论文标题

稀疏基于光流的线路特征跟踪

Sparse Optical Flow-Based Line Feature Tracking

论文作者

Fu, Qiang, Yu, Hongshan, Ali, Islam, Zhang, Hong

论文摘要

在本文中,我们提出了一种新型的稀疏光流(SOF)基于相机姿势估计问题的线路特征跟踪方法。该方法的灵感来自基于点的SOF算法,并基于观察结果开发,即时变图像序列中的两个相邻图像满足亮度不变。基于此观察结果,我们重新定义了行功能跟踪的目标:跟踪线功能的两个端点,而不是基于灰色值匹配而不是描述符匹配的整个行。为了实现此目标,提出了有效的两个端点跟踪(TET)方法:首先,描述具有两个端点的给定线路。接下来,通过最小化像素级灰度残留函数来跟踪两个基于SOF的端点,以获得两个新的跟踪端点。最后,将两个跟踪的端点连接以生成新的线路功能。在给定和新线路之间建立了对应关系。与当前基于描述符的方法相比,我们的TET方法不需要重复计算描述符,并反复检测线路功能。自然,它比计算具有明显的优势。几个公共基准数据集中的实验表明,我们的方法具有高度竞争的准确性,而显然优势比速度相比。

In this paper we propose a novel sparse optical flow (SOF)-based line feature tracking method for the camera pose estimation problem. This method is inspired by the point-based SOF algorithm and developed based on an observation that two adjacent images in time-varying image sequences satisfy brightness invariant. Based on this observation, we re-define the goal of line feature tracking: track two endpoints of a line feature instead of the entire line based on gray value matching instead of descriptor matching. To achieve this goal, an efficient two endpoint tracking (TET) method is presented: first, describe a given line feature with its two endpoints; next, track the two endpoints based on SOF to obtain two new tracked endpoints by minimizing a pixel-level grayscale residual function; finally, connect the two tracked endpoints to generate a new line feature. The correspondence is established between the given and the new line feature. Compared with current descriptor-based methods, our TET method needs not to compute descriptors and detect line features repeatedly. Naturally, it has an obvious advantage over computation. Experiments in several public benchmark datasets show our method yields highly competitive accuracy with an obvious advantage over speed.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源