Jean Marie Rocchisani


Ontology type: schema:Person     


Person Info

NAME

Jean Marie

SURNAME

Rocchisani

Publications in SciGraph latest 50 shown

  • 2015-10 Efficient segmentation with the convex local-global fuzzy Gaussian distribution active contour for medical applications in ANNALS OF MATHEMATICS AND ARTIFICIAL INTELLIGENCE
  • 2012 Segmentation by a Local and Global Fuzzy Gaussian Distribution Energy Minimization of an Active Contour Model in COMBINATORIAL IMAGE ANALAYSIS
  • 2011 Adaptive Medical Image Denoising Using Support Vector Regression in COMPUTER ANALYSIS OF IMAGES AND PATTERNS
  • 2011 A Convex Active Contour Region-Based Model for Image Segmentation in COMPUTER ANALYSIS OF IMAGES AND PATTERNS
  • 2010 Artificial Evolution for 3D PET Reconstruction in ARTIFICAL EVOLUTION
  • 2010 Threshold Selection, Mitosis and Dual Mutation in Cooperative Co-evolution: Application to Medical 3D Tomography in PARALLEL PROBLEM SOLVING FROM NATURE, PPSN XI
  • 2010 New Genetic Operators in the Fly Algorithm: Application to Medical PET Image Reconstruction in APPLICATIONS OF EVOLUTIONARY COMPUTATION
  • 2008 Fully Three-Dimensional Tomographic Evolutionary Reconstruction in Nuclear Medicine in ARTIFICIAL EVOLUTION
  • 2002 Pixels based statistical differences between lung SPECT: experimental approach to help for the diagnosis and the follow-up of pulmonary embolism in CARS 2002 COMPUTER ASSISTED RADIOLOGY AND SURGERY
  • 1997-08 Comparison of ED, EID, and API Criteria for the Robust Optimization of Sampling Times in Pharmacokinetics in JOURNAL OF PHARMACOKINETICS AND PHARMACODYNAMICS
  • 1994 Improving registration of 3-D medical images using a mechanical based method in COMPUTER VISION — ECCV '94
  • 1989 Building Highly Structured Volume Representations in 3D Medical Images in CAR’89 COMPUTER ASSISTED RADIOLOGY / COMPUTERGESTÜTZTE RADIOLOGIE
  • Affiliations

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