TY - JOUR
T1 - Genetic-Algorithm-based Local Binary Convolutional Neural Network for Gender Recognition
AU - Lin, Chun Hui
AU - Lin, Cheng Jian
AU - Wang, Shyh Hau
N1 - Funding Information:
The authors would like to thank the Ministry of Science and Technology of the Republic of China, Taiwan, for financially supporting this research under Contract No. MOST 109-2221-E-167-027.
Publisher Copyright:
© 2020 M Y U Scientific Publishing Division. All rights reserved.
PY - 2020
Y1 - 2020
N2 - At present, the main focus in the development of convolutional neural networks (CNNs) is deepening the network model to improve accuracy. However, this may increase the numbers of parameters and calculations in the network architecture. When the network model is applied to mobile devices and embedded systems, the storage capacity, computing performance, and memory will become major limitations. A local binary convolutional neural network (LBCNN) has been proposed to reduce the numbers of parameters and calculations. In the LBCNN, the convolutional layer of the CNN is replaced by a local binary convolution (LBC) module. In the LBC module, there is a pre-initialized fixed parametric filter layer. Since the parameters of the filter are generated in a random manner, the result is different each time and therefore unstable. Therefore, to provide a stable and efficient recognition technique for image sensors, we propose a genetic-Algorithm-based local binary convolutional neural network (GA-LBCNN) for gender recognition in this study. The genetic algorithm (GA) is used to search for the best filter parameters of the LBCNN. LeNet is adopted as the basic model architecture, and two datasets acquired from image sensors, the CIA and MORPH datasets, are used to perform face gender classification. According to the evaluation results, LBC successfully reduces the numbers of parameters and calculations. Experimental results show that the classification accuracy of the proposed GA-LBCNN reaches 88.8 and 98.2% for the CIA and MORPH datasets, respectively. Compared with the conventional LBCNN, the classification accuracy of the proposed GALBCNN is increased by 7.2 and 1.1%, respectively, for the two datasets.
AB - At present, the main focus in the development of convolutional neural networks (CNNs) is deepening the network model to improve accuracy. However, this may increase the numbers of parameters and calculations in the network architecture. When the network model is applied to mobile devices and embedded systems, the storage capacity, computing performance, and memory will become major limitations. A local binary convolutional neural network (LBCNN) has been proposed to reduce the numbers of parameters and calculations. In the LBCNN, the convolutional layer of the CNN is replaced by a local binary convolution (LBC) module. In the LBC module, there is a pre-initialized fixed parametric filter layer. Since the parameters of the filter are generated in a random manner, the result is different each time and therefore unstable. Therefore, to provide a stable and efficient recognition technique for image sensors, we propose a genetic-Algorithm-based local binary convolutional neural network (GA-LBCNN) for gender recognition in this study. The genetic algorithm (GA) is used to search for the best filter parameters of the LBCNN. LeNet is adopted as the basic model architecture, and two datasets acquired from image sensors, the CIA and MORPH datasets, are used to perform face gender classification. According to the evaluation results, LBC successfully reduces the numbers of parameters and calculations. Experimental results show that the classification accuracy of the proposed GA-LBCNN reaches 88.8 and 98.2% for the CIA and MORPH datasets, respectively. Compared with the conventional LBCNN, the classification accuracy of the proposed GALBCNN is increased by 7.2 and 1.1%, respectively, for the two datasets.
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U2 - 10.18494/SAM.2021.3268
DO - 10.18494/SAM.2021.3268
M3 - Article
AN - SCOPUS:85108221495
SN - 0914-4935
VL - 33
SP - 1917
EP - 1927
JO - Sensors and Materials
JF - Sensors and Materials
IS - 6
ER -