利用深度信息提高三维场景图像中关键点的匹配性能

K. Matusiak, P. Skulimowski, P. Strumiłło
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引用次数: 1

摘要

关键点检测是目标识别、自动导航、医学等应用领域中许多计算机视觉算法的基本步骤。然而,更高级的图像分析任务的成功实施,是以可靠地检测被称为关键点的特征图像局部区域为条件的。大量的关键点检测算法已经被提出和验证。这项工作的主要部分是致力于描述一个原始的关键点检测算法,该算法结合了从立体视觉相机或其他深度传感设备计算的深度信息。结果表明,过滤掉与上下文相关的关键点(例如位于目标边界上的关键点)可以提高关键点的匹配性能,这是目标识别任务的基础。通过将所提出的算法与广泛接受的SIFT关键点检测器算法进行比较,定量地证明了这种改进。我们的研究是由一个系统的发展,旨在帮助视障人士在空间感知和物体识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving matching performance of the keypoints in images of 3D scenes by using depth information
Keypoint detection is a basic step in many computer vision algorithms aimed at recognition of objects, automatic navigation, medicine and other application fields. Successful implementation of higher level image analysis tasks, however, is conditioned by reliable detection of characteristic image local regions termed keypoints. A large number of keypoint detection algorithms has been proposed and verified. The main part of this work is devoted to description of an original keypoint detection algorithm that incorporates depth information computed from stereovision cameras or other depth sensing devices. It was shown that filtering out keypoints that are context dependent, e.g. located on object boundaries can improve the matching performance of the keypoints which is the basis for object recognition tasks. This improvement was shown quantitatively by comparing the proposed algorithm to the widely accepted SIFT keypoint detector algorithm. Our study is motivated by a development of a system aimed at aiding the visually impaired in space perception and object identification.
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