Chapter 8 Conclusions and Future Work
8.2 Future Work
First of all, although among all algorithms proposed in this thesis, only the lateral collision warning system has been coded on the embedded system, the whole algorithm is still designed under the consideration of being transplantable on embedded system. In addition, except the algorithm of lateral collision algorithm, 70% of the computing power is still free. Transplanting the whole system on embedded system is the next step.
Second, the lateral collision algorithm in this thesis uses different methods when working in the daytime and evening. It works well in normal situation, but it may make mistakes at the moment of entering and exiting the tunnel. This problem is due to the switching process of two methods used in the algorithm. This problem would be solved in the future.
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Vita
姓名: 范剛維 性別: 男
生日: 民國 65 年 6 月 1 日 籍貫: 台灣省新竹縣
學歷:
1. 民國 83 年 6 月桃園縣國立楊梅高級中學畢業 2. 民國 88 年 6 月私立中華大學資訊工程系學士畢業 3. 民國 91 年 6 月私立中華大學資訊工程系碩士畢業
4. 民國 91 年 9 月國立交通大學電機與控制工程學系博士畢業
PUBLICATION LISTS
期刊部分:[1] Chin-Teng Lin, Kan-Wei Fan, Chang-Mao Yeh, Her-Chang Pu, and Fang-Yi Wu ,
“High-Accuracy Skew Estimation of Document Images”, accepted paper for publication, International Journal of Fuzzy Systems.
[2] Chun-Lung Chang, Kan-Wei Fan, I-Fang Chung, and Chin-Teng Lin, Fellow, IEEE , “A Recurrent Fuzzy Coupled Cellular Neural Network System with Automatic Structure and Template Learning”, IEEE Trans. on Circuits and
Systems—II: Express Briefs, vol. 53, no.8, August 2006.
[3] Sheng-Che Hsu, Sheng-Fu Liang, Kang-Wei Fan, and Chin-Teng Lin, Fellow,
IEEE, “A Robust In-Car Digital Image Stabilization Technique”, IEEE Trans. on Systems, Man, and Cybernetics-Part C: Applications and Reviews, vol. 37, no. 2,
March 2007.[4] Chin-Teng Lin, Fellow, IEEE, Kang-Wei Fan, Her-Chang Pu, Shih-Mao Lu and
Sheng-Fu Liang, “A HVS-Directed Neural-Network-Based Image Resolution Enhancement Scheme for Image Resizing”, accepted paper for publication, IEEE
Trans. on Fuzzy System.
會議論文部分:
[1] Chin-Teng Lin; Sheng-Fu Liang; Chang-Moun Yeh; Kang-Wei Fan , ”Fuzzy neural network design using support vector regression for function approximation with outliers”, IEEE International Conference on Systems, Man and Cybernetics, 2005, vol.3, 10-12 Oct. 2005 Page(s):2763 – 2768.
[2] Chin-Teng Lin; Kan-Wei Fan; Wen-Chang Cheng , “An illumination estimation scheme for color constancy based on chromaticity histogram and neural network”,
IEEE International Conference , vol. 3, 10-12 Oct. 2005 Page(s):2488 – 2494.
[3] Chin-Tung Lin; Chiun-Li Chin; Kan-Wei Fan; Chun-Yeon Lin , “A novel architecture for converting single 2D image into 3D effect image”, 9th
International Workshop on Cellular Neural Networks and Their Applications,
2005, 28-30 May 2005 Page(s):52 – 55.[4] Chin-Teng Lin, Chun-Yeon Lin, Kan-Wei Fan, Her-Chang Pu, and Sheng-Fu Liang , “A Novel 2D to 3D Image Technique Based On Object-Oriented Conversion”, CVGIP 2005