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    Audio classification based on sinusoidal model: a new feature

    , Article 2008 IEEE Region 10 Conference, TENCON 2008, Hyderabad, 19 November 2008 through 21 November 2008 ; 2008 ; 1424424089 (ISBN); 9781424424085 (ISBN) Shirazi, J ; Ghaemmaghami, S ; Sharif University of Technology
    2008
    Abstract
    In this paper, a new feature set is presented and evaluated based on sinusoidal modeling of audio signals. Duration of the longest sinusoidal model frequency track, as a measure of the harmony, is used and compared to typical features as input into an audio classifier. The performance of this sinusoidal model feature is evaluated through classification of audio to speech and music using both the GMM and the SVM classifiers. Classification results show the proposed feature, which could be used for the first time in such an audio classification, is quite successful in speech/music classification. Experimental comparisons with popular features for audio classification, such as HZCRR and LSTER,... 

    Dimension reduction of remote sensing images by incorporating spatial and spectral properties

    , Article AEU - International Journal of Electronics and Communications ; Volume 64, Issue 8 , 2010 , Pages 729-732 ; 14348411 (ISSN) Dianat, R ; Kasaei, S ; Sharif University of Technology
    Abstract
    A new and efficient dimension reduction method is introduced in this paper. The proposed method, almost the same as the well-known principal component analysis (PCA) method, enjoys the properties of uncorrelatedness of resulting components and orthogonality of transform coefficients. In addition, by incorporating spatial and spectral properties among image pixels, the method obtains more accurate classification results with less computational cost  

    Accurate power transformer PD pattern recognition via its model

    , Article IET Science, Measurement and Technology ; Volume 10, Issue 7 , 2016 , Pages 745-753 ; 17518822 (ISSN) Rostaminia, R ; Sanie, M ; Vakilian, M ; Mortazavi, S. S ; Parvin, V ; Sharif University of Technology
    Institution of Engineering and Technology 
    Abstract
    In this study, a transformer model is proposed to simulate the behaviour of a real transformer, under presence ofdifferent types of defects which contribute to partial discharge (PD) generation, as closely as possible. Five different typesof defects (scratch on winding insulation, bubble in oil, moisture in insulation paper, very small free metal particle intransformer tank and fixed sharp metal point on transformer tank) are implemented artificially into these transformermodels to investigate the resultant PD current signal magnitude and characteristics. Time-domain PD currentwaveforms are recorded on those transformer models which have one type of those defects. The resultant statisticalPD... 

    Birth-death frequencies variance of sinusoidal model a new feature for audio classification

    , Article SIGMAP 2008 - International Conference on Signal Processing and Multimedia Applications, Porto, 26 July 2008 through 29 July 2008 ; 2008 , Pages 139-144 ; 9789898111609 (ISBN) Ghaemmaghami, S ; Shirazi, J ; Sharif University of Technology
    2008
    Abstract
    In this paper, a new feature set for audio classification is presented and evaluated based on sinusoidal modeling of audio signals. Variance of the birth-death frequencies in sinusoidal model of signal, as a measure of harmony, is used and compared to typical features as the input into an audio classifier. The performance of this sinusoidal model feature is evaluated through classification of audio to speech and music using both the GMM and the SVM classifiers. Classification results show that the proposed feature is quite successful in speech/music classification. Experimental comparisons with popular features for audio classification, such as HZCRR and LSTER, are presented and discussed.... 

    An asynchronous dynamic Bayesian network for activity recognition in an ambient intelligent environment

    , Article ICPCA10 - 5th International Conference on Pervasive Computing and Applications, 1 December 2010 through 3 December 2010 ; December , 2010 , Pages 20-25 ; 9781424491421 (ISBN) Mirarmandehi, N ; Rabiee, H. R ; Sharif University of Technology
    2010
    Abstract
    Ambient Intelligence is the future of computing where devices predict what users need and help them carry out their everyday life activities easier. To make this prediction possible these environments should be aware of the context. Activity recognition is one of the most complex problems in context-aware environments. In this paper we propose a layered Dynamic Bayesian Network (DBN) to recognize activities in an oral presentation. The layered architecture gives us the opportunity to recognize complex activities using the classification results of sensory data in the first layer regardless of the physical environment. Our model is event-driven meaning the classification takes place only when... 

    Extended common spatial and temporal pattern (ECSTP): A semi-blind approach to extract features in ERP detection

    , Article Pattern Recognition ; Volume 95 , 2019 , Pages 128-135 ; 00313203 (ISSN) Jalilpour Monesi, M ; Hajipour Sardouie, S ; Sharif University of Technology
    Elsevier Ltd  2019
    Abstract
    Common spatial pattern (CSP) analysis and its extensions have been widely used as feature extraction approaches in the brain-computer interfaces (BCIs). However, most of the CSP-based approaches do not use any prior knowledge that might be available about the two conditions (classes) to be classified. Therefore, their applications are limited to datasets that contain enough variance information about the two conditions. For example, in some event-related potential (ERP) detection applications, such as P300 speller, the information is in the time domain but not in the variance of spatial components. To address this problem, first, we present a novel feature extraction method termed extended... 

    Rule based classifier generation using symbiotic evolutionary algorithm

    , Article 19th IEEE International Conference on Tools with Artificial Intelligence, ICTAI 2007, Patras, 29 October 2007 through 31 October 2007 ; Volume 1 , January , 2007 , Pages 458-464 ; 10823409 (ISSN); 076953015X (ISBN); 9780769530154 (ISBN) Halavati, R ; Bagheri Shouraki, S ; Esfandiar, P ; Lotfi, S ; Sharif University of Technology
    2007
    Abstract
    Genetic Algorithms are vastly used in development of rule based classifier systems in data mining. In such tasks, the rule base is usually a set of If-Then rules and the rules are developed using an evolutionary trait. GA is usually a good solution for such tasks as it globally searches for good rule-sets without any prior bias or greedy force, but it is usually slow. This paper presents a novel algorithm for rule base generation based on natural process of symbiogenesis. The algorithm uses symbiotic combination operator instead of traditional sexual recombination operator of genetic algorithms. The new algorithm is compared with genetic algorithm on some globally used benchmarks and it is...