Cluster-Based Point Set Saliency

ICCV(2015)

引用 59|浏览24
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摘要
We propose a cluster-based approach to point set saliency detection, a challenge since point sets lack topological information. A point set is first decomposed into small clusters, using fuzzy clustering. We evaluate cluster uniqueness and spatial distribution of each cluster and combine these values into a cluster saliency function. Finally, the probabilities of points belonging to each cluster are used to assign a saliency to each point. Our approach detects fine-scale salient features and uninteresting regions consistently have lower saliency values. We evaluate the proposed saliency model by testing our saliency-based keypoint detection against a 3D interest point detection benchmark. The evaluation shows that our method achieves a good balance between false positive and false negative error rates, without using any topological information.
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关键词
point set saliency detection,cluster-based approach,fuzzy clustering,cluster uniqueness evaluation,spatial distribution evaluation,probabilities,fine-scale salient feature detection,uninteresting region detection,saliency-based key-point detection,3D interest point detection,false positive error rates,false negative error rates
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