Abstract:
A significant problem in satellite imagery is geometric distortion. Accurate remote
sensing and high resolution satellite images have made it necessary to revise the geometric
correction techniques used for ortho-rectification. Conventional methods of photogrammetric
modeling of remotely sensed images are insufficient for mapping purposes and need to be
substituted with more rigorous approach to get a true orthophoto.
FORMOSAT-2, a newly launched remote sensing Taiwanese satellite, has high
spatial resolution sensor onboard for a daily revisit orbit. However, like any image
acquisition system, it also produces geometric distortions in its raw images. Pixel Projection
Model (PPM) was devised by National Space Program Office (NSPO) Taiwan, for
processing of Level-1A (Raw) satellite images to Level-2 (radio metrically corrected)
images. Being systematically corrected, Level-2 images still possess terrain elevation,
rotation-translation and geometric distortions. There was a dire need for enhancement of this
model to produce Level-3 (geometrically corrected) image products.
A novel method for Level-3 correction of satellite images, especially suited for
FORMOSAT-2, has been developed. The PPM has been enhanced to cater for geometric
distortions caused by the attitude change in the satellite specifically in the pre-processing
stage. The three attitude angles of the satellite are thus calculated and corrected as per the
ground position or coordinates using least squares adjustments. The approach is based on
non-systematic method in which physical modeling of the satellite imagery is considered.
The mathematical model has been developed to calculate and correct instrument bias/ attitude
angles. Ground Control Points have been integrated in the algorithm besides vertex matching
iifor more precise results. Results were verified by computing MSE for image to image
matching and point to point matching. An improvement of 86.3% was obtained for the new
Level-3 correction technique over the existing Level-2 algorithm.
Three conventional interpolation techniques for transformation of image pixels to
earth coordinate system were also analyzed for improvement. The experimental results show
that the cubic convolution based modeling is best suited for output pixel value transformation
but it is computationally complex with a higher execution time. To improve this, a wavelet-
transform based filter (Daubechies 4) was developed for image pixel transformation. The
new method provides similar visual interpretation as cubic convolution but with much lower
computational complexity and execution time. The proposed wavelet-transform based
method is an order of magnitude faster than the cubic interpolation technique.
Level-3 geometrically corrected FORMOSAT-2 images can be used for disaster
investigation/ prediction, environmental monitoring, vegetation evaluation, and multi-
temporal image matching. In our work, we have focused on the application of geometrically
corrected imagery for disaster investigation.