on using entropy for enhancing handwriting preprocessing
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ID: 180666
2012
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Abstract
Handwriting is an important modality for Human-Computer Interaction. For medical professionals, handwriting is (still) the preferred natural method of documentation. Handwriting recognition has long been a primary research area in Computer Science. With the tremendous ubiquity of smartphones, along with the renaissance of the stylus, handwriting recognition has become a new impetus. However, recognition rates are still not 100% perfect, and researchers still are constantly improving handwriting algorithms. In this paper we evaluate the performance of entropy based slant- and skew-correction, and compare the results to other methods. We selected 3700 words of 23 writers out of the Unipen-ICROW-03 benchmark set, which we annotated with their associated error angles by hand. Our results show that the entropy-based slant correction method outperforms a window based approach with an average precision of 6:02 for the entropy-based method, compared with the 7:85 for the alternative. On the other hand, the entropy-based skew correction yields a lower average precision of 2:86, compared with the average precision of 2:13 for the alternative LSM based approach.
| Reference Key |
peischl2012entropyon
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| Authors | ;Bernhard Peischl;Klaus-Martin Simonic;Christof Stocker;Andreas Holzinger |
| Journal | European journal of medicinal chemistry |
| Year | 2012 |
| DOI |
10.3390/e14112324
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