Computer vision techniques for quantifying, tracking, and identifying bioluminescent plankton

File
Publisher
IEEE
Date Issued
1999
Note

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.

Language
Type
Genre
Extent
16 p.
Identifier
3183711
Additional Information
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.
Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works.
This manuscript is available at http://ieeexplore.ieee.org/ and may be cited as: Kocak, D. M., da Vitoria Lobo, N., & Widder, E. A. (1999). Computer vision techniques for quantifying, tracking, and identifying bioluminescent plankton. IEEE Journal of Oceanic Engineering, 24(1), (pp. 81-95). doi:10.1109/48.740157
Florida Atlantic University. Harbor Branch Oceanographic Institute contribution #1261.
Date Backup
1999
Date Text
1999
DOI
10.1109/48.740157
Date Issued (EDTF)
1999
Extension


FAU
FAU
admin_unit="FAU01", ingest_id="ing11089", creator="creator:FAUDIG", creation_date="2011-10-10 11:05:57", modified_by="super:FAUDIG", modification_date="2014-02-11 16:58:29"

IID
FADT3183711
Issuance
single unit
Organizations
Person Preferred Name

Kocak, D. M.

creator

Physical Description

pdf
16 p.
Title Plain
Computer vision techniques for quantifying, tracking, and identifying bioluminescent plankton
Origin Information

IEEE
1999
single unit
Title
Computer vision techniques for quantifying, tracking, and identifying bioluminescent plankton
Other Title Info

Computer vision techniques for quantifying, tracking, and identifying bioluminescent plankton