Procedings of the British Machine Vision Conference 2007 2007
DOI: 10.5244/c.21.32
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An Automatic Framework for Figure-Ground Segmentation in Cluttered Backgrounds

Abstract: This paper proposes an automatic framework for figure-ground segmentation of edged images in the presence of cluttered background. Our work employs perceptual grouping concepts to characterize image segments by means of their saliency, which is computed via tensor voting. The main innovation of our work is a case-based thresholding scheme which iteratively eliminates edge segments with low-saliency in multiple scales, preserving those that are more likely to belong to foreground. The key idea is classifying sa… Show more

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Cited by 3 publications
(1 citation statement)
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“…First of all, we plan to use more robust feature extraction methods as well as more powerful features for matching. One possibility is using more powerful perceptual grouping strategies such as the Iterative Multiscale Tensor Voting (IMTSV) scheme [85], [86] which has shown to tolerate significant amounts of noise and clutter. Alternatively, we plan to investigate state of art "interest" operators and local descriptors [6], [7], [71].…”
Section: Discussionmentioning
confidence: 99%
“…First of all, we plan to use more robust feature extraction methods as well as more powerful features for matching. One possibility is using more powerful perceptual grouping strategies such as the Iterative Multiscale Tensor Voting (IMTSV) scheme [85], [86] which has shown to tolerate significant amounts of noise and clutter. Alternatively, we plan to investigate state of art "interest" operators and local descriptors [6], [7], [71].…”
Section: Discussionmentioning
confidence: 99%