Li Wei, Yang Sujin, Duan Xiaohua. Unsupervised image categorization based on Adaboost and stochastic graph partition[J]. Journal of Image and Graphics, 2012, 17(10): 1245-1251. DOI: 10.11834/jig.20121008.
we present a general framework to discover image categories automatically.The algorithm includes two parts:1)we pose the problem of category discovery as an automated graph partition task. Each graph vertex indicates an image
and a partitioned sub-graph consisting of connected graph vertices representing a clustered category. The model of each image category can be learned by stepwise feature selection using the Adaboost algorithm. 2)A MCMC-based stochastic algorithm
the Swendsen-Wang Cuts (SWC)
is adopted to solve the graph partition fast. Compared to traditional random cluster sampling techniques
SWC converges faster. We apply our method on two image datasets
and the experimental results demonstrate superior performance of our method over other popular state-of-the-arts methods