A new generic model-based segmentation scheme is presented, which can be trained from examples akin to the Active Shape Model (ASM) approach in order to acquire knowledge about the shape to be segmented and about the gray-level appearance of the object in the image. Because in the ASM approach the intensity and shape models are typically applied alternately during optimizing as first an optimal target location is selected for each landmark separately based on local gray-level appearance information only to which the shape model is fitted subsequently, the ASM may be misled in case of wrongly selected landmark locations. Instead, the proposed approach optimizes for shape and intensity characteristics simultaneously. Local gray-level appearance information at the landmark points extracted from feature images is used to automatically detect a number of plausible candidate locations for each landmark. The shape information is described by multiple landmark-specific statistical models that capture local dependencies between adjacent landmarks on the shape. The shape and intensity models are combined in a single cost function that is optimized non-iteratively using dynamic programming which allows to find the optimal landmark positions using combined shape and intensity information, without the need for initialization.
[1]
Paul Suetens,et al.
Evaluation of image features and search strategies for segmentation of bone structures in radiographs using Active Shape Models
,
2002,
Medical Image Anal..
[2]
Timothy F. Cootes,et al.
Active Shape Models-Their Training and Application
,
1995,
Comput. Vis. Image Underst..
[3]
Alejandro F. Frangi,et al.
Active shape model segmentation with optimal features
,
2002,
IEEE Transactions on Medical Imaging.
[4]
K. Doi,et al.
Development of a digital image database for chest radiographs with and without a lung nodule: receiver operating characteristic analysis of radiologists' detection of pulmonary nodules.
,
2000,
AJR. American journal of roentgenology.
[5]
Bram van Ginneken,et al.
Segmentation of anatomical structures in chest radiographs using supervised methods: a comparative study on a public database
,
2006,
Medical Image Anal..
[6]
Andrea J. van Doorn,et al.
The Structure of Locally Orderless Images
,
1999,
International Journal of Computer Vision.