673,909 research outputs found

    A review of fMRI simulation studies

    Get PDF
    Simulation studies that validate statistical techniques for fMRI data are challenging due to the complexity of the data. Therefore, it is not surprising that no common data generating process is available (i.e. several models can be found to model BOLD activation and noise). Based on a literature search, a database of simulation studies was compiled. The information in this database was analysed and critically evaluated focusing on the parameters in the simulation design, the adopted model to generate fMRI data, and on how the simulation studies are reported. Our literature analysis demonstrates that many fMRI simulation studies do not report a thorough experimental design and almost consistently ignore crucial knowledge on how fMRI data are acquired. Advice is provided on how the quality of fMRI simulation studies can be improved

    Pendekatan Model Rea Dalam Perancangan Database Sistem Informasi Akuntansi Siklus Pendapatan

    Full text link
    Normalization concept in database is necessary in support in the computerized Accounting Information Systems (AIS). Entity Relationship Model (E-R Model) is usually used to design database as a common tool. However the rule of drawing E-R Model diagram is not so clear, therefore it make difficulty for data designer to construct normalization database. REA Model is a further development of E-R Model. REA Model using give-to-get principle that makes more easily to construct data model. This paper discuss the logical and physical view data, schema, REA Model, how to construct REA diagram, database design stages and how accountant participate in database design, as well as how to implement REA model into relational database specifically for revenue cycl

    Synthesis using speaker adaptation from speech recognition DB

    Get PDF
    This paper deals with the creation of multiple voices from a Hidden Markov Model based speech synthesis system (HTS). More than 150 Catalan synthetic voices were built using Hidden Markov Models (HMM) and speaker adaptation techniques. Training data for building a Speaker-Independent (SI) model were selected from both a general purpose speech synthesis database (FestCat;) and a database design ed for training Automatic Speech Recognition (ASR) systems (Catalan SpeeCon database). The SpeeCon database was also used to adapt the SI model to different speakers. Using an ASR designed database for TTS purposes provided many different amateur voices, with few minutes of recordings not performed in studio conditions. This paper shows how speaker adaptation techniques provide the right tools to generate multiple voices with very few adaptation data. A subjective evaluation was carried out to assess the intelligibility and naturalness of the generated voices as well as the similarity of the adapted voices to both the original speaker and the average voice from the SI model.Peer ReviewedPostprint (published version

    Automated extraction of knowledge for model-based diagnostics

    Get PDF
    The concept of accessing computer aided design (CAD) design databases and extracting a process model automatically is investigated as a possible source for the generation of knowledge bases for model-based reasoning systems. The resulting system, referred to as automated knowledge generation (AKG), uses an object-oriented programming structure and constraint techniques as well as internal database of component descriptions to generate a frame-based structure that describes the model. The procedure has been designed to be general enough to be easily coupled to CAD systems that feature a database capable of providing label and connectivity data from the drawn system. The AKG system is capable of defining knowledge bases in formats required by various model-based reasoning tools
    corecore