Wavelet-Based Image Registration on Parallel Computers

Digital image registration is very important in many applications, such as medical imagery, robotics, visual inspection, and remotely sensed data processing. NASA s Mission To Planet Earth (MTPE) program will be producing enormous Earth global change data, reaching hundreds of Gigabytes per day, that are collected form different spacecrafts and different perspectives using many sensors with diverse resolutions and characteristics. The analysis of such data requires integration, therefore, accurate registration of these data. Image registration is defined as the process which determines the most accurate relative orientation between two or more images, acquired at the same or different times by different or identical sensors. Registration can also provide the absolute orientation between an image and a map.

[1]  J. Le Moigne,et al.  Towards a parallel registration of multiple resolution remote sensing data , 1995 .

[2]  P. Merkey,et al.  Beowulf: harnessing the power of parallelism in a pile-of-PCs , 1997, 1997 IEEE Aerospace Conference.

[3]  J. L. Moigne,et al.  Refining image segmentation by integration of edge and region data , 1992, IEEE Trans. Geosci. Remote. Sens..

[4]  Marco Corvi,et al.  Multiresolution image registration , 1995, Proceedings., International Conference on Image Processing.

[5]  Tarek A. El-Ghazawi,et al.  An experimental study of input/output characteristics of NASA Earth and Space Sciences applications , 1996, Proceedings of International Conference on Parallel Processing.

[6]  Thomas L. Sterling,et al.  Achieving a balanced low-cost architecture for mass storage management through multiple fast Ethernet channels on the Beowulf parallel workstation , 1996, Proceedings of International Conference on Parallel Processing.

[7]  J. L. Moigne Parallel registration of multisensor remotely sensed imagery using wavelet coefficients , 1994 .

[8]  T.A. El-Ghazawi,et al.  The performance impact of data placement for wavelet decomposition of two-dimensional image data on SIMD machines , 1995, Proceedings Frontiers '95. The Fifth Symposium on the Frontiers of Massively Parallel Computation.

[9]  Tarek A. El-Ghazawi,et al.  Wavelet decomposition on high-performance computing systems , 1996, Proceedings of the 1996 ICPP Workshop on Challenges for Parallel Processing.