Sparse PCA. Extracting multi-scale structure from data

C. Chennubhotla, A. Jepson
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引用次数: 49

Abstract

Sparse Principal Component Analysis (S-PCA) is a novel framework for learning a linear, orthonormal basis representation for structure intrinsic to an ensemble of images. S-PCA is based on the discovery that natural images exhibit structure in a low-dimensional subspace in a sparse, scale-dependent form. The S-PCA basis optimizes an objective function which trades off correlations among output coefficients for sparsity in the description of basis vector elements. This objective function is minimized by a simple, robust and highly scalable adaptation algorithm, consisting of successive planar rotations of pairs of basis vectors. The formulation of S-PCA is novel in that multi-scale representations emerge for a variety of ensembles including face images, images from outdoor scenes and a database of optical flow vectors representing a motion class.
稀疏主成分分析。从数据中提取多尺度结构
稀疏主成分分析(S-PCA)是一种新的框架,用于学习图像集合固有结构的线性、正交基表示。S-PCA是基于自然图像以稀疏的、尺度相关的形式在低维子空间中表现出结构的发现。S-PCA基优化了一个目标函数,该函数在基向量元素的描述中权衡了输出系数之间的相关性和稀疏性。该目标函数通过一种简单、鲁棒和高度可扩展的自适应算法最小化,该算法由成对基向量的连续平面旋转组成。S-PCA的公式是新颖的,因为多尺度表示出现在各种集合中,包括人脸图像,来自户外场景的图像和代表运动类的光流矢量数据库。
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