publication . Preprint . 2013

Image Fusion Technologies In Commercial Remote Sensing Packages

Al-Wassai, Firouz Abdullah; Kalyankar, N. V.;
Open Access English
  • Published: 09 Jul 2013
Several remote sensing software packages are used to the explicit purpose of analyzing and visualizing remotely sensed data, with the developing of remote sensing sensor technologies from last ten years. Accord-ing to literature, the remote sensing is still the lack of software tools for effective information extraction from remote sensing data. So, this paper provides a state-of-art of multi-sensor image fusion technologies as well as review on the quality evaluation of the single image or fused images in the commercial remote sensing pack-ages. It also introduces program (ALwassaiProcess) developed for image fusion and classification.
free text keywords: Computer Science - Computer Vision and Pattern Recognition
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