Simultaneous Image Reconstruction and Feature Learning with 3D-CNNs for Image Set–Based Classification

Xinyu Zhang, Xiaocui Li, X.-Y. Jing, Li Cheng
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Abstract

Image set–based classification has attracted substantial research interest because of its broad applications. Recently, lots of methods based on feature learning or dictionary learning have been developed to solve this problem, and some of them have made gratifying achievements. However, most of them transform the image set into a 2D matrix or use 2D convolutional neural networks (CNNs) for feature learning, so the spatial and temporal information is missing. At the same time, these methods extract features from original images in which there may exist huge intra-class diversity. To explore a possible solution to these issues, we propose a simultaneous image reconstruction with deep learning and feature learning with 3D-CNNs (SIRFL) for image set classification. The proposed SIRFL approach consists of a deep image reconstruction network and a 3D-CNN-based feature learning network. The deep image reconstruction network is used to reduce the diversity of images from the same set, and the feature learning network can effectively retain spatial and temporal information by using 3D-CNNs. Extensive experimental results on five widely used datasets show that our SIRFL approach is a strong competitor for the state-of-the-art image set classification methods.
基于图像集分类的三维神经网络图像重建和特征学习
基于图像集的分类由于其广泛的应用而吸引了大量的研究兴趣。近年来,许多基于特征学习或字典学习的方法已经被开发出来解决这个问题,其中一些方法已经取得了可喜的成就。然而,他们大多将图像集转换为2D矩阵或使用2D卷积神经网络(CNNs)进行特征学习,因此缺少空间和时间信息。同时,这些方法从原始图像中提取可能存在巨大类内多样性的特征。为了探索这些问题的可能解决方案,我们提出了一种同时使用深度学习进行图像重建和使用3D细胞神经网络(SIRFL)进行特征学习的图像集分类方法。所提出的SIRFL方法由深度图像重建网络和基于3D CNN的特征学习网络组成。深度图像重建网络用于减少来自同一集合的图像的多样性,特征学习网络通过使用3D细胞神经网络可以有效地保留空间和时间信息。在五个广泛使用的数据集上的大量实验结果表明,我们的SIRFL方法是最先进的图像集分类方法的有力竞争对手。
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