Fatigue level estimation of bill based on feature-selected frequency band acoustic signal by using supervised SOM
暂无分享,去创建一个
[1] Teranishi Masaru,et al. Classification of New and Used Bills Using Acoustic Energy Pattern of a Banking Machine , 1998 .
[2] Sigeru Omatu,et al. Fatigue level estimation of bill based on feature-selected acoustic energy pattern by using supervised SOM , 2008, CSTST.
[3] Teranishi Masaru,et al. Classification of Three Fatigue Levels for Bills Using Acoustic Frequency Band Energy Patterns , 2000 .
[4] Sigeru Omatu,et al. Fatigue Level Estimation of Bill Based on Acoustic Signal Feature by Supervised SOM , 2008 .
[5] M. V. Velzen,et al. Self-organizing maps , 2007 .
[6] R. S. Khurmi.pdf,et al. Strength of Materials , 1908, Nature.
[7] Sigeru Omatu,et al. Continuous fatigue level estimation for the classification of fatigued bills based on an acoustic signal feature by a supervised SOM , 2009, Artificial Life and Robotics.
[8] Toshiharu Enomae,et al. Evaluation and Control of Coated Paper Stiffness , 1997 .
[9] T. Kosaka,et al. Fatigue level estimation of bill based on acoustic energy features by Supervised SOM , 2008, 2008 IEEE Conference on Soft Computing in Industrial Applications.