A novel approach for ear recognition: learning Mahalanobis distance features from deep CNNs
Machine Vision and Applications • 2021
معلومات البحث
المؤلفون
Ibrahim Omara, Ahmed Hagag, Guangzhi Ma, Fathi E Abd El-Samie, Enmin Song
الكلمات المفتاحية
Not Available
المجلة العلمية
Machine Vision and Applications
الناشر
Springer Berlin Heidelberg
المجلد
32
العدد
Not Available
الصفحات
1-14
publication.type
International
رابط البحث
Open Link
المواد المرفقة
Not Available
الملخص
Recently, deep convolutional neural networks (CNNs) have been used for ear recognition with the increasing and available ear image databases. However, most known ear recognition methods may be affected by selecting and weighting features; this is always a challenging issue in ear recognition and other pattern recognition applications. Metric learning can address this issue by using an accurate and efficient metric distance called Mahalanobis distance. Therefore, this paper presents a novel approach for ear recognition problems based on a learning Mahalanobis distance metric on deep CNN features. In detail, firstly, various deep features are extracted by adopting VGG and ResNet pre-trained models. Secondly, the discriminant correlation analysis is exploited to eliminate the dimensionality problem. Thirdly, the Mahalanobis distance is learned based on LogDet divergence metric learning. Finally, K-nearest neighbor is used for ear recognition. The experiments are performed on four public ear databases: AWE, USTB II, AMI, and WPUT, and experimental results prove that the proposed approach outperforms the existing state-of-the-art ear recognition methods.
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