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Extended Object Tracking with an Improved Measurement-to-Contour Association

机译:具有改进的测量与轮廓关联的扩展对象跟踪

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The random hypersurface model is well-suited to describe extended target contours. Its applicability is limited only by the mild assumption that the target contour has to be star convex. Gaussian processes provide a sound way to estimate the contour functions, and the ability to model the contour uncertainty in a detailed way at different contour points. However, the association of measurements to target contour points is not optimal in current implementations using Gaussian Processes and the random hypersurface model. In this work, we provide an improved approach compared to the standard approach. The standard approach projects measurements radially onto the predicted contour. Our approach provides expected measurements matching the physical reality of the measurement process more closely. In addition, we perform the association of the whole batch of measurements to the expected contour measurements at once. Compared to a sequential association of individual measurements, this leads to a better association decision.
机译:随机超曲面模型非常适合描述扩展的目标轮廓。它的适用性仅受目标轮廓必须为星形凸面的温和假设的限制。高斯过程提供了一种估算轮廓函数的合理方法,并提供了在不同轮廓点处以详细方式对轮廓不确定性进行建模的能力。但是,在使用高斯过程和随机超曲面模型的当前实现中,将测量结果与目标轮廓点的关联不是最佳的。在这项工作中,与标准方法相比,我们提供了一种改进的方法。标准方法将测量值径向投影到预测轮廓上。我们的方法提供了与测量过程的物理现实更加匹配的预期测量。此外,我们会立即执行整批测量与预期轮廓测量的关联。与单个测量的顺序关联相比,这导致更好的关联决策。

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