Unsupervised Two-Stage TR-PCANet Deep Network For Unconstrained Ear Identification

Aicha Korichi, Meriem Korichi, Maarouf Korichi, Oussama Aiadi
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Abstract

The main aim of this paper is to present a novel speedy, lightweight, and efficient two-stage TR-PCANet model for features extraction. TR-PCANet uses PCA to learn the filters of the convolutional layers. In order to generate powerful filters, we propose to augment the data used for the training. The Filter Learning stage is followed by binary Hashing and Blockwise Histogramming stages. At the end of the network, we propose normalizing the histograms using Tied Rank normalization. Moreover, as it could positively affect the identification rates, we suggest reshaping all images using CNN as a preprocessing stage. To further enhance the recognition yields, we combine TR-PCANet with TR-ICANet and DCTNet. We conduct extensive experiments on the public AWE dataset. The obtained results have proven the efficiency of the proposed network against TR-ICANet and DCTNet as well as the relevant state-of-the-art methods including deep learning-based ones.
无约束耳朵识别的无监督两阶段TR-PCANet深度网络
本文的主要目的是提出一种新的快速、轻量级、高效的两阶段TR-PCANet特征提取模型。TR-PCANet使用PCA来学习卷积层的滤波器。为了生成强大的过滤器,我们建议增加用于训练的数据。过滤器学习阶段之后是二进制哈希和块直方图阶段。在网络的最后,我们提出使用并列秩归一化对直方图进行归一化。此外,由于它会积极影响识别率,我们建议使用CNN作为预处理阶段对所有图像进行重塑。为了进一步提高识别率,我们将TR-PCANet与TR-ICANet和DCTNet相结合。我们在公共AWE数据集上进行了广泛的实验。所得结果证明了所提出的网络对TR-ICANet和DCTNet以及相关的最新方法(包括基于深度学习的方法)的有效性。
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