首页> 外文学位 >Real-Time Localization of Planar Targets on Power-Constrained Devices A Journey into Stable Keypoint Detection, Fast Binary Descriptors and Virtual Viewpoint Generation.
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Real-Time Localization of Planar Targets on Power-Constrained Devices A Journey into Stable Keypoint Detection, Fast Binary Descriptors and Virtual Viewpoint Generation.

机译:功耗受限设备上平面目标的实时定位进入稳定的关键点检测,快速的二进制描述符和虚拟视点生成的旅程。

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摘要

In this thesis we present a method for detecting planar targets in real-time on powerconstrained, or low-powered, hand-held devices such as mobile phones. We adopt the feature recognition (also referred to as feature matching) approach and employ fast-to-compute local feature descriptors to establish point correspondences. To obtain a satisfactory localization accuracy, most local feature descriptors seek a transformation of the input intensity patch that is invariant to various geometric and photometric deformations. Generally, such transformations are computationally intensive, hence are not ideal for real-time applications on limited hardware platforms. On the other hand, descriptors which are fast to compute are typically limited in their ability to provide invariance to a vast range of deformations.;To address these shortcomings, we have developed a learning-based approach which can be applied to any local feature descriptor to increase the system's robustness to both affine and perspective deformations. The motivation behind applying a learning-based approach is to transfer as much of the computational burden (as possible) onto an offline training phase, allowing a reduction in cost during online matching. The approach comprises of identifying keypoints which remain stable under artificially induced perspective transformations, extracting the corresponding feature vectors, and finally aggregating the feature vectors of coincident keypoints to obtain the final descriptors. We strictly focus on objects which are planar, thus allowing us to synthesize images of the object in order to capture the appearance of keypoint patches under several perspectives.
机译:在本文中,我们提出了一种在功率受限或低功率的手持设备(例如手机)上实时检测平面目标的方法。我们采用特征识别(也称为特征匹配)方法,并采用快速计算的局部特征描述符来建立点对应关系。为了获得令人满意的定位精度,大多数局部特征描述符寻求输入强度斑块的变换,该变换对于各种几何和光度学变形是不变的。通常,此类转换需要大量计算,因此对于有限硬件平台上的实时应用而言并不理想。另一方面,快速计算的描述符通常在为大范围的变形提供不变性的能力方面受到限制。;为了解决这些缺点,我们开发了一种基于学习的方法,该方法可以应用于任何局部特征描述符以提高系统对仿射和透视变形的鲁棒性。应用基于学习的方法的动机是将尽可能多的计算负担(尽可能)转移到离线培训阶段,从而降低了在线匹配期间的成本。该方法包括识别在人工诱导的透视变换下保持稳定的关键点,提取相应的特征向量,最后汇总重合的关键点的特征向量以获得最终的描述符。我们严格关注平面物体,因此使我们能够合成物体图像,以便从多个角度捕获关键点补丁的外观。

著录项

  • 作者

    Akhoury, Sharat Saurabh.;

  • 作者单位

    University of Ottawa (Canada).;

  • 授予单位 University of Ottawa (Canada).;
  • 学科 Engineering Electronics and Electrical.
  • 学位 M.A.Sc.
  • 年度 2013
  • 页码 154 p.
  • 总页数 154
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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