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Recognition Of Whiteboard Notes Online Offline And Combination Marcus Liwicki

  • SKU: BELL-1080232
Recognition Of Whiteboard Notes Online Offline And Combination Marcus Liwicki
$ 31.00 $ 45.00 (-31%)

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Recognition Of Whiteboard Notes Online Offline And Combination Marcus Liwicki instant download after payment.

Publisher: World Scientific Publishing Company
File Extension: PDF
File size: 4.28 MB
Pages: 227
Author: Marcus Liwicki, Horst Bunke
ISBN: 9789812814531, 9812814531
Language: English
Year: 2008

Product desciption

Recognition Of Whiteboard Notes Online Offline And Combination Marcus Liwicki by Marcus Liwicki, Horst Bunke 9789812814531, 9812814531 instant download after payment.

This book addresses the task of processing online handwritten notes acquired from an electronic whiteboard, which is a new modality in handwriting recognition research. The main motivation of this book is smart meeting rooms, aim to automate standard tasks usually performed by humans in a meeting.

The book can be summarized as follows. A new online handwritten database is compiled, and four handwriting recognition systems are developed. Moreover, novel preprocessing and normalization strategies are designed especially for whiteboard notes and a new neural network based recognizer is applied. Commercial recognition systems are included in a multiple classifier system. The experimental results on the test set show a highly significant improvement of the recognition performance to more than 86%.

Contents: Classification Methods; Linguistic Resources and Handwriting Databases; Off-Line Approach; On-Line Approach; Multiple Classifier Combination; Writer-Dependent Recognition.

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