Osaka Kyoiku University Researcher Information
日本語 | English
Curriculum Vitaes
Profile Information
- Affiliation
- Professor, Division of Math, Sciences, and Information Technology in Education, Osaka Kyoiku University
- Degree
- 理学修士(京都大学)
- Researcher number
- 50239688
- J-GLOBAL ID
- 200901027932092682
- researchmap Member ID
- 1000357417
- External link
Research Interests
3Research Areas
2Research History
3-
Apr, 2016
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Apr, 2010 - Mar, 2016
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Aug, 1991 - Mar, 2007
Committee Memberships
1-
2005
Papers
42-
Japan Journal of Industrial and Applied Mathematics, Apr 26, 2023 Peer-reviewed
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Proceedings of The 40th JSST Annual International Conference on Simulation Technology, 114-117, Sep, 2021 Peer-reviewed
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Proceedings of the Tenth International Conference on Information, 11-15, Mar, 2021 Peer-reviewed
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RIMS Kokyuroku, 2147 14-35, Jan, 2020 Invited
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2019 International Conference on Wavelet Analysis and Pattern Recognition (ICWAPR), 128-133, Jul, 2019 Peer-reviewed
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Trends in Mathematics, 543-550, 2019 Peer-reviewed
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Analysis, Probability, Applications, and Computation, 551-558, 2019 Peer-reviewed
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2018 International Conference on Wavelet Analysis and Pattern Recognition (ICWAPR), 113-118, Jul, 2018 Peer-reviewed
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2018 International Conference on Wavelet Analysis and Pattern Recognition (ICWAPR), 82-88, Jul, 2018 Peer-reviewed
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Trends in Mathematics, 595-601, 2017 Peer-reviewed
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Pseudo-Differential Operators: Groups, Geometry and Application, 219-239, 2017 Peer-reviewed
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New Trends in Analysis and Interdisciplinary Applications, 581-587, 2017 Peer-reviewed
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日本応用数理学会論文誌, 27(2) 216-238, 2017 Peer-reviewedhttps://doi.org/10.11540/jsiamt.27.2_216
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2016 International Conference on Wavelet Analysis and Pattern Recognition (ICWAPR), 189-194, Jul, 2016 Peer-reviewed
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Proceedings of the Seventh International Conference on Information, 57-60, Nov, 2015 Peer-reviewed
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2015 International Conference on Wavelet Analysis and Pattern Recognition (ICWAPR), 87-92, Jul, 2015 Peer-reviewed
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2015 International Conference on Wavelet Analysis and Pattern Recognition (ICWAPR), 93-98, Jul, 2015 Peer-reviewed
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2015 International Conference on Wavelet Analysis and Pattern Recognition (ICWAPR), 111-116, Jul, 2015 Peer-reviewed
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Journal of the Mathematical Society of Japan, 67(3) 1275-1294, Jul 1, 2015 Peer-reviewed
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2015 12th International Conference on Information Technology - New Generations, 347-352, Apr, 2015 Peer-reviewed
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Current Trends in Analysis and Its Applications, 467-473, 2015 Peer-reviewed
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RIMS Kokyuroku, 1928 1-26, Dec, 2014 Invited
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2014 International Conference on Wavelet Analysis and Pattern Recognition, 134-139, Jul, 2014 Peer-reviewed
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2014 International Conference on Wavelet Analysis and Pattern Recognition, 127-133, Jul, 2014 Peer-reviewed
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INTERNATIONAL JOURNAL OF WAVELETS MULTIRESOLUTION AND INFORMATION PROCESSING, 12(4), Jul, 2014 Peer-reviewedThe purpose of blind source separation is to separate the original sources from the sensor array, without knowing the transmission channel characteristics. Besides methods based on independent component analysis, several methods based on time-frequency analysis have been proposed. In this paper, a new method of multistage separation is proposed, which improves our formerly proposed methods using the time-scale information matrix based on the continuous multiwavelet transform.
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2013 International Conference on Wavelet Analysis and Pattern Recognition, 73-78, Jul, 2013 Peer-reviewed
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2013 International Conference on Wavelet Analysis and Pattern Recognition, 79-84, Jul, 2013 Peer-reviewed
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Proceedings of the Sixth International Conference on Information, 30-33, May, 2013 Peer-reviewed
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RIMS Kokyuroku, 1803 98-117, Aug, 2012 Invited
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International Journal of Wavelets, Multiresolution and Information Processing, 08(04) 575-594, Jul, 2010 Peer-reviewedThe 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 noises. The blind source separation problem is how to enable computers to solve the cocktail party problem in a satisfactory manner. The simplest version of spatio-temporal mixture problem, which is a type of blind source separation problem, has been solved by a generalized version of the quotient signal estimation method based on the analytic wavelet transform, under the assumption that the time delays are integer multiples of the sampling period. The analytic wavelet transform is used to represent time-frequency information of observed signals. Without the above assumption, improved algorithms, utilizing phase information of the analytic wavelet transforms of the observed signals, are proposed. A series of numerical simulations is presented.
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Applicable Analysis, 88(3) 425-456, Mar, 2009 Peer-reviewed
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Transactions of the Japan Society for Industrial and Applied Mathematics, 19(3) 257-278, 2009 Peer-reviewedA method using time-frequency information to solve blind source separation problems for one dimensional signals is extended to two dimensional signals in order to solve the image separation problem. The discrete stationary wavelet transformation is used to define spatial-scale information. Algorithms to solve the image separation problem are proposed. Several numerical experiments are presented to reveal the proposed algorithms to be effective. A comparative study of the proposed method and a standard method using independent component analysis is given.
Misc.
62-
International Conference on Wavelet Analysis and Pattern Recognition, 397-402, 2012A 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, 2012The 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, 2012The 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, 2012The 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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Proceedings of the MEXT & OKU 2011 Workshop on Wavelet Theory and its Applications to Engineering, 1 87-105, Sep, 2011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
Books and Other Publications
4Presentations
48-
14th International ISAAC Congress, Jul 17, 2023
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The 40th JSST Annual International Conference on Simulation Technology, Sep 1, 2021, 日本シミュレーション学会
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13th ISAAC Congress, Aug 6, 2021, ISAAC
Professional Memberships
3Research Projects
27-
科研費補助金, Apr, 2021 - Mar, 2024
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Grants-in-Aid for Scientific Research, Japan Society for the Promotion of Science, Apr, 2020 - Mar, 2023
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Grants-in-Aid for Scientific Research, Japan Society for the Promotion of Science, Apr, 2017 - Mar, 2020
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科研費補助金, 日本学術振興会, Apr, 2017 - Mar, 2020
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科研費補助金, 日本学術振興会, Apr, 2014 - Mar, 2017