| Tesi etd-05102006-114606 | 
    Link copiato negli appunti
  
    Tipo di tesi
  
  
    Tesi di dottorato di ricerca
  
    Autore
  
  
    Ferro, Marcello  
  
    Indirizzo email
  
  
    marcello.ferro@ing.unipi.it
  
    URN
  
  
    etd-05102006-114606
  
    Titolo
  
  
    High Efficiency Real-Time Sensor and Actuator Control and Data Processing
  
    Settore scientifico disciplinare
  
  
    ING-INF/06
  
    Corso di studi
  
  
    AUTOMATICA, ROBOTICA E BIOINGEGNERIA
  
    Relatori
  
  
    relatore Prof. De Rossi, Danilo
  
    Parole chiave
  
  - biomimetics
- data analysis
- human-machine interface
- imitation
- learning
- life-like artifact
- multi-task data processing
- neural networks
- pattern recognition
- real-time multi-transducer networks
- robot-based treatment method
- sensory fusion
- social attention
    Data inizio appello
  
  
    21/04/2006
  
    Consultabilità
  
  
    Completa
  
    Riassunto
  
  The advances in sensor and actuator technology foster the use of large multitransducer networks in many different fields. The increasing complexity of such networks poses problems in data processing, especially when high-efficiency is required for real-time applications. In fact, multi-transducer data processing usually consists of interconnection and co-operation of several modules devoted to process different tasks. Multi-transducer network modules often include tasks such as control, data acquisition, data filtering interfaces, feature selection and pattern analysis. Heterogeneous techniques derived from chemometrics, neural networks, fuzzy-rules used to implement such tasks may introduce module interconnection and co-operation issues. To help dealing with these problems the author here presents a software library architecture for a dynamic and efficient management of multi-transducer data processing and control techniques. The framework’s base architecture and the implementation details of several extensions are described. Starting from the base models available in the framework core dedicated models for control processes and neural network tools have been derived. The Facial Automaton for Conveying Emotion (FACE) has been used as a test field for the control architecture.
    File
  
  | Nome file | Dimensione | 
|---|---|
| Marcello...orato.pdf | 3.03 Mb | 
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