The commonly used metrics for motion prediction do not correlate well with a self-driving vehicle's system-level performance. The most common metrics are average displacement error (ADE) and final displacement error (FDE), which omit many features, making them poor self-driving performance indicators. Since high-fidelity simulations and track testing can be resource-intensive, the use of prediction metrics better correlated with full-system behavior allows for swifter iteration cycles. In this paper, we offer a conceptual framework for prediction evaluation highly specific to self-driving. We propose two complementary metrics that quantify the effects of motion prediction on safety (related to recall) and comfort (related to precision). Using a simulator, we demonstrate that our safety metric has a significantly better signal-to-noise ratio than displacement error in identifying unsafe events.
翻译:用于运动预测的常用指标与自行驾驶车辆的系统性能不完全相关。最常见的指标是平均迁移错误(ADE)和最后迁移错误(FDE),它们遗漏了许多特征,使得自己驾驶的业绩指标很差。由于高忠诚度模拟和轨迹测试可以耗费大量资源,因此使用更能与整个系统行为相联系的预测指标可以加快循环周期。在本文件中,我们为自我驾驶的高度特异性的预测评价提供了一个概念框架。我们提出了两个补充性指标,用数量计算运动预测对安全(与召回有关)和舒适(与精确有关)的影响。我们使用模拟器表明,在确定不安全事件时,我们的安全指标比迁移错误的信号比噪音比错误要好得多。