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DAGM
2010
Springer

Image Segmentation with a Statistical Appearance Model and a Generic Mumford-Shah Inspired Outside Model

14 years 1 months ago
Image Segmentation with a Statistical Appearance Model and a Generic Mumford-Shah Inspired Outside Model
Abstract. We present a novel statistical-model-based segmentation algorithm that addresses a recurrent problem in appearance model fitting and model-based segmentation: the "shrinking problem". When statistical appearance models are fitted to an image in order to segment an object, they have the tendency not to cover the full object, leaving a gap between the real and the detected boundary. This is due to the fact that the cost function for fitting the model is evaluated only on the inside of the object and the gap at the boundary is not detected. The stateof-the-art approach to overcome this shrinking problem is to detect the object edges in the image and force the model to adhere to these edges. Here, we introduce a region-based approach motivated by the MumfordShah functional that does not require the detection of edges. In addition to the appearance model, we define a generic model estimated from the input image for the outside of the appearance model. Shrinking is preven...
Thomas Albrecht, Thomas Vetter
Added 08 Nov 2010
Updated 08 Nov 2010
Type Conference
Year 2010
Where DAGM
Authors Thomas Albrecht, Thomas Vetter
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