Human action tracking design of neural network algorithm based on GA-PSO in physical training

In order to solve human action recognition algorithm in traditional physical training, the problem of some kind of action recognition without universality is usually solved emphatically, and a recognition system aimed at human action tracking in physical training is proposed. Firstly, local feature description of human action in physical training based on self-similarity matrix is constructed by using generalized self-similarity concept changed along with time and local feature extraction methods of optical flow field of spatio-temporal interest point; secondly, a new neural network training algorithm of particle swarm optimization (PSO) with self-adaptive genetic operator is proposed. Through probability control, at the same time of using PSO algorithm to optimize neural network, selection, intersection, variation and other genetic operation are implemented for optional particles adaptively to realize promotion of algorithm performance; simulation experiment indicates that proposed scheme can obviously improve algorithm efficiency of human action recognition and recognition accuracy in physical training.

[1]  Tony White,et al.  An Evolutionary Race: A Comparison of Genetic Algorithms and Particle Swarm Optimization for Training Neural Networks , 2004, IC-AI.

[2]  Kiyotaka Izumi,et al.  A particle-swarm-optimized fuzzy-neural network for voice-controlled robot systems , 2005, IEEE Transactions on Industrial Electronics.

[3]  Soteris A. Kalogirou,et al.  MPPT-based artificial intelligence techniques for photovoltaic systems and its implementation into field programmable gate array chips: Review of current status and future perspectives , 2014 .

[4]  William J Welsh,et al.  Micellar and structural stability of nanoscale amphiphilic polymers: Implications for anti-atherosclerotic bioactivity. , 2016, Biomaterials.

[5]  K. Uhrich,et al.  Designing polymers with sugar-based advantages for bioactive delivery applications. , 2015, Journal of controlled release : official journal of the Controlled Release Society.

[6]  Syuan-Yi Chen,et al.  Recurrent Functional-Link-Based Fuzzy Neural Network Controller With Improved Particle Swarm Optimization for a Linear Synchronous Motor Drive , 2009, IEEE Transactions on Magnetics.

[7]  Ramazan Coban Power level control of the TRIGA Mark-II research reactor using the multifeedback layer neural network and the particle swarm optimization , 2014 .

[8]  R. J. Kuo,et al.  Integration of particle swarm optimization and genetic algorithm for dynamic clustering , 2012, Inf. Sci..

[9]  K. Uhrich,et al.  Amphiphilic Macromolecule Self-Assembled Monolayers Suppress Smooth Muscle Cell Proliferation. , 2015, Bioconjugate chemistry.

[10]  Bdcn Prasadl,et al.  AN APPROACH TO DEVELOP EXPERT SYSTEMS IN MEDICAL DIAGNOSIS USING MACHINE LEARNING ALGORITHMS (A STHMA ) AND A PERFORMANCE STUDY , 2011 .

[11]  Noradin Ghadimi,et al.  A new hybrid algorithm based on optimal fuzzy controller in multimachine power system , 2015, Complex..

[12]  Ling Shao,et al.  Learning Spatio-Temporal Representations for Action Recognition: A Genetic Programming Approach , 2016, IEEE Transactions on Cybernetics.

[13]  K. Uhrich,et al.  Synthesis and characterization of PEGylated bolaamphiphiles with enhanced retention in liposomes. , 2016, Journal of colloid and interface science.