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引用次数: 0
摘要
摘要:高光谱成像经常因被称为“条纹噪声”的基于传感器的系统误差而退化。本研究从高度相关的连续波段(即左波段、右波段或两者)实现了一种基于光谱的回归算法,以对PRISMA(PRecursore IperSpettrale della Missione Applicativa)图像的各个波段中的异常像素值(条纹噪声)进行建模和重建。基于重建图像的像素值(反射率)与其对应的原始像素值之间的统计差异来评估建模性能。结果表明该模型在R2、RMSE、rRMSE和大多数频带的偏度方面具有较高的准确性)。此外,结果表明,与单波段建模相比,两个波段的组合具有更高的精度和像素的均匀性。我们的研究结果表明,该算法在很大程度上取决于相邻波段之间的光谱相似性,因此光谱相似性越高,模型性能越高,反之亦然。随后,在频带143中观察到最小的模型性能,这是由于其与相邻的右频带具有较低的光谱相似性、较低的频谱相关性和较高的波长差。最后,该研究表明,与其他方法一样,我们的算法可以作为一种可靠、直接和准确的替代方法,用于破坏不同的地球观测卫星图像。还讨论了拟议方法的局限性。
Spectral-based regression model for destriping of abnormal pixel values in PRISMA hyperspectral image
ABSTRACT Hyperspectral imageries are often degraded by systematic sensor-based errors known as “striping noises”. This study implements a spectral-based regression algorithm from highly correlated consecutive bands, i.e. left band, right band or both, to model and reconstruct the abnormal pixel values, stripe noises, in various bands of PRISMA (PRecursore IperSpettrale della Missione Applicativa) imagery. The modeling performance was evaluated based on the statistical difference between the reconstructed images’ pixel values (reflectance) and their corresponding original pixel values. Results referred to the model’s high accuracy in R 2, RMSE, rRMSE and skewness in most bands ). Furthermore, the results indicated that the combination of both bands had higher accuracy and pixels’ homogeneity preservation compared to single-band modeling. Our findings suggested that the algorithm significantly depends on the spectral similarities between neighboring bands so that the higher spectral similarities lead to the higher model performance and vice versa. Subsequently, the minimum model performance was observed in band 143 due to lower spectral similarity, lower spectral correlation and higher wavelength differences with its adjacent right band. Finally, the study suggests that alongside other methods, our algorithm may be used as a reliable, straightforward and accurate alternative for destriping different Earth observation satellite imageries. Limitations of the proposed approach are also discussed.
期刊介绍:
European Journal of Remote Sensing publishes research papers and review articles related to the use of remote sensing technologies. The Journal welcomes submissions on all applications related to the use of active or passive remote sensing to terrestrial, oceanic, and atmospheric environments. The most common thematic areas covered by the Journal include:
-land use/land cover
-geology, earth and geoscience
-agriculture and forestry
-geography and landscape
-ecology and environmental science
-support to land management
-hydrology and water resources
-atmosphere and meteorology
-oceanography
-new sensor systems, missions and software/algorithms
-pre processing/calibration
-classifications
-time series/change analysis
-data integration/merging/fusion
-image processing and analysis
-modelling
European Journal of Remote Sensing is a fully open access journal. This means all submitted articles will, if accepted, be available for anyone to read anywhere, at any time, immediately on publication. There are no charges for submission to this journal.