Title :
Subspace Learning from Image Gradient Orientations
Author :
Tzimiropoulos, Georgios ; Zafeiriou, Stefanos ; Pantic, Maja
Author_Institution :
Sch. of Comput. Sci., Univ. of Lincoln, Lincoln, UK
Abstract :
We introduce the notion of subspace learning from image gradient orientations for appearance-based object recognition. As image data are typically noisy and noise is substantially different from Gaussian, traditional subspace learning from pixel intensities very often fails to estimate reliably the low-dimensional subspace of a given data population. We show that replacing pixel intensities with gradient orientations and the ℓ2 norm with a cosine-based distance measure offers, to some extend, a remedy to this problem. Within this framework, which we coin Image Gradient Orientations (IGO) subspace learning, we first formulate and study the properties of Principal Component Analysis of image gradient orientations (IGO-PCA). We then show its connection to previously proposed robust PCA techniques both theoretically and experimentally. Finally, we derive a number of other popular subspace learning techniques, namely, Linear Discriminant Analysis (LDA), Locally Linear Embedding (LLE), and Laplacian Eigenmaps (LE). Experimental results show that our algorithms significantly outperform popular methods such as Gabor features and Local Binary Patterns and achieve state-of-the-art performance for difficult problems such as illumination and occlusion-robust face recognition. In addition to this, the proposed IGO-methods require the eigendecomposition of simple covariance matrices and are as computationally efficient as their corresponding ℓ2 norm intensity-based counterparts. Matlab code for the methods presented in this paper can be found at http://ibug.doc.ic.ac.uk/resources.
Keywords :
covariance matrices; eigenvalues and eigenfunctions; face recognition; feature extraction; gradient methods; learning (artificial intelligence); object recognition; principal component analysis; ℓ2 norm intensity-based counterparts; Gabor features; IGO-PCA; LDA; LE; LLE; Laplacian eigenmaps; Matlab code; appearance-based object recognition; cosine-based distance measure; covariance matrices; data population; eigendecomposition; image gradient orientations; linear discriminant analysis; local binary patterns; locally linear embedding; occlusion-robust face recognition; pixel intensities; principal component analysis; subspace learning; Correlation; Face recognition; Generators; Learning systems; Nonlinear systems; Principal component analysis; Robustness; Image gradient orientations; discriminant analysis; face recognition; nonlinear dimensionality reduction; robust principal component analysis;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2012.40