A Feature Learning and Object Recognition
Framework for Underwater Fish Images
Live fish recognition is one of the most crucial
elements of fisheries survey applications where vast amount of
data are rapidly acquired. Different from general scenarios,
challenges to underwater image recognition are posted by poor
image quality, uncontrolled objects and environment, as well as
difficulty in acquiring representative samples. Also, most existing
feature extraction techniques are hindered from automation due
to involving human supervision. Toward this end, we propose an
underwater fish recognition framework that consists of a fully
unsupervised feature learning technique and an error-resilient
classifier. Object parts are initialized based on saliency and
relaxation labeling to match object parts correctly. A non-rigid
part model is then learned based on fitness, separation and
discrimination criteria. For the classifier, an unsupervised
clustering approach generates a binary class hierarchy, where
each node is a classifier. To exploit information from ambiguous
images, the notion of partial classification is introduced to assign
coarse labels by optimizing the “benefit” of indecision made by
the classifier. Experiments show that the proposed framework
achieves high accuracy on both public and self-collected
underwater fish images with high uncertainty and class
imbalance.
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This product was added to our catalog on Thursday 28 June, 2018.