English

Recovering Geometric Information with Learned Texture Perturbations

Computer Vision and Pattern Recognition 2020-01-22 v1

Abstract

Regularization is used to avoid overfitting when training a neural network; unfortunately, this reduces the attainable level of detail hindering the ability to capture high-frequency information present in the training data. Even though various approaches may be used to re-introduce high-frequency detail, it typically does not match the training data and is often not time coherent. In the case of network inferred cloth, these sentiments manifest themselves via either a lack of detailed wrinkles or unnaturally appearing and/or time incoherent surrogate wrinkles. Thus, we propose a general strategy whereby high-frequency information is procedurally embedded into low-frequency data so that when the latter is smeared out by the network the former still retains its high-frequency detail. We illustrate this approach by learning texture coordinates which when smeared do not in turn smear out the high-frequency detail in the texture itself but merely smoothly distort it. Notably, we prescribe perturbed texture coordinates that are subsequently used to correct the over-smoothed appearance of inferred cloth, and correcting the appearance from multiple camera views naturally recovers lost geometric information.

Keywords

Cite

@article{arxiv.2001.07253,
  title  = {Recovering Geometric Information with Learned Texture Perturbations},
  author = {Jane Wu and Yongxu Jin and Zhenglin Geng and Hui Zhou and Ronald Fedkiw},
  journal= {arXiv preprint arXiv:2001.07253},
  year   = {2020}
}
R2 v1 2026-06-23T13:15:55.354Z