理数情報教育系

守本 晃

モリモト アキラ  (Akira Morimoto)

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

経歴

 3

論文

 42

MISC

 62
  • Nobuko Ikawa, Akira Morimoto, Ryuichi Ashino
    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.
  • Akira Morimoto, Ryuichi Ashino, Takeshi Mandai
    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.
  • Akira Morimoto, Ryuichi Ashino, Takeshi Mandai
    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.
  • Ryuichi Ashino, Shusuke Kataoka, Takeshi Mandai, Akira Morimoto
    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.
  • 守本晃
    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

書籍等出版物

 4

講演・口頭発表等

 48

共同研究・競争的資金等の研究課題

 27