2021
DOI: 10.12928/telkomnika.v19i2.16572
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Earprint recognition using deep learning technique

Abstract: Earprint has interestingly been considered for recognition systems. It refers to the shape of ear, where each person has a unique shape of earprint. It is a strong biometric pattern and it can effectively be used for authentications. In this paper, an efficient deep learning (DL) model for earprint recognition is designed. This model is named the deep earprint learning (DEL). It is a deep network that carefully designed for segmented and normalized ear patterns. IIT Delhi ear database (IITDED) version 1.0 has … Show more

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Cited by 3 publications
(2 citation statements)
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“…These results refer that proposed technique outperform the compared methods, as well as it utilized techniques such as DWT & PSO to improve the efficiency of the proposed work. Table 6: the results of the comparison between the proposed method and some recent method Method R.R LBP/Laplacian filter method [36] 80% Deep earprint learning [37] 94% The method in [38] 97.36% Proposed method 99%…”
Section: Comparing the Proposed Methods With Some Recent Methodsmentioning
confidence: 99%
“…These results refer that proposed technique outperform the compared methods, as well as it utilized techniques such as DWT & PSO to improve the efficiency of the proposed work. Table 6: the results of the comparison between the proposed method and some recent method Method R.R LBP/Laplacian filter method [36] 80% Deep earprint learning [37] 94% The method in [38] 97.36% Proposed method 99%…”
Section: Comparing the Proposed Methods With Some Recent Methodsmentioning
confidence: 99%
“…The performance of this network is tested on AMI and IIT Delhi II datasets, where effect of varying the network parameters (e.g., learning rate and activation function) was studied. Similarly, Hamdany et al ( 2021 ) proposed a CNN architecture for ear recognition. Different back-propagation techniques, including Adaptive moment estimation (ADAM) and stochastic gradient descent with momentum (SGDM), were tested.…”
Section: Related Workmentioning
confidence: 99%