Abstract
Binary Image Analysis problems can be solved by set operators implemented as programs for a Morphological Machine (MMach). These programs can be generated automatically by the description of the goals of the user as a collection of input-output image pairs and the estimation of the target operator from these data. In this paper, we present a software, installed as a Toolbox for the KHOROS system, that implements this technique and some impressive results of applying this tool in shape recognition for OCR.
The authors have received partial support of Olivetti do Brasil, CNPq, grants PROTEM-CC-ANIMOMAT and PROTEM-CC-TCPAC, and Cooperation USP-COFECUB
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© 1996 Kluwer Academic Publishers
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Barrera, J., Terada, R., Da Silva, F.S.C., Tomita, N.S. (1996). Automatic Programming of MMach’s for OCR. In: Maragos, P., Schafer, R.W., Butt, M.A. (eds) Mathematical Morphology and its Applications to Image and Signal Processing. Computational Imaging and Vision, vol 5. Springer, Boston, MA. https://doi.org/10.1007/978-1-4613-0469-2_45
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DOI: https://doi.org/10.1007/978-1-4613-0469-2_45
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