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AUSAI
2007
Springer

Automated Intelligent Abundance Analysis of Scallop Survey Video Footage

13 years 10 months ago
Automated Intelligent Abundance Analysis of Scallop Survey Video Footage
Underwater video is increasingly being pursued as a low impact alternative to traditional techniques (such as trawls and dredges) for determining abundance and size frequency of target species. Our research focuses on automatically annotating survey scallop video footage using artificial intelligence techniques. We use a multi-layered approach which implements an attention selection process followed by sub-image segmentation and classification. Initial attention selection is performed using the University of Southern California's (USCs) iLab Neuromorphic Visual Toolkit (iNVT). Once the iNVT has determined regions of potential interest we use image segmentation and feature extraction techniques to produce data suitable for analysis within the Weka machine learning workbench environment.
Rob Fearn, Raymond Williams, R. Mike Cameron-Jones
Added 07 Jun 2010
Updated 07 Jun 2010
Type Conference
Year 2007
Where AUSAI
Authors Rob Fearn, Raymond Williams, R. Mike Cameron-Jones, Julian Harrington, Jayson Semmens
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