tRANSAC: Dynamic feature accumulation across time for stable online RANSAC model estimation in automotive applications

Shimiao Li, Yang Song, Ruijiang Luo, Zhongyang Huang, Chengming Liu
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Abstract

RANdom SAmple Consensus (RANSAC) is widely used in computer vision and automotive related applications. It is an iterative method to estimate parameters of mathematical model from a set of observed data that contains outliers. In computer vision, such observed data is usually a set of features (such as feature points, line segments) extracted from images. In automotive re-lated applications, RANSAC can be used to estimate lane vanishing point, camera view angles, ground plane etc. In such applications, changing content of road scene makes stable online model estimation difficult. In this paper, we propose a framework called tRANSAC to dynamically accumulate features across time so that online RANSAC model estimation can be stably performed. Feature accumulation across time is done in such a dynamic way that when RANSAC tends to perform robustly and stably, accumulated features are discarded fast so that fewer redundant features are used for RANSAC estimation; when RANSAC tends to perform poorly, accumulated features are discarded slowly so that more features can be used for better RANSAC estimation. Experimental results on road scene dataset for vanishing point and camera angle estimation show that the proposed tRANSAC method gives more stable and accurate estimates compared to baseline RANSAC method.
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tRANSAC:汽车应用中稳定在线RANSAC模型估计的动态特征随时间累积
随机样本一致性(RANSAC)广泛应用于计算机视觉和汽车相关应用。从一组包含异常值的观测数据中估计数学模型参数是一种迭代方法。在计算机视觉中,这种观测数据通常是从图像中提取的一组特征(如特征点、线段)。在汽车相关应用中,RANSAC可用于估计车道消失点、摄像头视角、地平面等。在这类应用中,道路场景内容的变化给稳定的在线模型估计带来了困难。在本文中,我们提出了一个名为tRANSAC的框架来动态累积特征,从而可以稳定地进行在线RANSAC模型估计。随着时间的推移,特征积累以动态的方式进行,当RANSAC趋于鲁棒性和稳定性时,积累的特征被快速丢弃,从而减少了用于RANSAC估计的冗余特征;当RANSAC倾向于表现较差时,累积的特征被慢慢丢弃,以便使用更多的特征进行更好的RANSAC估计。在道路场景数据集上进行消失点和摄像机角度估计的实验结果表明,与基线RANSAC方法相比,本文提出的tRANSAC方法的估计更加稳定和准确。
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