Osaka Kyoiku University Researcher Information
日本語 | English
研究者業績
基本情報
- 所属
- 大阪教育大学 理数情報教育系 教授
- 学位
- 理学修士(京都大学)
- 研究者番号
- 50239688
- J-GLOBAL ID
- 200901027932092682
- researchmap会員ID
- 1000357417
- 外部リンク
研究キーワード
3経歴
3-
2016年4月
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2010年4月 - 2016年3月
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1991年8月 - 2007年3月
委員歴
1-
2005年
論文
42-
Japan Journal of Industrial and Applied Mathematics 2023年4月26日 査読有り
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Proceedings of The 40th JSST Annual International Conference on Simulation Technology 114-117 2021年9月 査読有り
MISC
62-
International Conference on Wavelet Analysis and Pattern Recognition 397-402 2012年A new design based on wavelet analysis for the objective audiometry devices is proposed. The auditory brainstem response and 80-Hz auditory steady-state response (ASSR) are used in the objective audiometry devices for infants. For the aged, an objective audiometry device is used in anti-aging investigations, which enables the hearing acuity of awake adults to be tested with the 40-Hz ASSR. The ASSR evoked by an amplitude modulated tone is recorded as a waveform. However, the evoked potential response is very small. Therefore, it is difficult to decide a threshold of the response and whether a significant response exists when it is mixed with noise such as the background brain waves. To cope with this problem, we need to average the evoked response waveforms. In particular, the 40-Hz ASSR has a large amount of noise caused by the background brain waves in comparison with the 80-Hz ASSR. In this paper, we apply waveform analysis using the wavelet transform in order to extract the 40-Hz ASSR from a signal mixed with a large amount of noise. Subjects with normal hearing participated in this study. © 2012 IEEE.
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International Conference on Wavelet Analysis and Pattern Recognition 384-389 2012年The blind image source separation problem is to estimate the number of the unknown source images and to separate the original images from superpositions of source images. The coefficients of the superposition are also unknown. Our proposed source reduction method has a potential to overcome the difficulty of previously proposed methods. In this paper, we give an algorithm of the method with continuous multiwavelet transform for the image separation. Various numerical experiments using the proposed algorithm ensure that our proposed source reduction method performs well for image separation. An example of numerical experiments is presented. © 2012 IEEE.
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International Conference on Wavelet Analysis and Pattern Recognition 346-351 2012年The blind source separation problem is to estimate the number of the unknown source signals and to separate the original source signals from the several observed signals, which are assumed to be linear superpositions of the sources. The coefficients of the superposition are also unknown. In this paper, in order to overcome a difficulty in previously proposed methods, a new approach to solve the problem, named source reduction method, using continuous wavelet transform is proposed. © 2012 IEEE.
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APPLICABLE ANALYSIS 91(4) 617-644 2012年The purpose of blind source separation is to separate and to estimate the original sources from the sensor array, without knowing the transmission channel characteristics. Besides methods based on independent component analysis which is one of the most powerful tools for blind source separation, several methods based on time-frequency analysis have been proposed. One of them is the quotient signal estimation method which can estimate the unknown number of sources. The notion of the continuous multiwavelet transform is introduced and three types of multiwavelets are presented. A new method using continuous multiwavelet transform, position-scale information matrices and self-organizing maps, is presented and applied to image source separations with noise. The performance of three multiwavelets are compared.
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平成 23 年度 数学・数理科学と諸科学・産業との連携研究ワークショップ ウェーブレット理論と工学への応用 プロシーディングス 1 87-105 2011年9月主催:文部科学省, 大阪教育大学 場所:大阪教育大学 天王寺キャンパス 日程:平成 23 年 9 月 12 日(月)13:00 - 18:00 平成 23 年 9 月 13 日(火) 9:00 - 12:30
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International Conference on Wavelet Analysis and Pattern Recognition 245-250 2011年Multiwavelets are derived from refutable function vectors via a multiresolution analysis. A new method for blind image source separation based on position-scale information denned by multiwavelets is presented. © 2011 IEEE.
