Title :
Neural net based processor for robust, high-integrity multisensor and synthetic vision fusion
Author :
Kerr, J. Richard ; Luk, Chiu Hung ; Hammerstrom, Dan ; Pavel, Misha
Abstract :
The goal of the present work is to employ certain neural-net derived technology in order to achieve the capabilities on economical and compact platform with clear transparent confidence metrics. A particular feature of this approach is that it is robust in the presence of degraded image data, including noise and obscuration. The present paper describes, neural net based processor for robust, high-integrity multisensor and synthetic vision. It also describes the conceptual background, early simulation results, implementation plans, and integrated-systems framework. It includes flight testing with a multiple-sensor and associated database references.
Keywords :
image processing; image sensors; neural nets; sensor fusion; visual databases; high integrity multisensor; image databases; image processing; image sensors; integrated systems; neural net based processor; synthetic vision fusion;
Conference_Titel :
Digital Avionics Systems Conference, 2003. DASC '03. The 22nd
Conference_Location :
Indianapolis, IN, USA
Print_ISBN :
0-7803-7844-X
DOI :
10.1109/DASC.2003.1245919