State Estimation of Articulated Vehicles Using Deformed Superellipses

Lino Antoni Giefer, J. Clemens
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Abstract

State estimation of objects plays an important role in various kinds of applications in the fields of robotics and autonomous vehicles. With the continuous advancement of sensors with high spatial resolution, especially light detection and ranging (LiDAR), the interest in accurate and reliable extended object trackers has grown over the last years. Classical state estimation approaches assume static and symmetric shapes, such as rectangles or ellipses, or compositions of those. The disadvantage of that assumption is obvious: deformations, as in the case of articulated vehicles driving along curves, cannot be captured appropriately. In this paper, we tackle this problem by proposing a novel approach to state estimation employing deformed superellipses. This allows a closed-form mathematical description of an articulated object’s state in the Euclidean plane consisting of its pose and shape. Two additional state parameters are introduced capturing the deformation angle and the joint’s position. We evaluate the proposed approach to state estimation of articulated objects employing a model fitting algorithm of simulated LiDAR measurements and show the improvements compared to classical shape assumptions. Furthermore, we discuss the use of our approach in a tracking algorithm.
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基于变形超椭圆的铰接车辆状态估计
物体状态估计在机器人和自动驾驶汽车领域的各种应用中起着重要的作用。随着高空间分辨率传感器的不断发展,特别是光探测和测距(LiDAR),对精确可靠的扩展目标跟踪器的兴趣在过去几年中不断增长。经典的状态估计方法假设静态和对称的形状,如矩形或椭圆,或它们的组合。这种假设的缺点是显而易见的:变形,就像铰接车辆沿着曲线行驶的情况一样,不能适当地捕捉到。在本文中,我们通过提出一种利用变形超椭圆进行状态估计的新方法来解决这个问题。这允许在由姿态和形状组成的欧几里得平面上对铰接物体的状态进行封闭的数学描述。引入了两个附加状态参数来捕获变形角和节点位置。我们利用模拟LiDAR测量的模型拟合算法评估了所提出的铰接物体状态估计方法,并展示了与经典形状假设相比的改进。此外,我们讨论了我们的方法在跟踪算法中的应用。
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