Skip to Main content Skip to Navigation
Journal articles

Joint Bayesian cortical sulci recognition and spatial normalization.

Abstract : In this paper, we study the recognition of about 60 sulcal structures over a new T1 MRI database of 62 subjects. It continues our previous work [7] and more specifically extends the localization model of sulci (SPAM). This model is sensitive to the chosen common space during the group study. Thus, we focus the current work on refining this space using registration techniques. Nevertheless, we also benefit from the sulcuswise localization variability knowledge to constrain the normalization. So, we propose a consistent Bayesian framework to jointly identify and register sulci, with two complementary normalization techniques and their detailed integration in the model: a global rigid transformation followed by a piecewise rigid-one, sulcus after sulcus. Thereby, we have improved the sulci labeling quality to a global recognition rate of 86%, and moreover obtained a basic but robust registration technique.
Document type :
Journal articles
Complete list of metadatas

https://hal.inria.fr/hal-00776670
Contributor : Bertrand Thirion <>
Submitted on : Tuesday, January 15, 2013 - 10:49:43 PM
Last modification on : Tuesday, March 24, 2020 - 2:46:12 PM

Identifiers

  • HAL Id : hal-00776670, version 1
  • PUBMED : 19694262

Collections

Citation

Matthieu Perrot, Denis Rivière, Alan Tucholka, Jean-François Mangin. Joint Bayesian cortical sulci recognition and spatial normalization.. Information processing in medical imaging : proceedings of the .. conference., Springer-Verlag, 2009, 21, pp.176-87. ⟨hal-00776670⟩

Share

Metrics

Record views

297