Local Feature Extraction from Salient Regions by Feature Map Transformation

Yerim Jung, Nur Suriza Syazwany, Sang-Chul Lee
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引用次数: 2

Abstract

Local feature matching is essential for many applications, such as localization and 3D reconstruction. However, it is challenging to match feature points accurately in various camera viewpoints and illumination conditions. In this paper, we propose a framework that robustly extracts and describes salient local features regardless of changing light and viewpoints. The framework suppresses illumination variations and encourages structural information to ignore the noise from light and to focus on edges. We classify the elements in the feature covariance matrix, an implicit feature map information, into two components. Our model extracts feature points from salient regions leading to reduced incorrect matches. In our experiments, the proposed method achieved higher accuracy than the state-of-the-art methods in the public dataset, such as HPatches, Aachen Day-Night, and ETH, which especially show highly variant viewpoints and illumination.
基于特征映射变换的显著区域局部特征提取
局部特征匹配在许多应用中是必不可少的,例如定位和3D重建。然而,在不同的摄像机视点和光照条件下准确匹配特征点是一个挑战。在本文中,我们提出了一个框架,无论光线和视点如何变化,都能鲁棒地提取和描述显著的局部特征。该框架抑制光照变化,并鼓励结构信息忽略光的噪声,并将重点放在边缘上。我们将隐式特征映射信息特征协方差矩阵中的元素分为两个分量。我们的模型从显著区域提取特征点,从而减少错误匹配。在我们的实验中,所提出的方法比公共数据集中最先进的方法(如HPatches, Aachen Day-Night和ETH)获得了更高的精度,特别是显示高度变化的视点和照明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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