Normalized tree partitioning for image segmentation

CVPR(2008)

引用 99|浏览70
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摘要
In this paper, we propose a novel graph based clustering approach with satisfactory clustering performance and low computational cost. It consists of two main steps: tree fitting and partitioning. We first introduce a probabilistic method to fit a tree to a data graph under the sense of minimum entropy. Then, we propose a novel tree partitioning method under a normalized cut criterion, called normalized tree partitioning (NTP), in which a fast combinatorial algorithm is designed for exact bipartitioning. Moreover, we extend it to k-way tree partitioning by proposing an efficient best-first recursive bipartitioning scheme. Compared with spectral clustering, NTP produces the exact global optimal bipartition, introduces fewer approximations for k-way partitioning and can intrinsically produce superior performance. Compared with bottom-up aggregation methods, NTP adopts a global criterion and hence performs better. Last, experimental results on image segmentation demonstrate that our approach is more powerful compared with existing graph-based approaches.
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关键词
pattern clustering,k-way partitioning approximations,computational cost,graph based clustering approach,trees (mathematics),approximation theory,image segmentation,k-way tree partitioning,probabilistic method,normalized tree partitioning,tree fitting,combinatorial mathematics,global optimal bipartition,normalized cut criterion,minimum entropy,spectral clustering,best-first recursive bipartitioning scheme,combinatorial algorithm,entropy,probability,fitting,approximation algorithms,mutual information,clustering algorithms,tree graphs,pattern recognition,algorithm design and analysis,bottom up
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