Robust active appearance models and their application to medical image analysis
Autor: | Milan Sonka, Franz Leberl, Reinhard Beichel, Horst Bischof |
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Rok vydání: | 2005 |
Předmět: |
Diagnostic Imaging
Computer science Information Storage and Retrieval Models Biological Sensitivity and Specificity Pattern Recognition Automated Imaging Three-Dimensional Artificial Intelligence Robustness (computer science) Image Interpretation Computer-Assisted Humans Computer Simulation Computer vision Segmentation Mean-shift Electrical and Electronic Engineering Blossom algorithm Radiological and Ultrasound Technology business.industry Reproducibility of Results Image segmentation Image Enhancement Computer Science Applications Active appearance model Subtraction Technique Outlier Artificial intelligence business Algorithms Software |
Zdroj: | TU Graz |
ISSN: | 0278-0062 |
Popis: | Active appearance models (AAMs) have been successfully used for a variety of segmentation tasks in medical image analysis. However, gross disturbances of objects can occur in routine clinical setting caused by pathological changes or medical interventions. This poses a problem for AAM-based segmentation, since the method is inherently not robust. In this paper, a novel robust AAM (RAAM) matching algorithm is presented. Compared to previous approaches, no assumptions are made regarding the kind of gray-value disturbance and/or the expected magnitude of residuals during matching. The method consists of two main stages. First, initial residuals are analyzed by means of a mean-shift-based mode detection step. Second, an objective function is utilized for the selection of a mode combination not representing the gross outliers. We demonstrate the robustness of the method in a variety of examples with different noise conditions. The RAAM performance is quantitatively demonstrated in two substantially different applications, diaphragm segmentation and rheumatoid arthritis assessment. In all cases, the robust method shows an excellent behavior, with the new method tolerating up to 50% object area covered by gross gray-level disturbances. |
Databáze: | OpenAIRE |
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