Browse > Article
http://dx.doi.org/10.3745/KTCCS.2019.8.11.251

Development of a Simulator for RBF-Based Networks on Neuromorphic Chips  

Lee, Yeowool (고려대학교 컴퓨터정보학과)
Seo, Keyongeun (고려대학교 컴퓨터정보학과)
Choi, Daewoong (고려대학교 컴퓨터정보학과)
Ko, Jaejin (전자부품연구원 임베디드SW센터)
Lee, Sangyub (전자부품연구원 임베디드SW센터)
Lee, Jaekyu (전자부품연구원 임베디드SW센터)
Cho, Heyonjoong (고려대학교 컴퓨터융합소프트웨어학과)
Publication Information
KIPS Transactions on Computer and Communication Systems / v.8, no.11, 2019 , pp. 251-262 More about this Journal
Abstract
In this paper, we propose a simulator that provides various algorithms of RBF networks on neuromorphic chips. To develop algorithms based on neuromorphic chips, the disadvantages of using simulators are that it is difficult to test various types of algorithms, although time is fast. This proposed simulator can simulate four times more types of network architecture than existing simulators, and it provides an additional a two-layer structure algorithm in particular, unlike RBF networks provided by existing simulators. This two-layer architecture algorithm is configured to be utilized for multiple input data and compared to the existing RBF for performance analysis and validation of utilization. The analysis showed that the two-layer structure algorithm was more accurate than the existing RBF networks.
Keywords
Radial Basis Functions; Simulator; Neuromorphic Chip; Drowsy Detection;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
연도 인용수 순위
1 NeuroMem Technology Reference Guide, Version 5.2 [Internet], https://www.general-vision.com/documentation/TM_Neuro Mem_Technology_Reference_Guide.pdf
2 G. Labonte and W. Deck, "Infrared Target-flare Discrimination using a Zisc Hardware Neural Network," Journal of Real-Time Image Processing, Vol.5, No.1, pp.11-32, 2010.   DOI
3 Y. Liu, D. Wei, N. Zhang, and M. Zhao,"Vehicle-license-plate Recognition Based on Neural Networks," in Proc. IEEE Int. Conf. Inf. Autom., 2011, pp.363-366.
4 NeuroMem Knowledge Builder [Internet], https://www.general-vision.com/download/nmkb/
5 CM1K emulator [Internet], https://github.com/kebwi/CM1K_emulator
6 S. Hariyanto, A. Sudiro, and S. Lukman, "Minutiae Matching Algorithm Using Artificial Neural Network for Fingerprint Recognition," 2015 3rd International Conference on Artificial Intelligence, Kota Kinabalu, Malaysia, 2015, pp.37-41.
7 S. Sardar, G. Tewari, and K. A. Babu, "A Hardware/Software Co-design Model for Face Recognition using Cognimem Neural Network Chip," International Conference on Image Information Processing, pp.1-6, 2011.
8 W. Yang, W. Wang, Y. Gao, and Z. Jin, "An Embedded Tracking System with Neural Network Accelerator," 2018 International Joint Conference on Neural Networks (IJCNN), 2018.
9 M. Suri, V. Parmar, A. Singla, R. Malviya, and S. Nair, "Neuromorphic Hardware Accelerated Adaptive Authentication System," in Computational Intelligence, 2015 IEEE Symposium Series on. IEEE, 2015, pp.1206-1213.
10 C. J. de Naurois, C. Bourdin, A. Stratulat, E. Diaz, and J. L. Vercher "Detection and Prediction of Driver Drowsiness using Artificial Neural Network Models," Accident Analysis & Prevention, 2017, 17, pp.30434-30437.
11 I. Daza, N. Hernandez, L. Bergasa, I. Parra, J. Yebes, M. Gavilan, R. Quintero, D. Llorca, and M. Sotelo, "Drowsiness Monitoring Based on Driver and Driving Data Fusion," in Proc. IEEE ITSC, Washington, DC, USA, Oct. 2011, pp.1199-1204.
12 A. Chebira, K. Madani, and G. Mercier, "Multi-neural Networks Hardware and Software Architecture: Application to Divide to Simplify Paradigm DTS," LNCS, Vol.1240, pp.841-850, 1997.
13 CM1K Hardware User's manual, Version 4.0.3 [Internet], https://www.general-vision.com/documentation/TM_CM1 K_Hardware_Manual.pdf
14 NeuroMem KB manual, Version 2.4.2 [Internet], https://www.general-vision.com/documentation/TM_NeuroMem_KB.pdf
15 S. K. Lal and A. Craig, "A Critical Review of the Psychophysiology of Driver Fatigue," Biol. Psychol, Vol.55, No.3, pp.173-194, 2001.   DOI
16 K. S. Moon, K. I. Hwang, E. J. Choi, and S. Z. Oah, "Study on Prevention of Drowsiness Driving using Electrocardiography (LF/HF) Index," Journal of the Korean Society of Safety, Vol.30, No.2, pp.56-62, 2015.   DOI
17 K. H. Seo, M. Y. Im, C. H. Im, and H. J. Hwang, "Apparatus for Preventing Drowsiness Based on Electoculogram", Patents of KIPO (Korean Intellectual Propoerty Office), South Korea, KR100851413B1 (2007).
18 I. Daza, N. Hernandez, L. Bergasa, I. Parra, J. Yebes, M. Gavilan, R. Quintero, D. Llorca, and M. Sotelo, "Drowsiness Monitoring Based on Driver and Driving Data Fusion," in Proc. IEEE ITSC, Washington, DC, USA, Oct. 2011, pp.1199-1204.