Title | Uncertainty-driven forest predictors for vertebra localization and segmentation |
Publication Type | In Collection |
Year of Publication | 2015 |
Authors | Richmond, D, Kainmueller, D, Glocker, B, Rother, C, Myers, G |
Collection Title | Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) |
Volume | 9349 |
Pages | 653–660 |
Publication Language | eng |
ISSN Number | 16113349 |
Abstract | Accurate localization, identification and segmentation of vertebrae is an important task in medical and biological image analysis. The prevailing approach to solve such a task is to first generate pixelindependent features for each vertebra, e.g. via a random forest predictor, which are then fed into an MRF-based objective to infer the optimal MAP solution of a constellation model. We abandon this static, twostage approach and mix feature generation with model-based inference in a new, more flexible, way. We evaluate our method on two data sets with different objectives. The first is semantic segmentation of a 21-part body plan of zebrafish embryos in microscopy images, and the second is localization and identification of vertebrae in benchmark human CT. |
DOI | 10.1007/978-3-319-24553-9_80 |
Citation Key | Richmond2015 |