研究目的
Investigating the need for a consistent but locally adaptive image enhancement technique for synthetic aperture radar (SAR) images, introducing a novel approach of multiscale and multidirectional multilooking based on intensity images.
研究成果
The Schmittlet-based image enhancement technique represents the first multiscale and multidirectional enhancement technique for SAR intensity images, enabling fully automatic SAR image enhancement of unprecedented quality, most suitable for very diverse landscapes. The structure information contained in the Schmittlet index layer provides an optimum basis for the sophisticated analysis of spatial patterns which might be of high importance for numerous remote sensing tasks in future.
研究不足
The study acknowledges the computational intensity of the Schmittlet approach and the need for careful estimation of the real noise content by the help of meta data and a critical review of the preceding image processing. The additional value of the Schmittlet index layer for automated image interpretation, although obvious, is still subject to further studies.
1:Experimental Design and Method Selection:
The study introduces a novel approach of multiscale and multidirectional multilooking based on intensity images, using a set of 2-D circular and elliptical filter kernels (Schmittlets) derived from hyperbolic functions. The original intensity image is transformed into the Schmittlet coefficient domain where each coefficient measures the existence of Schmittlet-like structures in the image.
2:Sample Selection and Data Sources:
The test images are taken from the total intensity (σ0) of a TerraSAR-X high-resolution spotlight acquisition in HH and VV polarization over the urban area of Mannheim-Ludwigshafen in south-western Germany. Four different test sites have been selected: agricultural land, park area, residential buildings, and industrial facilities.
3:List of Experimental Equipment and Materials:
The study utilizes TerraSAR-X data for validation.
4:Experimental Procedures and Operational Workflow:
The methodology involves the convolution of the input image with each Schmittlet, calculation of Schmittlet coefficients, estimation of their significance via the perturbation-based noise model, selection of the best-fitting Schmittlets for image reconstruction, and validation of the approach against six contemporary speckle reduction techniques.
5:Data Analysis Methods:
The study evaluates the effectiveness of the Schmittlet enhancement technique through qualitative and quantitative comparisons, including preservation of the mean intensity, equivalent number of looks, and preservation of edges and local curvature both in strength and in direction.
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