首页> 外文会议>IEEE Conference on Computer Vision and Pattern Recognition >High-frequency shape and albedo from shading using natural image statistics
【24h】

High-frequency shape and albedo from shading using natural image statistics

机译:使用自然图像统计,从阴影中的高频形状和反诉

获取原文

摘要

We relax the long-held and problematic assumption in shape-from-shading (SFS) that albedo must be uniform or known, and address the problem of “shape and albedo from shading” (SAFS). Using models normally reserved for natural image statistics, we impose “naturalness” priors over the albedo and shape of a scene, which allows us to simultaneously recover the most likely albedo and shape that explain a single image. A simplification of our algorithm solves classic SFS, and our SAFS algorithm can solve the intrinsic image decomposition problem, as it solves a superset of that problem. We present results for SAFS, SFS, and intrinsic image decomposition on real lunar imagery from the Apollo missions, on our own pseudo-synthetic lunar dataset, and on a subset of the MIT Intrinsic Images dataset[15]. Our one unified technique appears to outperform the previous best individual algorithms for all three tasks. Our technique allows a coarse observation of shape (from a laser rangefinder or a stereo algorithm, etc) to be incorporated a priori. We demonstrate that even a small amount of low-frequency information dramatically improves performance, and motivate the usage of shading for high-frequency shape (and albedo) recovery.
机译:我们在形状 - 从阴影(SFS)中的长期和有问题的假设放松,即反玻璃必须均匀或已知,并解决“来自阴影的形状和反玻璃”(SAF)的问题。使用通常保留用于自然图像统计的模型,我们将“自然”前置施加在Albedo和现场的形状上,这使我们可以同时恢复最有可能的Albedo和形状,解释单个图像。简化我们的算法求解经典SFS,我们的SAFS算法可以解决内在图像分解问题,因为它解决了该问题的超集。我们在我们自己的伪合成月球数据集中以及在MIT内在图像数据集[15]的MIT内在图像的子集中,对来自Apollo任务的真实月球图像上的Safs,SFS和Intrine图像分解的结果。我们的一个统一技术似乎以所有三个任务为先前的最佳单个算法表达。我们的技术允许粗略地观察形状(来自激光测距仪或立体声算法等)并结合先验。我们证明即使是少量的低频信息也大大提高了性能,并且激励了用于高频形状(和反玻璃)恢复的阴影的使用。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号