Download Kernel Learning Algorithms for Face Recognition by Jeng-Shyang Pan, Jun-Bao Li, Shu-Chuan Chu PDF

By Jeng-Shyang Pan, Jun-Bao Li, Shu-Chuan Chu

Kernel studying Algorithms for Face popularity covers the framework of kernel dependent face acceptance. This e-book discusses the complicated kernel studying algorithms and its program on face reputation. This ebook additionally makes a speciality of the theoretical deviation, the approach framework and experiments regarding kernel established face acceptance. integrated inside of are algorithms of kernel established face attractiveness, and in addition the feasibility of the kernel established face reputation procedure. This publication presents researchers in trend popularity and computing device studying quarter with complex face popularity tools and its latest purposes.

Show description

Read or Download Kernel Learning Algorithms for Face Recognition PDF

Similar algorithms books

Approximation Algorithms and Semidefinite Programming

Semidefinite courses represent one of many greatest periods of optimization difficulties that may be solved with average potency - either in thought and perform. They play a key function in various study components, corresponding to combinatorial optimization, approximation algorithms, computational complexity, graph conception, geometry, actual algebraic geometry and quantum computing.

Sequential Optimization of Asynchronous and Synchronous Finite-State Machines: Algorithms and Tools

Asynchronous, or unclocked, electronic structures have a number of capability merits over their synchronous opposite numbers. particularly, they deal with a few difficult difficulties confronted by means of the designers of large-scale synchronous electronic platforms: energy intake, worst-case timing constraints, and engineering and layout reuse concerns linked to using a fixed-rate worldwide clock.

Artificial Intelligence and Evolutionary Algorithms in Engineering Systems: Proceedings of ICAEES 2014, Volume 1

The booklet is a suite of fine quality peer-reviewed study papers provided in court cases of foreign convention on synthetic Intelligence and Evolutionary Algorithms in Engineering structures (ICAEES 2014) held at Noorul Islam Centre for larger schooling, Kumaracoil, India. those learn papers give you the most recent advancements within the huge sector of use of synthetic intelligence and evolutionary algorithms in engineering platforms.

Extra resources for Kernel Learning Algorithms for Face Recognition

Sample text

He X, Niyogi P (2003) Locality preserving projections. In: Proceedings of conference on advances in neural information processing systems, pp 585–591 55. Manglem Singh KH (2011) Fuzzy rule based median filter for gray-scale images. J Inf Hiding Multimedia Sig Process 2(2):108–122 56. Zheng Z, Yang F, Tan W, Jia J, Yang J (2007) Gabor feature-based face recognition using supervised locality preserving projection. Sig Process 87(10):2473–2483 57. Zhu L, Zhu S (2007) Face recognition based on orthogonal discriminant locality preserving projections.

Pattern Recogn Lett 24:215–225 103. Joachims T (1998) Text categorization with support vector machines. In: Proceedings of European conferences on machine learning, pp 789–794 References 17 104. Leopold E, Kindermann J (2002) Text categorization with support vector machines. How to represent texts in input space? Machine Learning 46:423–444 105. Pearson WR, Wood T, Zhang Z, Miller W (1997) Comparison of DNA sequences with protein sequences. Genomics 46(1):24–36 106. Hua S, Sun Z (2001) Support vector machine approach for protein subcellular localization prediction.

IEEE Trans Syst Man Cybern 35(3):489–542 91. Zhang B-L, Zhang H, Sam Ge S (2004) Face recognition by applying wavelet subband representation and kernel associative memory. IEEE Trans Neural Networks 15(1):166–177 92. Zhu Z, He H, Starzyk JA, Tseng C (2007) Self-organizing learning array and its application to economic and financial problems. Inf Sci 177(5):1180–1192 93. Mulier F, Cherkassky V (1995) Self-organization as an iterative kernel smoothing process. Neural Comput 7:1165–1177 94. Ritter H, Martinetz T, Schulten K (1992) Neural computation and self-organizing maps: an introduction.

Download PDF sample

Rated 4.54 of 5 – based on 13 votes