This study focuses on development of an energy benchmarking model utilizing U.S. Commercial Buildings Energy Consumption Survey (CBECS) Database. An artificial neural networks (ANN) method based approach was used in the study. Office type buildings in the CBECS database were used in the benchmarking
An HMM-based character recognition network using level building
โ Scribed by Hang Joon Kim; Sang Kyoon Kim; Kyung Hyun Kim; Jong Kook Lee
- Publisher
- Elsevier Science
- Year
- 1997
- Tongue
- English
- Weight
- 964 KB
- Volume
- 30
- Category
- Article
- ISSN
- 0031-3203
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โฆ Synopsis
In this paper, we propose a novel recognition model of on-line cursive Korean characters using the hidden Markov model (HMM) and a level building algorithm. The model is constructed as a form of recognition network with HMMs for graphemes and Korean combination rules. Though the network represents the large character set efficiently and is flexible enough to accommodate variability of input patterns, it has a problem of recognition speed, caused by 11,172 search paths. To solve the problem, we modify a level building algorithm to be adapted directly to the Korean combination rules and apply it to the model. The modified algorithm is an efficient network search procedure, the time complexity of which depends on the number of grapheme HMMs and ligature HMMs, not the number of paths in the extensive recognition network. A test with 20,000 handwritten characters shows a recognition rate of 90.2% and speed of 0.72 s per character.
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