Title :
A baseline object detection algorithm using background anomalies for electro-optic identification sensors
Author :
Nevis, Andrew ; Bryan, James ; Taylor, J.S. ; Cordes, Brett
Author_Institution :
Dahlgren Div., Naval Surface Warfare Center Coastal Syst. Station, Panama City, FL, USA
Abstract :
Electro-optic identification sensors provide photographic quantity that can be used to identify mine-like contacts provided by long-range sensors, such as sonar systems. Computer aided identification and automatic target recognition algorithms have been funded by the Office of Naval Research (322-OP) to help operators in the identification process. Under this funding, a new background anomaly approach was introduced (Nevis et al., 2002) for object detection using a least square error (LSE) background best fit searching for anomalies of certain specified size and shape (and SNR) that stick out from the local background. This initial approach has been refined into a baseline algorithm. An overview of this baseline algorithm is presented in this paper, with an emphasis on modifications from the initial approach.
Keywords :
image sensors; object detection; oceanographic equipment; sonar imaging; sonar target recognition; LSE background best fit searching; Office of Naval Research; automatic target recognition algorithms; background anomaly approach; computer aided identification; electro-optic identification sensors; least square error; mine-like contacts; object detection algorithm; sonar systems; Cities and towns; Electrooptic devices; Filters; Object detection; Sea measurements; Sensor systems; Shape; Strips; Target recognition; Testing;
Conference_Titel :
OCEANS '02 MTS/IEEE
Print_ISBN :
0-7803-7534-3
DOI :
10.1109/OCEANS.2002.1191866