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two and three dimensional visualizations for low cost. It should be considered that
usage AR tracking software often requires not only knowledge of pattern classifi-
cation methods but also advanced skills in the field of computer graphic.
Acknowledgments. This work has been supported by the Ministry of Science and Higher
Education, Republic of Poland, under project number N N516 511939.
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