利用大型图像数据库对与场景内容相关的图像特征检测器进行性能表征

Bruno Ferrarini, Shoaib Ehsan, N. Rehman, K. Mcdonald-Maier
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引用次数: 1

摘要

为特定应用选择最合适的局部不变特征检测器使得评估特征检测器的任务成为视觉研究中的一个关键问题。最先进的图像特征检测器在所有类型的图像变换下都不能令人满意地工作。虽然文献提供了各种比较工作,侧重于几种图像变换类型下图像特征检测器的性能评价,但到目前为止,场景内容对局部特征检测器性能的影响很少受到关注。本文旨在通过一个确定场景类型的新框架来弥合这一差距,该框架在可重复性率方面最大化和最小化检测器的性能。几个最先进的特征检测器已经被评估,利用12936张图像的大型数据库,这些图像是通过对从现实世界捕获的539个场景应用均匀的光线和模糊变化而生成的。所获得的结果为特征检测器的行为提供了新的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance characterization of image feature detectors in relation to the scene content utilizing a large image database
Selecting the most suitable local invariant feature detector for a particular application has rendered the task of evaluating feature detectors a critical issue in vision research. No state-of-the-art image feature detector works satisfactorily under all types of image transformations. Although the literature offers a variety of comparison works focusing on performance evaluation of image feature detectors under several types of image transformation, the influence of the scene content on the performance of local feature detectors has received little attention so far. This paper aims to bridge this gap with a new framework for determining the type of scenes, which maximize and minimize the performance of detectors in terms of repeatability rate. Several state-of-the-art feature detectors have been assessed utilizing a large database of 12936 images generated by applying uniform light and blur changes to 539 scenes captured from the real world. The results obtained provide new insights into the behaviour of feature detectors.
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