Learning to detect dynamic feature points

M. Park, J. Yoon, Jonghee Park, Jeong-Kyun Lee, Kuk-jin Yoon
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Abstract

The detection of dynamic points on a moving platform is an important task to avoid a potential collision. However, it is difficult to detect dynamic points using only two frames, especially when various input data such as ego-motion, disparity map, and optical flow are noisy for computing the motion of points. In this paper, we propose a supervised learning-based approach to detect dynamic points in consideration of noisy input data. First of all, to consider depth ambiguity that proportionally increases according to the distance to the ego-vehicle, we divide the XZ-plane (bird-eye view) into several subregions. Then, we train a random forest for each subregion by constructing motion vectors computed based on two motion metrics. Here, in order to reduce errors of the input data, the motion vectors are filtered based on a pairwise planarity check and then filtered motion vectors are used for training. In the experiments, the proposed method is verified by comparing the detection performance with that of previous approaches on the KITTI dataset.
学习检测动态特征点
运动平台上的动态点检测是避免潜在碰撞的一项重要任务。然而,仅使用两帧很难检测到动态点,特别是当各种输入数据(如自我运动、视差图和光流)被噪声干扰时,计算点的运动是困难的。在本文中,我们提出了一种基于监督学习的方法来检测考虑噪声输入数据的动态点。首先,考虑到深度模糊度随着与自车的距离成比例增加,我们将xz平面(鸟瞰图)划分为几个子区域。然后,我们通过构造基于两个运动度量计算的运动向量来训练每个子区域的随机森林。在这里,为了减少输入数据的误差,基于两两平面性检查对运动向量进行过滤,然后使用过滤后的运动向量进行训练。在KITTI数据集上,通过与已有方法的检测性能对比,验证了所提方法的有效性。
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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