earticle

논문검색

Surface Reconstruction from Gradient Fields Using Box-Spline Kernel

초록

영어

Surface reconstruction from gradient fields is of wide application in computer vision fields. Traditional methods usually enforce surface integrability in discrete domain, while current kernel approach suffers the problems of parameter choice. In this paper, we propose a novel method, i.e. kernel gradient regression, to reliably reconstruct surfaces. The box-spline kernel, instead of the common Gaussian kernel, is deployed in surface reconstruction due to its compact support and parameter robustness. To our knowledge, this is the first time to prove the special box-spline function as a new kind of positive definite spline kernel. The target surface is recovered under least-squares sense from the gradient fields, by converting the reconstruction problem to its kernel representation. Experimental results show that our proposed method outperform available approaches in preserving sharp edges and fine details, without prior knowledge of depth discontinuity.

목차

Abstract
 1. Introduction
 2. Related Work
  2.1. Surface Reconstruction
  2.2. Box-spline
 3. Surface Reconstruction by Kernel Method
  3.1. Surface Reconstruction
  3.2. Kernel Gradient Regression
 4. Box-spline Kernel
  4.1. Definition and Properties
  4.2. Proof of Kernel
  4.3. Kernel Comparison
 5. Experimental Results
  5.1. Synthetic Data
  5.2. Simulated Photometric Stereo
 6. Conclusions
 References

저자정보

  • Guodong Wang School of Computer Science, Northwestern Polytechnical University, Xi’an, China, AVIC Computing Technique Research Institute, Xi’an, China
  • Jingbao Yang AVIC Computing Technique Research Institute, Xi’an, China
  • Yue Cheng AVIC Computing Technique Research Institute, Xi’an, China

참고문헌

자료제공 : 네이버학술정보

    함께 이용한 논문

      ※ 원문제공기관과의 협약기간이 종료되어 열람이 제한될 수 있습니다.

      0개의 논문이 장바구니에 담겼습니다.