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This thesis focuses on life-long and interactive learning for recognition tasks. To achieve these targets the separation into a short-term memory (STM) and a longterm memory (LTM) is proposed. For the incremental build up of the STM a similarity-based one-shot learning method was developed. Furthermore two consolidation algorithms were proposed enabling the incremental learning of LTM representations. Based on the Learning Vector Quantization (LVQ) network architecture an error-based node insertion rule and a node dependent learning rate are proposed to enable life-long learning. For learning of categories additionally a forward-feature selection method was introduced to separate co-occurring categories. In experiments the performance of these learning methods could be shown for difficult visual recognition problems.
Nákup knihy
Interactive and life-long learning for identification and categorization tasks, Stephan Kirstein
- Jazyk
- Rok vydania
- 2010
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- Titul
- Interactive and life-long learning for identification and categorization tasks
- Jazyk
- anglicky
- Autori
- Stephan Kirstein
- Vydavateľ
- Univ.-Verl.
- Vydavateľ
- 2010
- ISBN10
- 3939473804
- ISBN13
- 9783939473800
- Kategórie
- Počítače, IT, programovanie
- Anotácia
- This thesis focuses on life-long and interactive learning for recognition tasks. To achieve these targets the separation into a short-term memory (STM) and a longterm memory (LTM) is proposed. For the incremental build up of the STM a similarity-based one-shot learning method was developed. Furthermore two consolidation algorithms were proposed enabling the incremental learning of LTM representations. Based on the Learning Vector Quantization (LVQ) network architecture an error-based node insertion rule and a node dependent learning rate are proposed to enable life-long learning. For learning of categories additionally a forward-feature selection method was introduced to separate co-occurring categories. In experiments the performance of these learning methods could be shown for difficult visual recognition problems.