The Gaussian process is a powerful and flexible technique for interpolating spatiotemporal data, especially with its ability to capture complex trends and uncertainty from the input signal. This chapter describes Gaussian processes as an interpolation technique for geospatial trajectories. A Gaussian process models measurements of a trajectory as coming from a multidimensional Gaussian, and it produces for each timestamp a Gaussian distribution as a prediction. We discuss elements that need to be considered when applying Gaussian process to trajectories, common choices for those elements, and provide a concrete example of implementing a Gaussian process.
翻译:高斯进程是将时空数据进行内插的强有力和灵活技术,特别是它能够从输入信号中捕捉复杂趋势和不确定性。本章将高斯进程描述为地理轨道的内插技术。高斯进程模型测量轨道来自多维高斯,它为每个时间绘制高斯分布图作为预测。我们讨论了在将高斯进程应用于轨迹时需要考虑的要素,这些要素的共同选择,并提供了实施高斯进程的具体例子。