This study presents a novel automatic approach for the identification of anatomical brain structures in magnetic resonance
images (MRI). The method combines a fast multiscale multi-channel three dimensional (3D) segmentation algorithm providing
a rich feature vocabulary together with a support vector machine (SVM) based classifier. The segmentation produces a full
hierarchy of segments, expressed by an irregular pyramid with only linear time complexity. The pyramid provides a rich, adaptive
representation of the image, enabling detection of various anatomical structures at different scales. A key aspect of the
approach is the thorough set of multiscale measures employed throughout the segmentation process which are also provided at
its end for clinical analysis. These features include in particular the prior probability knowledge of anatomic structures
due to the use of an MRI probabilistic atlas. An SVM classifier is trained based on this set of features to identify the brain
structures. We validated the approach using a gold standard real brain MRI data set. Comparison of the results with existing
algorithms displays the promise of our approach.