字符串特征:测地线扫描检测和准不变时间序列描述

Gutemberg Guerra-Filho
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引用次数: 0

摘要

我们提出了新的特征,表示为字符串特征,在图像平面上用曲线表示。弦的特征利用了它在曲线上各个点的局域性和在考虑整个曲线时的全局性。本文的贡献有:(1)基于空间注意和眼动控制的灵感,采用一种名为测地线扫描的新技术,提出了一种特征检测方法,该方法产生了显著性度量;(2)基于准不变几何度量将字符串特征描述为一组时间序列;(3)一种字符串特征匹配算法,该算法允许在描述符中对每个时间序列进行独立的部分匹配。特征检测步骤的定量性能是根据精度、紧凑性和可重复性来衡量的。重复率达到70%,仅检测到3%的像素。用一组80条合成二维曲线对字符串特征匹配过程进行了测试。实验结果表明,平均匹配正确率为72.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
String Features: Geodesic Sweeping Detection and Quasi-invariant Time-Series Description
We propose novel features, denoted as string features, which are represented by curves in the image plane. The string features take advantage of its locality at individual points of the curve and of its global aspect when considering the whole curve. The contributions of this paper are: (1) a feature detection procedure which produces a saliency measure by applying a novel technique, named geodesic sweeping, inspired by spatial attention and eye movement control, (2) the description of string features as a set of time-series based on quasi-invariant geometric measures, and (3) a matching algorithm for string features which allows partial matching independently for each time-series in the descriptor. The quantitative performance of the feature detection step is measured with regards to precision, compactness, and repeatability. The repeatability rate reaches 70% with only 3% of the pixels being detected. The string feature matching procedure is tested with a set of 80 synthetic 2D curves. The experimental results show an average ratio of 72.4% in correct matching.
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