Andreas I. Svolos, C. Konstantopoulos, C. Kaklamanis
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Efficient binary morphological algorithms on a massively parallel processor
One of the most important features in image analysis and understanding is shape. Mathematical morphology is the image processing branch that deals with shape analysis. The definition of all morphological transformations is based on two primitive operations, i.e. dilation and erosion. Since many applications require the solution of morphological problems in real time, researching time efficient algorithms for these two operations is crucial. In this paper efficient parallel algorithms for the binary dilation and erosion are presented and evaluated for an advanced associative processor. Simulation results indicate that the achieved speedup is linear.