论文标题
shle:基于立体声的高度限制估计的设备跟踪和深度过滤
SHLE: Devices Tracking and Depth Filtering for Stereo-based Height Limit Estimation
论文作者
论文摘要
最近,经常发生过高的车辆罢工,导致了巨大的经济成本和严重的安全问题。因此,必须在现代大型或中型汽车(例如旅行车)中使用一个机敏系统,该系统可以准确地发现任何可能的高度限制设备。检测和估计高度限制设备是成功高度限制警报系统的关键点。尽管有一些工作的研究高度限制估计,但现有方法要么过于昂贵,要么不够准确。在本文中,我们提出了一条新型的基于立体声的管道,名为SHLE,以进行高度极限估计。我们的shle管道包括两个阶段。在阶段1中,引入了一种新型的设备检测和跟踪方案,该方案准确地定位了左图或右图中的高度极限设备。然后,在第2阶段,深度进行时间测量,提取和过滤以计算高度极限设备。为了测试高度限制估计任务,我们构建了一个名为“差异高度”的大规模数据集,其中提供了立体图像,预计差异和地面真相高度限制注释。我们对“差异高度”进行了广泛的实验,结果表明,尽管该车距离设备70m,但SHLE的平均误差低于10厘米。我们的方法还胜过所有基线,并实现最先进的性能。代码可从https://github.com/yang-kaixing/shle获得。
Recently, over-height vehicle strike frequently occurs, causing great economic cost and serious safety problems. Hence, an alert system which can accurately discover any possible height limiting devices in advance is necessary to be employed in modern large or medium sized cars, such as touring cars. Detecting and estimating the height limiting devices act as the key point of a successful height limit alert system. Though there are some works research height limit estimation, existing methods are either too computational expensive or not accurate enough. In this paper, we propose a novel stereo-based pipeline named SHLE for height limit estimation. Our SHLE pipeline consists of two stages. In stage 1, a novel devices detection and tracking scheme is introduced, which accurately locate the height limit devices in the left or right image. Then, in stage 2, the depth is temporally measured, extracted and filtered to calculate the height limit device. To benchmark the height limit estimation task, we build a large-scale dataset named "Disparity Height", where stereo images, pre-computed disparities and ground-truth height limit annotations are provided. We conducted extensive experiments on "Disparity Height" and the results show that SHLE achieves an average error below than 10cm though the car is 70m away from the devices. Our method also outperforms all compared baselines and achieves state-of-the-art performance. Code is available at https://github.com/Yang-Kaixing/SHLE.