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The MATLAB Hyperspectral Image Analysis Toolbox

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Presentation on theme: "The MATLAB Hyperspectral Image Analysis Toolbox"— Presentation transcript:

1 The MATLAB Hyperspectral Image Analysis Toolbox
Samuel Rosario-Torres, Dr. Miguel Velez-Reyes, Center for Subsurface Sensing and Imaging Systems, Tropical Center for Earth and Space Studies University of Puerto Rico at Mayagüez, P. O. Box 9042, Mayagüez, Puerto Rico What is the Hyperspectral Image Analysis Toolbox? The Hyperspectral Image Analysis Toolbox (HIAT) is a collection of functions that extend the capability of the MATLAB® numeric computing environment. It has been implemented for the Macintosh and PC-Windows systems using MATLAB. It is intended for the analysis of multispectral and hyperspectral images taken from the different multispectral and hyperspectral sensors available today. The purpose of this toolbox is the development of a system that applies algorithms developed from research done in the Laboratory for Applied Remote Sensing and Image Processing (LARSIP) at the University of Puerto Rico, Mayagüez Campus. Processing Example Image acquired from Hyperion, a hyperspectral imager with 220 spectral bands (.4 to 2.5 µm) at 10 nm spectral resolution and a 30m spatial resolution. The area covers the area of Parguera in Lajas, Puerto Rico. This image has been collected to study the application of hyperspectral remote sensing to study the reefs and other coastal characteristics of the area. In this example, a subset of the data of 169x255 pixels and 196 bands is used. Post-Processing Algorithms Classification Map MATLAB HIAT Version 1.4 Data Processing Scheme for HIAT Gray Scale Color Composite True Color ECHO Post-Classification Map Toolbox Utilities What Can You Do with HIAT? Class Statistics Pixel’s Spectral Signature Loading Images Matlab (*.mat) JPEG and Remote Sensing (*.bip, *.bil, *.bsq) TIFF Image Enhancement Resolution Enhancement PCA Filter Enhancement Feature Extraction/Selection Algorithms Principal Components Analysis Singular Value Decomposition Band Subset Selection Information Divergence Band Subset Selection Discriminant Analysis Information Divergence Projection Pursuit Optimized Information Divergence Projection Pursuit Classifiers Euclidean Distance Fisher’s Linear Discriminant Angle Detection Mahalanobis Distance Maximum Likelihood Abundance Estimation Non Negative Sum To One Non Negative Sum Less or Equal to One Non Negative Least Square Unconstrained Positive Constrained Post-Processing Algorithms ECHO 2x2 ECHO 4x4 ECHO 3x3 Online Documentation & Help Image Enhancement Online Help & Documentation Classification Process Supervised & Unsupervised Classification Abundance Estimation Download the Toolbox Go to Click in Software link Click in SSI Toolboxes Click under The Hyperspectral Toolbox Or Go To CenSSIS VALUE ADDED The Hyperspectral Image Analysis Toolbox will provide support for CenSSIS Academic Institutions interested in HSI. This is specifically for the R3 thrust of CenSSIS, providing for the S2 and S4 areas this type of data analysis. Its contribution extents into providing infrastructure support for the development and distribution processes and to develop guidelines and procedures for software development and testing. Acknowledgment Partially supported by the NSF Engineering Research Centers Program under grant ECC Some algorithms development work was supported by: NASA University Research Centers Program under grant NCC5-518 Department of Defense under DEPSCoR Grant DAAG NIMA grant NMA


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