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International Conference on Wavelet Analysis and Pattern Recognition 239-244 2011年The monogenic signal is a multidimensional generalization of the analytic signal. The monogenic signal of the continuous wavelet transform is called the monogenic wavelet transform. Stationary wavelet transform is a redundant discrete wavelet transform, which is translation-invariant. A new method for blind image source separation based on position-scale information using the monogenic wavelet transform discretized by the stationary wavelet transform is presented. © 2011 IEEE.
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INTERNATIONAL CONFERENCE ON INVERSE PROBLEMS 2010 290 1-6 2011年Blind Source Separation (BSS) is one of the hottest emerging areas in signal processing. The purpose of BSS is to separate and to estimate the original sources from the sensor array, without knowing the transmission channel characteristics. Besides methods based on independent component analysis which is one of the most powerful tools for BSS, several methods based on time-frequency analysis have been proposed. One of them is the quotient signal estimation method which can estimate the unknown number of sources. We present a new method using wavelet analysis and apply it to signal and image source separations.
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ISCIT 2010 - 2010 10th International Symposium on Communications and Information Technologies 707-712 2010年The Riesz transforms and the monogenic signal are two-dimensional generalizations of the Hilbert transform and the analytic signal, respectively. The monogenic wavelet transformation is introduced and applied to solve blind source separation problems for images. The monogenic wavelet transformation is used to define spatial-scale information. Algorithms to solve the image separation problem are proposed. © 2010 IEEE.
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Proceedings of the fifth international conference on Information, ISBN 4-901329-06-5. 196-199 2009年 査読有り
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Seminar Notes of Mathematical Sciences 11 12-26 2008年
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Proceedings of the 2008 International Conference on Wavelet Analysis and Pattern Recognition, ICWAPR 2 541-546 2008年The algorithms to solve the simplest version of spatio-temporal mixture problem in the blind source separation are proposed. The analytic wavelet transform is used to represent time-frequency information and a numerical simulation is given. ©2008 IEEE.
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Fields Institute Communications 52 401-414 2007年12月 査読有り
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INFORMATION-AN INTERNATIONAL INTERDISCIPLINARY JOURNAL 10(5) 555-568 2007年9月The blind source separation method for spatial mixing problem is discussed. A matrix called time-frequency information matrix is composed of continuous wavelet transforms of observed signals with respect to several different wavelet functions. The proposed method detects the number of sources and separates sources using the time-frequency information matrix. Algorithms axe given, and numerical experiments demonstrate the proposed method works well.
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APPLIED MATHEMATICS AND COMPUTATION 187(1) 153-162 2007年4月To treat the blind source separation problems, in many cases, either statistical independence or statistical orthogonality (uncorrelation) on the sources has been assumed. Napoletani-Berenstein-Krishnaprasad treated the problem under the linear independence of the windowed Fourier transforms of sources and the continuity of density functions defined statistically. In this paper, another independence of the windowed Fourier transforms of sources in a time-frequency domain is proposed without assuming any statistical conditions. This paper is a summary of the authors' submitted papers. (C) 2006 Elsevier Inc. All rights reserved.
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APPLICABLE ANALYSIS 86(5) 577-609 2007年The blind source separation problem is discussed in this article. Focusing on the assumption of independency of the sources in the time-frequency domain, we present a mathematical formulation for the estimation problem of the number of sources. The proposed method uses the quotient of complex valued time- frequency information of only two observed signals to detect the number of sources. No fewer number of observed signals than the detected number of sources is needed to separate sources. The assumption on sources is quite general independence in the time-frequency plane, which is different from that of independent component analysis. We propose algorithms with feedback and give numerical simulations to show the method works well even for noisy case.
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PSEUDO-DIFFERENTIAL OPERATORS: PARTIAL DIFFERENTIAL EQUATIONS AND TIME-FREQUENCY ANALYSIS 52 401-414 2007年The cocktail party problem deals with the specialized human listening ability to focus one's listening attention on a single talker among a cacophony of conversations and background noise. The blind source separation problem corresponds to a way to enable computers to solve the cocktail party problem in a satisfactory manner. A blind source separation based on time-frequency informations for spatio-temporal mixture problems is discussed.
