Title :
Computer vision techniques for quantifying, tracking, and identifying bioluminescent plankton
Author :
Kocak, Donna M. ; Da Vitoria Lobo, N. ; Widder, Edith A.
Author_Institution :
Div. of Eng., Harbor Branch Oceanographic Inst., Fort Pierce, FL, USA
fDate :
1/1/1999 12:00:00 AM
Abstract :
This paper applies computer vision techniques to underwater video images of bioluminescent biota for quantifying, tracking, and identification. Active contour models are adapted for computerized image segmentation, labeling, tracking, and mapping of the bioluminescent plankton recorded by low-light-level video techniques. The system automatically identifies luminous events and extracts features such as duration, size, and coordinates of the point of impact, and uses this information to taxonomically classify the plankton species. This automatic classification can aid oceanographic researchers in characterizing the in situ spatial and temporal relationships of these organisms in their underwater environment. Experiments with real oceanographic data are reported. The results indicate that the approach yields performance comparable to human expert level capability. Furthermore, because the described technique has the potential to rapidly process vast quantities of video data, it may prove valuable for other similar applications
Keywords :
aquaculture; biology computing; bioluminescence; computer vision; feature extraction; geophysical signal processing; image segmentation; oceanographic techniques; tracking; video signal processing; active contour models; automatic classification; bioluminescent biota; bioluminescent plankton; computer vision techniques; computerized image segmentation; dinoflagellate counting; feature extraction; identification; labeling; low-light-level video techniques; luminous events; mapping; organisms; quantification; spatial relationships; taxonomic classification; temporal relationships; tracking; underwater video images; Active contours; Bioluminescence; Computer vision; Data mining; Feature extraction; Image segmentation; Labeling; Marine vegetation; Organisms; Underwater tracking;
Journal_Title :
Oceanic Engineering, IEEE Journal of