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Conditional Random Fields and Supervised Learning in Automated Skin Lesion Diagnosis
Author(s) -
Paul Wighton,
Tim K. Lee,
Greg Mori,
Harvey Lui,
David I. McLean,
M. Stella Atkins
Publication year - 2011
Publication title -
international journal of biomedical imaging
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.626
H-Index - 41
eISSN - 1687-4196
pISSN - 1687-4188
DOI - 10.1155/2011/846312
Subject(s) - crfs , conditional random field , artificial intelligence , generalization , computer science , pixel , maximum a posteriori estimation , probabilistic logic , graph , pattern recognition (psychology) , machine learning , cut , a priori and a posteriori , set (abstract data type) , random walker algorithm , image (mathematics) , mathematics , image segmentation , maximum likelihood , statistics , theoretical computer science , mathematical analysis , philosophy , epistemology , programming language
Many subproblems in automated skin lesion diagnosis (ASLD) can be unified under a single generalization of assigning a label, from an predefined set, to each pixel in an image. We first formalize this generalization and then present two probabilistic models capable of solving it. The first model is based on independent pixel labeling using maximum a-posteriori (MAP) estimation. The second model is based on conditional random fields (CRFs), where dependencies between pixels are defined using a graph structure. Furthermore, we demonstrate how supervised learning and an appropriate training set can be used to automatically determine all model parameters. We evaluate both models' ability to segment a challenging dataset consisting of 116 images and compare our results to 5 previously published methods.

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