Micro-level groundtruthing environment for OMR
نویسندگان
چکیده
A simple framework for evaluating OMR at the symbol level is presented. While a true evaluation of an OMR system requires a high-level analysis, the automation of which is a largely unsolved problem, many high-level errors are correlated to these more tractably-analyzed lowerlevel errors.
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