A data-distributed parallel algorithm for wavelet-based fusion of remote sensing images
YANG Xuejun, WANG Panfeng, DU Yunfei, ZHOU Haifang
Author information+
School of Computer, National University of Defense Technology, Changsha 410073, China;
Show less
History+
Published
05 Jun 2007
Issue Date
05 Jun 2007
Abstract
With the increasing importance of multiplatform remote sensing missions, the fast integration or fusion of digital images from disparate sources has become critical to the success of these endeavors. In this paper, to speed up the fusion process, a Data-distributed Parallel Algorithm for wavelet-based Fusion (DPAF for short) of remote sensing images which are not geo-registered remote sensing images is presented for the first time. To overcome the limitations on memory space as well as the computing capability of a single processor, data distribution, data-parallel processing and load balancing techniques are integrated into DPAF. To avoid the inherent communication overhead of a wavelet-based fusion method, a special design called redundant partitioning is used, which is inspired by the characteristics of wavelet transform. Finally, DPAF is evaluated in theory and tested on a 32-CPU cluster of workstations. The experimental results show that our algorithm has good parallel performance and scalability.
YANG Xuejun, WANG Panfeng, DU Yunfei, ZHOU Haifang.
A data-distributed parallel algorithm for wavelet-based fusion of remote sensing images. Front. Comput. Sci., 2007, 1(2): 231‒240 https://doi.org/10.1007/s11704-007-0024-1
{{custom_sec.title}}
{{custom_sec.title}}
{{custom_sec.content}}
This is a preview of subscription content, contact us for subscripton.
AI Summary 中Eng×
Note: Please note that the content below is AI-generated. Frontiers Journals website shall not be held liable for any consequences associated with the use of this content.