Title :
Comparison of machine vision based methods for online in situ oil seep detection and quantification
Author :
Saworski, B. ; Zielinski, O.
Author_Institution :
imare - Inst. for marine resources GmbH, Bremerhaven, Germany
Abstract :
Bubble detection and quantification is of high relevance for the observation of gas and fluid seeps within the marine environment, e.g. oil leakages or methane seeps. Image sequences using frontal illumination can be used to address this need if robust algorithms are provided for segmentation and volume estimation. The presented work suggests and successfully investigates the application of a segmentation strategy based on the optical flow concept using the Horn Schunck algorithm for laboratory conditions and existing deep-sea video sequences. Volume calculation is performed by two alternative approaches, namely the elliptical best fit and the volume integration method, and compared for a set of rigid bubble replicas. Where both methods show a significant over- respectively underestimation of the total volume, a combination of both approaches proves to be complementary and less error-prone.
Keywords :
computer vision; geophysics computing; image segmentation; image sequences; oceanography; oil pollution; remote sensing; sediments; video recording; Horn Schunck algorithm; automatic image analysis; bubble detection; deep-sea video sequence; high-quality video recording; image processing; image segmentation; image sequences; machine vision based method; marine ecosystem; methane seeps; oil leakage; oil pollution; oil seep detection; sea floor bubble seeps; Image motion analysis; Image segmentation; Image sequences; Laboratories; Leak detection; Lighting; Machine vision; Petroleum; Robustness; Video sequences;
Conference_Titel :
OCEANS 2009 - EUROPE
Conference_Location :
Bremen
Print_ISBN :
978-1-4244-2522-8
Electronic_ISBN :
978-1-4244-2523-5
DOI :
10.1109/OCEANSE.2009.5278100