论文标题
加权贝叶斯高斯混合模型,用于路边激光镜头对象检测
Weighted Bayesian Gaussian Mixture Model for Roadside LiDAR Object Detection
论文作者
论文摘要
背景建模广泛用于智能监视系统,以通过减去静态背景组件来检测移动目标。大多数路边的LIDAR对象检测方法通过将新的数据点与基于许多帧的描述性统计数据进行比较(例如,素素密度,邻居数,最大距离)来滤除前景点。但是,这些解决方案在流量繁忙的情况下效率低下,参数值很难从一种情况转移到另一种情况。在早期研究中,由于稀疏和非结构化的点云数据,广泛用于基于视频的系统的概率背景建模方法被认为不适合路边激光雷达监视系统。在本文中,根据每个LIDAR点的高程和方位角值,将原始LIDAR数据转化为结构化表示。通过这种高阶张量表示,我们打破了障碍物,以允许有效的高维多变量分析,以进行路边的LiDAR背景建模。贝叶斯非参数(BNP)方法集成了强度值和3D测量值,以完全使用3D和强度信息来利用测量数据。将所提出的方法与两个最先进的路边LIDAR背景模型,计算机视觉基准和深度学习基线进行了比较,这些基准在繁忙的交通和挑战性的天气下在点,对象和路径水平上进行了评估。这种多模式加权的贝叶斯高斯混合模型(GMM)可以通过嘈杂的测量来处理动态背景,并实质上增强了基于基础架构的LIDAR对象检测,从而可以创建各种针对智能城市应用的3D建模。
Background modeling is widely used for intelligent surveillance systems to detect moving targets by subtracting the static background components. Most roadside LiDAR object detection methods filter out foreground points by comparing new data points to pre-trained background references based on descriptive statistics over many frames (e.g., voxel density, number of neighbors, maximum distance). However, these solutions are inefficient under heavy traffic, and parameter values are hard to transfer from one scenario to another. In early studies, the probabilistic background modeling methods widely used for the video-based system were considered unsuitable for roadside LiDAR surveillance systems due to the sparse and unstructured point cloud data. In this paper, the raw LiDAR data were transformed into a structured representation based on the elevation and azimuth value of each LiDAR point. With this high-order tensor representation, we break the barrier to allow efficient high-dimensional multivariate analysis for roadside LiDAR background modeling. The Bayesian Nonparametric (BNP) approach integrates the intensity value and 3D measurements to exploit the measurement data using 3D and intensity info entirely. The proposed method was compared against two state-of-the-art roadside LiDAR background models, computer vision benchmark, and deep learning baselines, evaluated at point, object, and path levels under heavy traffic and challenging weather. This multimodal Weighted Bayesian Gaussian Mixture Model (GMM) can handle dynamic backgrounds with noisy measurements and substantially enhances the infrastructure-based LiDAR object detection, whereby various 3D modeling for smart city applications could be created.