Uncertainty pervades through the modern robotic autonomy stack, with nearly every component (e.g., sensors, detection, classification, tracking, behavior prediction) producing continuous or discrete probabilistic distributions. Trajectory forecasting, in particular, is surrounded by uncertainty as its inputs are produced by (noisy) upstream perception and its outputs are predictions that are often probabilistic for use in downstream planning. However, most trajectory forecasting methods do not account for upstream uncertainty, instead taking only the most-likely values. As a result, perceptual uncertainties are not propagated through forecasting and predictions are frequently overconfident. To address this, we present a novel method for incorporating perceptual state uncertainty in trajectory forecasting, a key component of which is a new statistical distance-based loss function which encourages predicting uncertainties that better match upstream perception. We evaluate our approach both in illustrative simulations and on large-scale, real-world data, demonstrating its efficacy in propagating perceptual state uncertainty through prediction and producing more calibrated predictions.
翻译:通过现代机器人自主式堆叠,几乎每个组成部分(例如传感器、探测、分类、跟踪、行为预测)都产生连续或离散的概率分布。特别是,轨迹预测被不确定性所包围,因为其投入是由(噪音)上游感知产生的,其产出是预测,往往可以用于下游规划。然而,大多数轨迹预测方法不考虑上游不确定性,而只考虑最相似的值。结果,概念不确定性不是通过预测传播的,预测往往过于自信。为了解决这个问题,我们提出了一个新颖的方法,将概念状态不确定性纳入轨迹预测,其中的一个关键部分是新的统计远程损失功能,鼓励预测不确定性,使之更好地与上游感知相匹配。我们评价我们在说明性模拟和大规模、真实世界数据方面的做法,通过预测和提出更精确的预测来显示其传播概念状态不确定性的功效。