scholarly journals Face Recognition System Using Deep Belief Network and Particle Swarm Optimization

2022 ◽  
Vol 33 (1) ◽  
pp. 317-329
Author(s):  
K. Babu ◽  
C. Kumar ◽  
C. Kannaiyaraju
2013 ◽  
Vol 284-287 ◽  
pp. 2950-2954
Author(s):  
Ching Tang Hsieh ◽  
Chia Shing Hu ◽  
Meng Shian Shih

Conventional 2D face recognition methods often struggle when a subject's head is turned even slightly to the side. In this study, a face recognition system based on 3D head modeling that is able to tolerate facial rotation angles was constructed by leveraging the Open source graphic library (OpenGL) framework. To minimize the extensive angle searching time that often occurs in conventional 3D modeling, Particle Swarm Optimization (PSO) was used to determine the correct facial angle in 3D. This reduced the angle computation time to 6 seconds, which is significantly faster than other methods. Experimental results showed that successful ID recognition can be achieved with a high recognition rate of 90%.


2020 ◽  
Vol 2020 ◽  
pp. 1-10
Author(s):  
Jianjian Yang ◽  
Boshen Chang ◽  
Xiaolin Wang ◽  
Qiang Zhang ◽  
Chao Wang ◽  
...  

Due to the problem of poor recognition of data with deep fault attribute in the case of traditional superficial network under semisupervised and weak labeling, a deep belief network (DBN) was proposed for deep fault detection. Due to the problems of deep belief network (DBN) network structure and training parameter selection, a stochastic adaptive particle swarm optimization (RSAPSO) algorithm was proposed in this study to optimize the DBN. A stochastic criterion was proposed in this method to make the particles jump out of the original position search with a certain probability and reduce the probability of falling into the local optimum. The RSAPSO-DBN method used sample data to train the DBN and used the final diagnostic error rate to construct the fitness value function of the particle swarm algorithm. By comparing the minimum fitness value of each particle to determine the advantages and disadvantages of the model, the corresponding minimum fitness value was selected. Using the number of network nodes, learning rate, and momentum parameters, the optimal DBN classifier was generated for fault diagnosis. Finally, the validity of the method was verified by bearing data from Case Western Reserve University in the United States and data collected in the laboratory. Comparing BP (BP neural network), support vector machine, and heterogeneous particle swarm optimization DBN methods, the proposed method demonstrated the highest recognition rates of 87.75% and 93.75%. This proves that the proposed method possesses universality in fault diagnosis and provides new ideas for data identification with different fault depth attributes.


Author(s):  
Rayaan Grewal

In this paper an algorithm to solve the problem of automatic face recognition is presented. The novelty of the algorithm is the ability to combine the principal component analysis (PCA) with Modified Particle Swarm Optimization (MPSO) to improve the execution time and to obtain better face recognition results. The efficiency of face recognition system is imp measure the similarity of an input face compared with a database of faces. The use of the fitness function helps to obtain more accurate results in a faster way. The results obtained are excellent even when the system w A comparison of the results obtained with the algorithm without MPSO versus the algorithm using MPSO is also presented. The algorithm is also implemented on the colored images of the human faces. Keywords: Particle Swarm Optimization, Face Recognition, Eigenfaces, Evolutionary Computer Vision.


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