www.nature.com/scientificreports OPEN Explainable artificial intelligence with UNet based segmentation and Bayesian machine learning for classification of brain tumors using MRI images K. Lakshmi1, Sibi Amaran2, G. Subbulakshmi3, S. Padmini4, Gyanenedra Prasad Joshi5 & Woong Cho...
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Frequentist and Bayesian phase estimation strategies lead to conceptually different results on the state of knowledge about the true value of an unknown parameter. We compare the two frameworks and their sensitivity bounds to the estimation of an interfe
The transport term characterizes x ˙ = v , while the scattering term Q [ f ] describes the way the photon particles interact with the media. When the temperature is fixed, this operator is a linear operator, whereas if the laser beam heats up the tissue, Q reflects the nonlinear ...