M. J. Carreira, D. Cabello, A. Mosquera, M. G. Penedo
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Medical images segmentation using region and edges information
An important task in image understanding systems is the segmentation process. In this work, we present a low-level algorithm which integrates statistical and spatial information for segmenting chest X-ray images. The goal of this algorithm is to generate a reasonable number of regions in the image to make easier the high-level analysis towards obtaining a symbolic description of the image.