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CRM preprint Centre de recherches mathematiques (CRM) of the Universite de Montreal CRM(3213) 2006年3月CRM preprint http://www.crm.umontreal.ca/en/niveau2/index_pub.html
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Scientiae Mathematicae Japonicae 63 351-367 2006年 査読有り
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Proceedings of The Fourth International Conference on Information and The Fourth Irish Conference on MFCSIT. 164-167 2006年 査読有り
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Proceedings of The Fourth International Conference on Information and The Fourth Irish Conference on MFCSIT. 92-95 2006年 査読有り
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Seminar Notes of Mathematical Sciences 9 81-89 2006年
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Seminar Notes of Mathematical Sciences 9 1-16 2006年
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Scientific Proceedings of Riga Technical University in series "Computer Science", vol. 29, Riga: Riga Technical University, "Boundary Field Problems and Computer Simulation"; 48-th issue 29 6-14 2006年 査読有り
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National University of Ireland, CorkProceedings of The Fourth International Conference on Information and The Fourth Irish Conference on MFCSIT. 164-167 2006年
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Scientific Proceedings of Riga Technical University in series "Computer Science", vol. 29, Riga: Riga Technical University, "Boundary Field Problems and Computer Simulation"; 48-th issue 29 6-14 2006年
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CRM preprint Centre de recherches mathematiques (CRM) of the Universite de Montreal CRM(3202) 2005年10月CRM preprint http://www.crm.umontreal.ca/en/niveau2/index_pub.html
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信学技報 IEICE Technical Report, EA2005-12 SIP2005-17(2005-05) EA2005 SIP2005 37-42 2005年5月査読無しの技術報告
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信学技報 IEICE Technical Report, EA2005-11 SIP2005-16(2005-05) EA2005 SIP2005 31-36 2005年5月査読無しの技術報告
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MATHEMATICAL AND COMPUTER MODELLING 41(6-7) 773-790 2005年3月Digital image compression with multiresolution singular value decomposition is compared with discrete cosine transform, discrete 9/7 biorthogonal wavelet transform, Karhunen-Loeve transform, and combinations thereof The coding methods used SPIHT and run-length with Huff-mann coding. The performances of these methods differ little from each other. Generally, the 9/7 biorthogonal wavelet transform is superior for most images that were tested for given compression rates. But for certain block transforms and certain images other methods are slightly superior. (c) 2005 Elsevier Ltd. All rights reserved.
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Applicable Analysis 84(2) 165-195 2005年2月 査読有り
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CRM preprint Centre de recherches mathematiques (CRM) of the Universite de Montreal CRM(2980) 2004年3月CRM preprint http://www.crm.umontreal.ca/en/niveau2/index_pub.html
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CRM preprint Centre de recherches mathematiques (CRM) of the Universite de Montreal CRM(2939) 2004年1月CRM preprint http://www.crm.umontreal.ca/en/niveau2/index_pub.html
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Scientific Proceedings of Riga Technical University in series "Computer Science", vol. 21, Riga: Riga Technical University, "Boundary Field Problems and Computer Simulation"; 46-th issue 21 36-46 2004年 査読有り
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Scientific Proceedings of Riga Technical University in series "Computer Science", vol. 21, Riga: Riga Technical University, "Boundary Field Problems and Computer Simulation"; 46-th issue 21 25-35 2004年 査読有り
書籍等出版物
4講演・口頭発表等
48-
14th International ISAAC Congress 2023年7月17日
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The 40th JSST Annual International Conference on Simulation Technology 2021年9月1日 日本シミュレーション学会
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13th ISAAC Congress 2021年8月6日 ISAAC
所属学協会
3共同研究・競争的資金等の研究課題
27-
科研費補助金 2021年4月 - 2024年3月
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日本学術振興会 科学研究費助成事業 2020年4月 - 2023年3月
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日本学術振興会 科学研究費助成事業 2017年4月 - 2020年3月
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日本学術振興会 科研費補助金 2017年4月 - 2020年3月
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日本学術振興会 科研費補助金 2014年4月 - 2017年3月