David Royal Martin

Affiliations: 
Google, Inc., Mountain View, CA, United States 
Area:
computer vision
Google:
"David Martin"

Parents

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Jitendra Malik grad student 2002 UC Berkeley
 (An empirical approach to grouping and segmentation.)
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Publications

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Donatelli M, Martin D, Reichel L. (2015) Arnoldi methods for image deblurring with anti-reflective boundary conditions Applied Mathematics and Computation. 253: 135-150
Fenu C, Martin D, Reichel L, et al. (2013) Network analysis via partial spectral factorization and gauss quadrature Siam Journal On Scientific Computing. 35: A2046-A2068
Fenu C, Martin D, Reichel L, et al. (2013) Block gauss and anti-gauss quadrature with application to networks Siam Journal On Matrix Analysis and Applications. 34: 1655-1684
Martin DR, Reichel L. (2013) Projected tikhonov regularization of large-scale discrete ill-posed problems Journal of Scientific Computing. 56: 471-493
Martin DR, Reichel L. (2013) Minimization of functionals on the solution of a large-scale discrete ill-posed problem Bit Numerical Mathematics. 53: 153-173
Jiang H, Yu SX, Martin DR. (2010) Linear Scale and Rotation Invariant Matching. Ieee Transactions On Pattern Analysis and Machine Intelligence
Jiang H, Martin DR. (2008) Global pose estimation using non-tree models 26th Ieee Conference On Computer Vision and Pattern Recognition, Cvpr
Jiang H, Martin DR. (2008) Finding actions using shape flows Lecture Notes in Computer Science (Including Subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics). 5303: 278-292
Fowlkes CC, Martin DR, Malik J. (2007) Local figure-ground cues are valid for natural images. Journal of Vision. 7: 2
Martin DR, Fowlkes CC, Malik J. (2004) Learning to detect natural image boundaries using local brightness, color, and texture cues. Ieee Transactions On Pattern Analysis and Machine Intelligence. 26: 530-49
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