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Medical imaging / Signal processing / Palpation / Physical examination / Elastography / Image segmentation / Normal distribution / Gaussian process / Estimation theory / Magnetic resonance elastography / Haptic technology / Variance
Date: 2016-03-30 14:19:42
Medical imaging
Signal processing
Palpation
Physical examination
Elastography
Image segmentation
Normal distribution
Gaussian process
Estimation theory
Magnetic resonance elastography
Haptic technology
Variance

CONFIDENTIAL. Limited circulation. For review only. Tumor Localization using Automated Palpation with Gaussian Process Adaptive Sampling Animesh Garg1,2 , Siddarth Sen2 , Rishi Kapadia2 , Yiming Jen2 , Stephen McKinley3

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Source URL: goldberg.berkeley.edu

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