Automatic machine interactions for content-based image retrieval using a self-organizing tree map architecture

@article{Muneesawang2002AutomaticMI,
  title={Automatic machine interactions for content-based image retrieval using a self-organizing tree map architecture},
  author={Paisarn Muneesawang and Ling Guan},
  journal={IEEE transactions on neural networks},
  year={2002},
  volume={13 4},
  pages={
          821-34
        }
}
In this paper, an unsupervised learning network is explored to incorporate a self-learning capability into image retrieval systems. Our proposal is a new attempt to automate recursive content-based image retrieval. The adoption of a self-organizing tree map (SOTM) is introduced, to minimize the user participation in an effort to automate interactive retrieval. The automatic learning mode has been applied to optimize the relevance feedback (RF) method and the single radial basis function-based… 
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