English

Non-linear Dimensionality Regularizer for Solving Inverse Problems

Computer Vision and Pattern Recognition 2016-03-17 v1

Abstract

Consider an ill-posed inverse problem of estimating causal factors from observations, one of which is known to lie near some (un- known) low-dimensional, non-linear manifold expressed by a predefined Mercer-kernel. Solving this problem requires simultaneous estimation of these factors and learning the low-dimensional representation for them. In this work, we introduce a novel non-linear dimensionality regulariza- tion technique for solving such problems without pre-training. We re-formulate Kernel-PCA as an energy minimization problem in which low dimensionality constraints are introduced as regularization terms in the energy. To the best of our knowledge, ours is the first at- tempt to create a dimensionality regularizer in the KPCA framework. Our approach relies on robustly penalizing the rank of the recovered fac- tors directly in the implicit feature space to create their low-dimensional approximations in closed form. Our approach performs robust KPCA in the presence of missing data and noise. We demonstrate state-of-the-art results on predicting missing entries in the standard oil flow dataset. Additionally, we evaluate our method on the challenging problem of Non-Rigid Structure from Motion and our approach delivers promising results on CMU mocap dataset despite the presence of significant occlusions and noise.

Keywords

Cite

@article{arxiv.1603.05015,
  title  = {Non-linear Dimensionality Regularizer for Solving Inverse Problems},
  author = {Ravi Garg and Anders Eriksson and Ian Reid},
  journal= {arXiv preprint arXiv:1603.05015},
  year   = {2016}
}
R2 v1 2026-06-22T13:12:06.719Z