CVJul 20, 2012

A Novel Metric Approach Evaluation For The Spatial Enhancement Of Pan-Sharpened Images

arXiv:1207.5064v115 citations
Originality Synthesis-oriented
AI Analysis

This work addresses a specific problem in remote sensing and image processing by providing an incremental evaluation method for assessing spatial quality in fused images.

The paper tackles the lack of objective measures for assessing spatial resolution enhancement in pan-sharpened images by proposing a new metric called High Past Division Index (HPDI) to estimate spatial improvement, and it compares various analytical techniques for evaluating spatial quality and color distortion.

Various and different methods can be used to produce high-resolution multispectral images from high-resolution panchromatic image (PAN) and low-resolution multispectral images (MS), mostly on the pixel level. The Quality of image fusion is an essential determinant of the value of processing images fusion for many applications. Spatial and spectral qualities are the two important indexes that used to evaluate the quality of any fused image. However, the jury is still out of fused image's benefits if it compared with its original images. In addition, there is a lack of measures for assessing the objective quality of the spatial resolution for the fusion methods. So, an objective quality of the spatial resolution assessment for fusion images is required. Therefore, this paper describes a new approach proposed to estimate the spatial resolution improve by High Past Division Index (HPDI) upon calculating the spatial-frequency of the edge regions of the image and it deals with a comparison of various analytical techniques for evaluating the Spatial quality, and estimating the colour distortion added by image fusion including: MG, SG, FCC, SD, En, SNR, CC and NRMSE. In addition, this paper devotes to concentrate on the comparison of various image fusion techniques based on pixel and feature fusion technique.

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