Use of chaos concept in medical image segmentation
Computer Methods in Biomechanics and Biomedical Engineering: Imaging and Visualization, ISSN: 2168-1171, Vol: 1, Issue: 1, Page: 28-36
2013
- 36Citations
- 8Captures
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Article Description
Despite its long track record, segmentation in medical image computing still remains an active field of research, largely due to the complexities of in-vivo anatomical structures, cross-subject and cross-modality variations. Clinically, it has many benefits for effective patient management, both in terms of pre-operative planning and post-operative assessment of the efficacy of therapeutic procedures. Research efforts are focused on novel, clinician friendly, robust and fast segmentation methodologies. In this paper, we present a novel algorithm for efficient segmentation based on Chaotic theory; the preliminary results show the potential of the proposed technique. © 2013 Taylor and Francis Group, LLC.
Bibliographic Details
Informa UK Limited
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