Title :
Development of a field-portable imaging system for scene classification using multispectral data fusion algorithms
Author :
Preston, Evan ; Bergman, Tom ; Gorenflo, Ron ; Hermann, Dave ; Kopala, Ed ; Kuzma, Tom ; Lazofson, Larry ; Orkis, Randy
Author_Institution :
Battelle Memorial Inst., Columbus, OH, USA
Abstract :
Battelle scientists are involved in the development of a real-time multispectral imaging and classification system which can be taken into the field to support automated target/background discrimination. The system also has applications in environmental remote sensing, industrial inspection and medical imaging. The Battelle-developed system consists of a passive, multispectral imaging Electro-Optical (E-O) sensor suite and a real-time digital data collection and data fusion image processor. The E-O sensor suite, able to collect imagery in 12 distinct wavebands from the ultraviolet (UV) through the long wave infrared (LWIR), consists of five charge-coupled device (CCD) cameras and two thermal IR imagers integrated on a common platform. The data collection and processing system consists of video switchers, recorders and a real-time sensor fusion/classification hardware system which takes any three wavebands as input and fuses the bands together by applying look-up tables, derived from tailored neural network algorithms, to classify the scene. The result is then visualized in a video format on a full color, 9-inch, active matrix Liquid Crystal Display (LCD). A variety of classification algorithms including artificial neural networks and data clustering techniques were successfully optimized to perform pixel-level classification of imagery in complex scenes. The optimized classification algorithm is used to populate the look-up tables in the real-time sensor fusion board for use in the field
Keywords :
CCD image sensors; data acquisition; image recognition; image segmentation; infrared detectors; liquid crystal displays; neural nets; real-time systems; sensor fusion; table lookup; CCD cameras; active matrix LCD; artificial neural networks; automated target/background discrimination; charge-coupled device; classification algorithms; data clustering; data fusion image processor; digital data collection; environmental remote sensing; field-portable imaging; industrial inspection; look-up tables; medical imaging; multispectral data fusion algorithms; multispectral imaging electro-optical sensor; optimized classification algorithm; pixel-level classification; real-time multispectral imaging; real-time sensor fusion; scene classification; thermal IR imagers; Artificial neural networks; Charge-coupled image sensors; Classification algorithms; Clustering algorithms; Infrared image sensors; Layout; Multispectral imaging; Real time systems; Remote sensing; Sensor fusion;
Conference_Titel :
Aerospace and Electronics Conference, 1994. NAECON 1994., Proceedings of the IEEE 1994 National
Conference_Location :
Dayton, OH
Print_ISBN :
0-7803-1893-5
DOI :
10.1109/NAECON.1994.332921