图像特征提取的二维函数主成分分析

Two-Dimensional Functional Principal Component Analysis for Image Feature Extraction

Journal of Computational and Graphical Statistics · 2022
被引 20 · 同刊同年前 9%
ABS 3

中文导读

提出一种二维函数主成分分析方法,通过张量积B样条直接估计最优主成分,避免传统方法估计四维协方差函数的高计算成本,适用于图像降维和特征提取,并在阿尔茨海默病脑图像和手写数字图像上验证了效果。

Abstract

Methodologies for functional principal component analysis are well established in the one-dimensional setting. However, for two-dimensional surfaces, for example, images, conducting functional principal component analysis is complicated and challenging, because the conventional eigendecomposition approach would require the estimation of a four-dimensional covariance function, which may incur high cost in terms of time and machine memory. To circumvent such computational difficulties, we propose a novel two-dimensional functional principal component analysis for extracting functional principal components and achieving dimensionality reduction for images. Different from the conventional eigendecomposition approach, our proposed method is based on the direct estimation of the optimal two-dimensional functional principal components via tensor product B-spline, which opens up a new avenue for estimating functional principal components. We present theoretical results that prove the consistency of the proposed approach. Our method is illustrated by analyzing brain images of subjects with the Alzheimer’s Disease and the handwritten digits images. The finite sample performance of our method is further assessed with some simulation studies. Supplementary materials for this article are available online.

图像处理降维函数数据分析特征提取机器学习