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ICANet: a simple cascade linear convolution network for face recognition

机译:ICANET:用于面部识别的简单级联线性卷积网络

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Abstract Recently, deep convolutional networks have demonstrated their capability of improving the discriminative power compared with other machine learning method, but its feature learning mechanism is not very clear. In this paper, we present a cascaded linear convolutional network, based on independent component analysis (ICA) filters, named ICANet. ICANet consists of three parts: a convolutional layer, a binary hash, and a block histogram. It has the following advantages over other methods: (1) the network structure is simple and computationally efficient, (2) the ICA filter is trained with an unsupervised algorithm using unlabeled samples, which is practical, and (3) compared to deep learning models, each layer parameter in ICANet can be easily trained. Thus, ICANet can be used as a benchmark for the application of a deep learning framework for large-scale image classification. Finally, we test two public databases, AR and FERET, showing that ICANet performs well in facial recognition tasks.
机译:摘要最近,与其他机器学习方法相比,深度卷积网络已经证明了改善歧视功率的能力,但其特征学习机制并不是很清楚。在本文中,我们提出了一种基于独立分量分析(ICA)滤波器的级联线性卷积网络,命名为ICANet。 Icanet由三部分组成:卷积层,二进制哈希和块直方图。它与其他方法有以下优点:(1)网络结构简单且计算高效,(2)使用未标记的样本的无监督算法培训(2),与深度学习模型相比,ICA滤波器用无标签的样本培训。(3)与深度学习模型相比,iCanet中的每个图层参数都可以容易地培训。因此,ICANET可以用作应用大型图像分类的深度学习框架的基准。最后,我们测试了两个公共数据库,AR和FERET,显示ICANET在面部识别任务中表现良好。

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