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Adaptative evaluation of image segmentation results
18th International Conference on Patt ...
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We present in this article a new unsupervised evaluation criterion that enables the quantification of the quality of an image segmentation result according to the type of the original image. We first briefly present a comparative study of existing unsupervised evaluation criteria. Then, we present a method for the determination of the type of the original image: uniform, mixed or textured by using a learning method (Support Vector Machine). In the third part, we present the proposed algorithm for segmentation evaluation and the experimental results on synthetic images from a large database. Last, we conclude and present some perspectives of this work.
Citation:
Christopher Rosenberger, "Adaptative evaluation of image segmentation results," icpr,pp.399-402, 18th International Conference on Pattern Recognition (ICPR'06) Volume 2, 2006
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