Supervised dimensionality reduction and contextual pattern recognition in medical image processing

نویسنده

  • Marco Loog
چکیده

reproduction on microfilm or in any other form or by any other means, and storage in data banks, synaptic weights, or hidden variables in electronic, mechanical, virtual or any other way. Permission for duplication of this publication or parts thereof must always be obtained in writing from the author. Violations are liable for prosecution. under the auspices of ImagO, the Utrecht Graduate School for Biomed-ical Image Sciences. The project was financially supported by the Dutch Ministry of Economic Affairs within the framework of the innovation-driven research program (IOP image processing, project number IBV98002). de manì erè a obtenir un creux

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تاریخ انتشار 2004