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Chandrajit Bajaj

Professor

Bajaj's research is focussed on developing computer science and applied mathematics algorithms in geometric modeling, imaging data sciences, bio-informatics and data visualization. Many applications stem from bio-medical engineering, physical, chemical, geological sciences and bio-inspired architecture. His commitment to the field of computational and predictive medicine is evidenced by his research focus this past decade

Research

Research Areas:
Research Interests:
  • Developing computer science and applied mathematics algorithms in geometric modeling
  • Imaging data sciences
  • Data visualization

Select Publications

C. Bajaj. 2014. “From Voxel Maps to Models”. Oxford University Press.

C. Bajaj, B. Bauer, R.K. Bettadapura, A. Vollrath. 2013. “Nonuniform Fourier Transforms for Rigid-Body and Multi-Dimensional Rotational Correlations”. SIAM Journal of Scientific Computing.

C. Bajaj, S-C Chen, A. Rand.“An Eff. Higher-Order Fast Multipole Bound. Element Soln for Poisson-Boltzmann Molecular Electrostatics”. SIAM Journal on Scientific Computing.

C. Bajaj, W. Zhao.“Fast Molecular Solvation Energetics and Force Computation”. SIAM Journal on Scientific Computing.

C. Bajaj, S. Goswami .“Modeling Cardiovascular Anatomy from Patient-Specific Imaging”. Advances in Comp. Vision and Medical Image Processing.

Awards & Honors

  • 2004 - University of Texas, Faculty Research Award
  • 2004 - University of Texas, Dean Research Award
  • 2006 - Best Paper, Computer Aided Design
  • 2010 - Best Paper, ACM Symposium on Solid and Physical Modeling
  • 2013 - Fellow of the Institute of Electrical and Electronic Engineers
  • 2010 - Fellow of University of Texas Institute for Cellular and Molecular Biology
  • 2009 - Fellow of the Association for Computing Machinery
  • 2008 - Fellow of The American Association for the Advancement of Science
  • 2010 - University of Texas-Moncrief Grand Challenge Faculty Research Award
  • 2011 - University of Texas-Moncrief Grand Challenge Faculty Research Award