Identification of Diseases in Newborns Using Advanced Acoustic Features of Cry Signals
暂无分享,去创建一个
[1] H L Golub,et al. Effects of in utero cocaine exposure on newborn acoustical cry characteristics. , 1992, Pediatrics.
[2] Mohd Ariffanan Mohd Basri,et al. Probabilistic Neural Network for Brain Tumor Classification , 2011, 2011 Second International Conference on Intelligent Systems, Modelling and Simulation.
[3] Carlos A. Reyes García,et al. Detecting Pathologies from Infant Cry Applying Scaled Conjugated Gradient Neural Networks , 2003, ESANN.
[4] Martti Vainio,et al. Interaction of vocal fold and vocal tract oscillations , 2011 .
[5] K. Michelsson,et al. Twenty-Five Years of Scandinavian Cry Research , 1985 .
[6] Chakib Tadj,et al. Resonance frequencies behavior in pathologic cries of newborns. , 2015, Journal of voice : official journal of the Voice Foundation.
[7] J. Markel,et al. The SIFT algorithm for fundamental frequency estimation , 1972 .
[8] Joe Wolfe,et al. Vocal tract resonances in singing: variation with laryngeal mechanism for male operatic singers in chest and falsetto registers. , 2014, The Journal of the Acoustical Society of America.
[9] Claudia Manfredi,et al. Interaction patterns between melodies and resonance frequencies in infants' pre-speech utterances , 2005, MAVEBA.
[10] Maciej Kusy,et al. Probabilistic neural network training procedure based on Q(0)-learning algorithm in medical data classification , 2014, Applied Intelligence.
[11] A Fort,et al. Parametric and non-parametric estimation of speech formants: application to infant cry. , 1996, Medical engineering & physics.
[12] Sergio Daniel Cano-Ortiz,et al. A Radial Basis Function Network Oriented for Infant Cry Classification , 2004, CIARP.
[13] V. Fisichelli,et al. Frequency spectra of the cries of normal infants and those with Down’s Syndrome , 1966 .
[14] Christian Gargour,et al. Expiratory and Inspiratory Cries Detection Using Different Signals' Decomposition Techniques , 2017, Journal of voice : official journal of the Voice Foundation.
[15] Dror Lederman,et al. Classification of cries of infants with cleft-palate using parallel hidden Markov models , 2008, Medical & Biological Engineering & Computing.
[16] I. Titze. Nonlinear source-filter coupling in phonation: theory. , 2008, The Journal of the Acoustical Society of America.
[17] Johan Sundberg,et al. Formant tuning strategies in professional male opera singers. , 2013, Journal of voice : official journal of the Voice Foundation.
[18] Chakib Tadj,et al. Cry-based classification of healthy and sick infants using adapted boosting mixture learning method for gaussian mixture models , 2012 .
[19] W. P. Sweeney,et al. Classification of chromosomes using a probabilistic neural network. , 1994, Cytometry.
[20] Chakib Tadj,et al. Frequential Characterization of Healthy and Pathologic Newborns Cries , 2013 .
[21] C Manfredi,et al. High-resolution cry analysis in preterm newborn infants. , 2009, Medical engineering & physics.
[22] Chakib Tadj,et al. Acoustic measures of the cry characteristics of healthy newborns and newborns with pathologies , 2013 .
[23] L. Lagasse,et al. Assessment of infant cry: acoustic cry analysis and parental perception. , 2005, Mental retardation and developmental disabilities research reviews.
[24] Johan Sundberg,et al. Professional male singers’ formant tuning strategies for the vowel /a/ , 2011, Logopedics, phoniatrics, vocology.
[25] Jouni Freund,et al. Proceedings of the 24th Nordic Seminar on Computational Mechanics , 2011 .
[26] C. Manfredi,et al. Testing software tools for newborn cry analysis using synthetic signals , 2017, Biomed. Signal Process. Control..
[27] J. Sundberg,et al. Vocal tract in female registers--a dynamic real-time MRI study. , 2010, Journal of voice : official journal of the Voice Foundation.
[28] Claudia Manfredi,et al. Automated detection and classification of basic shapes of newborn cry melody , 2018, Biomed. Signal Process. Control..
[29] Chakib Tadj,et al. Newborn's pathological cry identification system , 2012, 2012 11th International Conference on Information Science, Signal Processing and their Applications (ISSPA).
[30] Coarticulation • Suprasegmentals,et al. Acoustic Phonetics , 2019, The SAGE Encyclopedia of Human Communication Sciences and Disorders.
[31] Carlos A. Reyes García,et al. Infant Cry Classification to Identify Hypo Acoustics and Asphyxia Comparing an Evolutionary-Neural System with a Neural Network System , 2005, MICAI.
[32] Mark Beale,et al. Neural Network Toolbox™ User's Guide , 2015 .
[33] Carlos A. Reyes García,et al. Applying Statistical Vectors of Acoustic Characteristics for the Automatic Classification of Infant Cry , 2007, ICIC.
[34] Sazali Yaacob,et al. Pathological infant cry analysis using wavelet packet transform and probabilistic neural network , 2011, Expert Syst. Appl..
[35] Dror Lederman,et al. Estimation of Infants' Cry Fundamental Frequency using a Modified SIFT algorithm , 2010, ArXiv.
[36] Paul Boersma,et al. Praat: doing phonetics by computer , 2003 .