首页> 外文学位 >Depth restoration from defocused images: A surface evolution approach.
【24h】

Depth restoration from defocused images: A surface evolution approach.

机译:从散焦图像中进行深度还原:一种表面演化方法。

获取原文
获取原文并翻译 | 示例

摘要

Defocused images are a rich source of depth information. Several methods to extract depth from defocused images, generally known as "depth-from-defocus" (DFD) techniques, have been proposed recently. A new approach to DFD, that results in high-resolution depth-maps, is presented in this dissertation. In this method, a defocused image is viewed as the outcome of a combinatorial process, where a set of three-dimensional voxels, some in-focus and the others out-of-focus, are mapped via a two-dimensional projection to an image (pixel) plane. The restoration of depth information is realized by formulating the DFD process as a combinatorial optimization problem. A priori knowledge of the geometrical and optical properties of the object, such as finite size, smoothness, opacity, and coarse depth, is used to form constraints that reduce the ambiguity of the solution. Several constrained optimization techniques could be adapted to solve the depth restoration problem. The methods considered in this thesis are simulated annealing, Kaczmarz's row-action projections, and linear programming. These methods have been applied to several test objects. The results obtained using a combination of the Kaczmarz and the simulated annealing algorithm are shown to yield the best performance. A segmentation scheme that enables an efficient parallel implementation of the algorithms is also presented. The significant results of this research include (1) a new framework, referred to as depth restoration, for the recovery of high-resolution depth information from defocused images; (2) the analysis of discretized defocused image formation; (3) a new algorithm for multilevel depth recovery via stochastic surface evolutions.
机译:离焦图像是深度信息的丰富来源。最近已经提出了几种从散焦图像中提取深度的方法,通常称为“散焦深度”(DFD)技术。本文提出了一种新的DFD方法,可以产生高分辨率的深度图。在此方法中,散焦图像被视为组合过程的结果,其中一组二维三维像素(一些处于焦点对准而其他未对准焦点)通过二维投影映射到图像(像素)平面。通过将DFD过程公式化为组合优化问题,可以实现深度信息的恢复。对物体的几何和光学特性的先验知识,例如有限的尺寸,平滑度,不透明度和粗略深度,被用来形成减少解决方案歧义性的约束。可以采用几种约束优化技术来解决深度恢复问题。本文考虑的方法是模拟退火,Kaczmarz行动作投影和线性规划。这些方法已应用于多个测试对象。结合使用Kaczmarz和模拟退火算法获得的结果显示出最佳性能。还提出了一种分割方案,该分割方案可实现算法的高效并行实现。这项研究的重要成果包括:(1)一种新的框架,称为深度还原,用于从散焦图像中恢复高分辨率的深度信息; (2)离散散焦图像形成分析; (3)一种通过随机表面演化进行多级深度恢复的新算法。

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