计算机科学
雷达
点云
人工智能
稳健性(进化)
分割
雷达工程细节
混合模型
特征提取
杂乱
雷达成像
计算机视觉
遥感
实时计算
模式识别(心理学)
电信
地理
基因
生物化学
化学
作者
Feng Jin,Arindam Sengupta,Siyang Cao,Yao-Jan Wu
标识
DOI:10.1109/radar42522.2020.9114662
摘要
In multimodal traffic monitoring, we gather traffic statistics for distinct transportation modes, such as pedestrians, cars and bicycles, in order to analyze and improve people's daily mobility in terms of safety and convenience. On account of its robustness to bad light and adverse weather conditions, and inherent speed measurement ability, the radar sensor is a suitable option for this application. However, the sparse radar data from conventional commercial radars make it extremely challenging for transportation mode classification. Thus, we propose to use a high-resolution millimeter-wave(mmWave) radar sensor to obtain a relatively richer radar point cloud representation for a traffic monitoring scenario. Based on a new feature vector, we use the multivariate Gaussian mixture model (GMM) to do the radar point cloud segmentation, i.e. ‘point-wise’ classification, in an unsupervised learning environment. In our experiment, we collected radar point clouds for pedestrians and cars, which also contained the inevitable clutter from the surroundings. The experimental results using GMM on the new feature vector demonstrated a good segmentation performance in terms of the intersection-over-union (IoU) metrics. The detailed methodology and validation metrics are presented and discussed.
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