An Effective Framework for Contented-Based Image Retrieval with Multi-Instance Learning Techniques

  • Peng, Yu (Department of Automation, Tsinghua University) ;
  • Wei, Kun-Juan (The 13th Institute, 10th Academy, China Aerospace Science and Technology Corporation(CASA)) ;
  • Zhang, Da-Li (Department of Automation, Tsinghua University)
  • 발행 : 2007.11.30

초록

Multi-Instance Learning(MIL) performs well to deal with inherently ambiguity of images in multimedia retrieval. In this paper, an effective framework for Contented-Based Image Retrieval(CBIR) with MIL techniques is proposed, the effective mechanism is based on the image segmentation employing improved Mean Shift algorithm, and processes the segmentation results utilizing mathematical morphology, where the goal is to detect the semantic concepts contained in the query. Every sub-image detected is represented as a multiple features vector which is regarded as an instance. Each image is produced to a bag comprised of a flexible number of instances. And we apply a few number of MIL algorithms in this framework to perform the retrieval. Extensive experimental results illustrate the excellent performance in comparison with the existing methods of CBIR with MIL.

키워드