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Noise-Adjusted Principle Component Analysis For Hyperspectral Remotely Sensed Imagery Visualization
Minneapolis, Minnesota October 23-October 28
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/VIS.2005.7016th IEEE Visualization 2005 (VIS 2005)
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Shangshu Cai, Mississippi State University
Qian x Qian Du,, Mississippi State University
Robert Moorhead, Mississippi State University
Mahnas Jean Mohammadi-Aragh, Mississippi State University
Derek Irby, Mississippi State University
In recent years, hyperspectral imaging has been developed in remote sensing, which uses hundreds of co-registered spectral channels to acquires images for the same area on the earth. Its high spectral resolution enables researchers and scientists to detect features, classify objects, and extract ground information more accurately. PCA [1] is a typical approach for high-dimensional data analysis, which assembles the major data information into the first several principal components (PCs) based on variance maximization. However, variance is not a good criterion to rank the data features because part of the variance may be from noise. The noise should be whitened before PCA, which is equivalently to rank the PCs in terms of signal-to-noise ratio. The resultant technique is called Noise-Adjusted Principal Component Analysis (NAPCA) [2]. In our research, NAPCA is employed to visualize images taken by Hyperion, the first spaceborne hyperspectral sensor onboard NASA?s EO-1 satellite.
Citation:
Shangshu Cai, Qian x Qian Du,, Robert Moorhead, Mahnas Jean Mohammadi-Aragh, Derek Irby, "Noise-Adjusted Principle Component Analysis For Hyperspectral Remotely Sensed Imagery Visualization," vis, pp.105, 16th IEEE Visualization 2005 (VIS 2005), 2005
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