Comparison of Backpropagation and Kohonen Self Organising Map (KSOM) Methods in Face Image Recognition

Lady Silk Moonlight, Fiqqih Faizah, Y. Suprapto, N. Pambudiyatno
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引用次数: 1

Abstract

Background: Human face is a biometric feature. Artificial Intelligence (AI) called Artificial Neural Network (ANN) can be used in recognising such a biometric feature. In ANN, the learning process is divided into two: supervised and unsupervised learning. In supervised learning, a common method used is Backpropagation, while in the unsupervised learning, a common one is Kohonen Self Organizing Map (KSOM). However, the application of Backpropagation and KSOM need to be adjusted to improve the performance.Objective: In this study, Backpropagation and KSOM algorithms are rewritten to suit face image recognition, applied and compared to determine the effectiveness of each algorithm in solving face image recognition.Methods: In this study, the methods used and compared in the case of face image recognition are Backpropagation dan Kohonen Self Organizing Map (KSOM) Artificial Neural Network (ANN).Results: The smallest False Acceptance Rate (FAR) value of Backpropagation is 28%, and KSOM is 36%, out of 50 unregistered face images tested. While the smallest False Rejection Rate (FRR) value of Backpropagation is 22%, and KSOM is 30%, out of 50 registered face images. The fastest time for the training process using the backpropagation method is 7.14 seconds, and the fastest time for recognition is 0.71 seconds. While the fastest time for the training process using the KSOM method is 5.35 seconds, and the fastest time for recognition is 0.50 seconds.Conclusion: Backpropagation method is better in recognising face images than KSOM method, but the training process and the recognition process by KSOM method are faster than Backpropagation method due to the hidden layers. Keywords: Artificial Neural Network (ANN), Backpropagation, Kohonen Self Organizing Map (KSOM), Supervised learning, Unsupervised learning 
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反向传播与Kohonen自组织映射(KSOM)方法在人脸图像识别中的比较
背景:人脸是一种生物特征。被称为人工神经网络(ANN)的人工智能(AI)可用于识别这种生物特征。在人工神经网络中,学习过程分为监督学习和无监督学习。在监督学习中,常用的方法是反向传播(Backpropagation),而在无监督学习中,常用的方法是Kohonen自组织映射(KSOM)。但是,为了提高性能,需要调整反向传播和KSOM的应用。目的:在本研究中,将反向传播和KSOM算法改写为适合人脸图像识别的算法,并进行应用和比较,以确定每种算法在解决人脸图像识别中的有效性。方法:在人脸图像识别的情况下,使用并比较了反向传播和Kohonen自组织映射(KSOM)人工神经网络(ANN)方法。结果:在50张未配准人脸图像中,反向传播的最小错误接受率(FAR)值为28%,KSOM值为36%。而在50张配准的人脸图像中,反向传播的最小错误拒绝率(FRR)为22%,KSOM为30%。反向传播方法的训练过程最快时间为7.14秒,识别过程最快时间为0.71秒。而KSOM方法训练过程的最快时间为5.35秒,识别的最快时间为0.50秒。结论:反向传播方法对人脸图像的识别效果优于KSOM方法,但由于存在隐藏层,KSOM方法的训练过程和识别过程都比反向传播方法快。关键词:人工神经网络,反向传播,Kohonen自组织映射(KSOM),监督学习,无监督学习
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