Advances In Handwriting RecognitionSeong-whan Lee World Scientific, 1999. gada 1. jūn. - 600 lappuses Advances in Handwriting Recognition contains selected key papers from the 6th International Workshop on Frontiers in Handwriting Recognition (IWFHR '98), held in Taejon, Korea from 12 to 14, August 1998. Most of the papers have been expanded or extensively revised to include helpful discussions, suggestions or comments made during the workshop. |
No grāmatas satura
1.–5. rezultāts no 85.
vii. lappuse
... Writing Recognition by Discrete HMM with Fast Learning............ 19 H. Yasuda, K. Takahashi and T. Matsumoto Optimization of Training Texts for Writer-dependent Handwriting Recognition ...
... Writing Recognition by Discrete HMM with Fast Learning............ 19 H. Yasuda, K. Takahashi and T. Matsumoto Optimization of Training Texts for Writer-dependent Handwriting Recognition ...
6. lappuse
... writing during the Middle-Ages, reveal that most of the characters were initially derived from ROMAN CAPITAL letters ... writing instruments (calamus, quill pens, pen nibs, brushes) were designed in such a way that they had to be pulled ...
... writing during the Middle-Ages, reveal that most of the characters were initially derived from ROMAN CAPITAL letters ... writing instruments (calamus, quill pens, pen nibs, brushes) were designed in such a way that they had to be pulled ...
15. lappuse
... writer Independent, Large Vocabulary OnLine Cursive Handwriting Recognition System”, ICDAR, Montreal, pp. 403-408, Aug. 1995. F. Attneave "Some Informational Aspects of Visual Perception”, Psychological Review ... Writing Recognition by 15.
... writer Independent, Large Vocabulary OnLine Cursive Handwriting Recognition System”, ICDAR, Montreal, pp. 403-408, Aug. 1995. F. Attneave "Some Informational Aspects of Visual Perception”, Psychological Review ... Writing Recognition by 15.
17. lappuse
Seong-whan Lee. PART 2: ON-LINE HANDWRITING RECOGNITION On-line Hand Writing Recognition by Discrete HMM with Fast Learning PART 2: ON-LINE HANDWRITING RECOGNITION.
Seong-whan Lee. PART 2: ON-LINE HANDWRITING RECOGNITION On-line Hand Writing Recognition by Discrete HMM with Fast Learning PART 2: ON-LINE HANDWRITING RECOGNITION.
19. lappuse
... writing recognition problems; (i) Stroke number variations, stroke connections and shape variations. A Kanji character is composed of up to 30 strokes. However, for casual writing characters, many writers tend to connect and abbreviate ...
... writing recognition problems; (i) Stroke number variations, stroke connections and shape variations. A Kanji character is composed of up to 30 strokes. However, for casual writing characters, many writers tend to connect and abbreviate ...
Saturs
17 | |
HANDWRITTEN FORM PROCESSING | 79 |
HANDWRITTEN WORD RECOGNITION | 151 |
SEGMENTATION | 223 |
ORIENTAL SCRIPT PROCESSING | 275 |
NUMERAL RECOGNITION | 357 |
EMERGING TECHNIQUES | 437 |
APPLICATIONS | 517 |
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algorithm applied approach B-spline bankcheck bigram character candidates character line character recognition character segmentation classifier combination computed connected components contour corresponding courtesy amount database described detected diacriticals dictionary digit distance error rate evaluation example experimental results experiments feature extraction feature set feature vectors Figure function fuzzy graph grapheme handwriting recognition handwritten character handwritten numerals handwritten words Hidden Markov Models horizontal Hough transform hypotheses integrated Kanji learning legal amount letters lexicon line segments matching matrix nat-ja neural network node obtained off-line on-line handwriting recognition optimal output paper parameters Pattern Recognition performance pixels points preprocessing probability problem Proc proposed method prototype quantization recognition rate recognition results recognition system recognizer samples sequence shown speech recognition step string stroke structure Suen Table technique template threshold touching type vector quantizer wavelet word recognition writing