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Radar and stereo vision fusion for multitarget tracking on the special Euclidean group

机译:雷达和立体视觉融合,用于特殊欧几里德群上的多目标跟踪

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Reliable scene analysis, under varying conditions, is an essential task in nearly any assistance or autonomous system application, and advanced driver assistance systems (ADAS) are no exception. ADAS commonly involve adaptive cruise control, collision avoidance, lane change assistance, traffic sign recognition, and parking assistance with the ultimate goal of producing a fully autonomous vehicle. The present paper addresses detection and tracking of moving objects within the context of ADAS. We use a multisensor setup consisting of a radar and a stereo camera mounted on top of a vehicle. We propose to model the sensors uncertainty in polar coordinates on Lie Groups and perform the objects state filtering on Lie groups, specifically, on the product of two special Euclidean groups, i.e., SE(2)(2). To this end, we derive the designed filter within the framework of the extended Kalman filter on Lie groups. We assert that the proposed approach results with more accurate uncertainty modeling, since used sensors exhibit contrasting measurement uncertainty characteristics and the predicted target motions result with banana-shaped uncertainty contours. We believe that accurate uncertainty modeling is an important ADAS topic, especially when safety applications are concerned. To solve the multitarget tracking problem, we use the joint integrated probabilistic data association filter and present necessary modifications in order to use it on Lie groups. The proposed approach is tested on a real-world dataset collected with the described multisensor setup in urban traffic scenarios. (C) 2016 Elsevier B.V. All rights reserved.
机译:在几乎所有辅助或自主系统应用中,在各种条件下进行可靠的场景分析都是必不可少的任务,高级驾驶员辅助系统(ADAS)也不例外。 ADAS通常涉及自适应巡航控制,避免碰撞,变道辅助,交通标志识别和停车辅助,其最终目标是生产全自动驾驶汽车。本论文致力于在ADAS环境下检测和跟踪运动物体。我们使用由雷达和安装在车辆顶部的立体摄像机组成的多传感器设置。我们建议对李群上的极坐标中的传感器不确定性进行建模,并对李群(特别是两个特殊的欧几里得群即SE(2)(2)的乘积)执行对象状态过滤。为此,我们在李群上的扩展卡尔曼滤波器的框架内得出设计的滤波器。我们断言,由于使用的传感器表现出对比的测量不确定性特征,并且预测的目标运动具有香蕉形的不确定性轮廓,因此提出的方法具有更准确的不确定性建模。我们认为,准确的不确定性建模是ADAS的重要主题,尤其是在涉及安全应用时。为了解决多目标跟踪问题,我们使用联合集成概率数据关联过滤器并提出必要的修改,以便在李群上使用它。在城市交通场景中,使用描述的多传感器设置收集的真实世界数据集对提出的方法进行了测试。 (C)2016 Elsevier B.V.保留所有权利。

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