4

Design of Synthetic Image Experiments

Many hyperspectral imaging algorithms have been developed for various applications such as spectral unmixing, subpixel detection, quantification, endmember extraction, classification, compression, as well as many more yet to explored. While each algorithm deserves its own right, it is very difficult to compare them one against another without a fair common ground. This chapter makes an attempt to design a set of standardized synthetic images for hyperspectral target analysis which simulate various scenarios so that different algorithms can be validated and evaluated on the same setting with completely controllable environments. Here, the term “target” used here is generic and simply indicates an object of interest in data analysis where a real target is specified by a certain application such as endmembers, anomalies, and man-made objects. Two types of scenarios are developed to simulate how a target can be inserted into the image background. One is called target implantation (TI) which implants a target by removing the background pixels they intend to replace. This type of scenario is of particular interest in endmember extraction where pure signatures can be simulated and inserted into the background with a target of guaranteed 100% purity. The other is called target embeddedness (TE) which embeds a target by superimposing it over the background pixels they intend to insert. This type of scenario can be used to simulate signal detection ...

Get Hyperspectral Data Processing: Algorithm Design and Analysis now with the O’Reilly learning platform.

O’Reilly members experience books, live events, courses curated by job role, and more from O’Reilly and nearly 200 top publishers.