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Depth Recovery of Complex Surfaces from Texture-less Pairs of Stereo Images

机译:从无纹理的立体图像对复杂表面的深度恢复

摘要

In this paper, a novel framework is presented to recover the 3D shape information of a complex surface using its texture-less stereo images. First a linear and generalized Lambertian model is proposed to obtain the depth information by shape from shading (SfS) using an image from stereo pair. Then this depth data is corrected by integrating scale invariant features (SIFT) indexes. These SIFT indexes are defined by means of disparity between the matching invariant features in rectified stereo images. The integration process is based on correcting the 3D visible surfaces obtained from SfS using these SIFT indexes. The SIFT indexes based improvement of depth values which are obtained from generalized Lambertian reflectance model is performed by a feed-forward neural network. The experiments are performed to demonstrate the usability and accuracy of the proposed framework.
机译:在本文中,提出了一种新颖的框架,可使用其无纹理的立体图像恢复复杂表面的3D形状信息。首先,提出了一个线性和广义的Lambertian模型,以使用立体对中的图像通过阴影(SfS)形状获得深度信息。然后,通过整合尺度不变特征(SIFT)索引来校正此深度数据。这些SIFT索引是通过校正后的立体图像中匹配的不变特征之间的差异来定义的。集成过程基于使用这些SIFT索引校正从SfS获得的3D可见表面。通过前馈神经网络执行从广义朗伯反射模型获得的基于SIFT指数的深度值改进。进行实验以证明所提出框架的可用性和准确性。

著录项

  • 作者

    Kumar S.;

  • 作者单位
  • 年度 2009
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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