A methodology to detect and classify underwater unexploded ordnance in DIDSON sonar images |
| Posted on:2011-10-30 | Degree:M.S | Type:Thesis |
| University:Florida Atlantic University | Candidate:Brisson, Lisa Nicole | Full Text:PDF |
| GTID:2442390002965861 | Subject:Engineering |
| Abstract/Summary: | PDF Full Text Request |
| High-resolution sonar systems are primarily used for ocean floor surveys and port security operations but produce images of limited resolution. In turn, a sonar-specific methodology is required to detect and classify underwater unexploded ordnance (UXO) using the low-resolution sonar data. After researching and reviewing numerous approaches the Multiple Aspect-Fixed Range Template Matching (MAFR-TM) algorithm was developed. The MAFR-TM algorithm is specifically designed to detect and classify a target of high characteristic impedance in an environment that contains similar shaped objects of low characteristic impedance. MAFR-TM is tested against a tank and field data set collected by the Sound Metrics Corp. DIDSON US300. This thesis document proves the MAFR-TM can detect, classify, orient, and locate a target in the sector-scan sonar images. This paper focuses on the MAFR-TM algorithm and its results. |
| Keywords/Search Tags: | Sonar, MAFR-TM, Detect and classify |
PDF Full Text Request |
Related items |