Nonparametric image parsing using adaptive neighbor sets

CVPR(2012)

引用 104|浏览44
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摘要
This paper proposes a non-parametric approach to scene parsing inspired by the work of Tighe and Lazebnik [22]. In their approach, a simple kNN scheme with multiple descriptor types is used to classify super-pixels. We add two novel mechanisms: (i) a principled and efficient method for learning per-descriptor weights that minimizes classification error, and (ii) a context-driven adaptation of the training set used for each query, which conditions on common classes (which are relatively easy to classify) to improve performance on rare ones. The first technique helps to remove extraneous descriptors that result from the imperfect distance metrics/representations of each super-pixel. The second contribution re-balances the class frequencies, away from the highly-skewed distribution found in real-world scenes. Both methods give a significant performance boost over [22] and the overall system achieves state-of-the-art performance on the SIFT-Flow dataset.
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关键词
highly-skewed distribution,common class,significant performance boost,Nonparametric image,class frequency,SIFT-Flow dataset,non-parametric approach,adaptive neighbor set,extraneous descriptors,efficient method,state-of-the-art performance,context-driven adaptation
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