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- W4292264495 abstract "This paper explores ear biometrics using a mixture of feature extraction techniques and classifies this feature vector using deep learning with convolutional neural network. This exploration of ear biometrics uses images from 2D facial profiles and facial images. The investigated feature techniques are Zernike Moments, local binary pattern, Gabor filter, and Haralick texture moments. The normalised feature vector is used to examine whether deep learning using convolutional neural network is better at identifying the ear than other commonly used machine learning techniques. The widely used machine learning techniques that were used to compare them are decision tree, naïve Bayes, K-nearest neighbors (KNN), and support vector machine (SVM). This paper proved that using a bag of feature techniques and the classification technique of deep learning using convolutional neural network was better than standard machine learning techniques. The result achieved by the deep learning using convolutional neural network was 92.00% average ear identification rate for both left and right ears." @default.
- W4292264495 created "2022-08-19" @default.
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- W4292264495 date "2022-08-17" @default.
- W4292264495 modified "2023-09-30" @default.
- W4292264495 title "Ear Biometrics Using Deep Learning: A Survey" @default.
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- W4292264495 doi "https://doi.org/10.1155/2022/9692690" @default.
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