Discriminative learning for deformable shape segmentation: A comparative study

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Abstract

We present a comparative study on how to use discriminative learning methods such as classification, regression, and ranking to address deformable shape segmentation. Traditional generative models and energy minimization methods suffer from local minima. By casting the segmentation into a discriminative framework, the target fitting function can be steered to possess a desired shape for ease of optimization yet better characterize the relationship between shape and appearance. To address the high-dimensional learning challenge present in the learning framework, we use a multi-level approach to learning discriminative models. Our experimental results on left ventricle segmentation from ultrasound images and facial feature point localization demonstrate that the discriminative models outperform generative models and energy minimization methods by a large margin. © 2008 Springer Berlin Heidelberg.

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Zhang, J., Zhou, S. K., Comaniciu, D., & McMillan, L. (2008). Discriminative learning for deformable shape segmentation: A comparative study. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 5302 LNCS, pp. 711–724). Springer Verlag. https://doi.org/10.1007/978-3-540-88682-2_54

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