|
|
16.
童庆禧. 中国高光谱遥感的前沿进展.
遥感学报,2016,20(5):689-707
|
CSCD被引
184
次
|
|
|
|
17.
Wrigley R C. Thematic Mapper image quality: Registration, noise, and resolution.
IEEE Transactions on Geoscience and Remote Sensing,1984,22(3):263-271
|
CSCD被引
5
次
|
|
|
|
18.
张兵. 高光谱图像处理与信息提取前沿.
遥感学报,2016,20(5):1062-1090
|
CSCD被引
88
次
|
|
|
|
19.
朱博. 光学遥感图像信噪比评估方法研究进展.
遥感技术与应用,2010,25(2):303-309
|
CSCD被引
21
次
|
|
|
|
|