基于稀疏自编码器的空间金字塔人脸特征学习

Xiao Ma, Jufu Feng
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引用次数: 0

摘要

空间金字塔特征学习方法,如空间金字塔匹配(SPM)和基于稀疏编码的空间金字塔匹配(ScSPM),在图像分类中取得了显著的效果。然而,这些方法大多仍然基于手工设计的特征,如SIFT、HOG和LBP,这限制了数据的表示。本文提出了一种基于稀疏自编码器的空间金字塔匹配(SaSPM)方法,该方法利用无监督稀疏自编码器网络进行特征学习,构建空间金字塔结构。SaSPM有三个主要贡献:首先,SaSPM是一种直接从原始数据中学习特征的学习方法。其次,SaSPM是一种全前馈特征提取方法,与ScSPM方法相比,该方法对在线系统的特征提取效率更高。第三,我们设计了补丁共享和补丁特定的asp - m模型,分别在对齐好的人脸图像上学习不同的局部特征。在各种具有挑战性的数据集上证明了SaSPM优于原始空间金字塔特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sparse autoencoder based spatial pyramid facial feature learning
The spatial pyramid feature learning methods, such as Spatial Pyramid Matching (SPM) and Sparse Coding based Spatial Pyramid Matching (ScSPM), have achieved significant performance in image categorization. While most of these methods are still based on manual-design features, such as SIFT, HOG and LBP, which limits the representation of data. In this paper, we propose a novel Sparse Autoencoder based Spatial Pyramid Matching (SaSPM) method, which exploits unsupervised sparse autoencoder network infeatures learning and then builds a spatial pyramid structure. There are three main contributions in SaSP-M: Firstly, SaSPM is a learning method directly learning features from original data. Secondly, SaSPM is a full feedforward method in feature extraction, which is more efficient for on-line systems comparing with ScSPM method. Thirdly, we design patch-shared and patch-specific SaSP-M models to learn different local features separatively on well-aligned face images. It is proven that SaSPM outperforms the original spatial pyramid features in varieties of challenging data sets.
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