Adaptive Artificial Bee Colony for Segmentation of CT lung Images

نویسندگان

  • Sushil Kumar
  • Tarun Kumar Sharma
  • Millie Pant
  • S. Sundar
  • A. Singh
  • M. E. Lee
  • S. H. Kim
  • W. H. Cho
چکیده

Image segmentation of pulmonary parenchyma can be detected from multisliced CT images using image segmentation. It can be modeled as a nonlinear multimodal global optimization problem. The traditional 2D Otsu algorithm, though effective, is quite time consuming for determining the optimum threshold values. In this paper we propose a combination of 2D Otsu method with modified ABC algorithm (called Adaptive ABC or AABC) to reduce the response

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تاریخ انتشار 2012