Learning-based trajectory prediction models have encountered great success, with the promise of leveraging contextual information in addition to motion history. Yet, we find that state-of-the-art forecasting methods tend to overly rely on the agent's current dynamics, failing to exploit the semantic contextual cues provided at its input. To alleviate this issue, we introduce CAB, a motion forecasting model equipped with a training procedure designed to promote the use of semantic contextual information. We also introduce two novel metrics - dispersion and convergence-to-range - to measure the temporal consistency of successive forecasts, which we found missing in standard metrics. Our method is evaluated on the widely adopted nuScenes Prediction benchmark as well as on a subset of the most difficult examples from this benchmark. The code is available at github.com/valeoai/CAB
翻译:以学习为基础的轨迹预测模型取得了巨大成功,除了动态历史之外,还有望利用背景信息。然而,我们发现,最先进的预测方法往往过度依赖代理人目前的动态,未能利用其投入所提供的语义背景提示。为了缓解这一问题,我们引入了CAB, 即一个具有培训程序、旨在推广使用语义背景信息的运动预测模型。我们还引入了两种新型指标——分散和趋同——以衡量连续预测的时间一致性,我们发现在标准指标中缺少这些预测。我们的方法是根据广泛采用的 nuScenes 预测基准以及该基准中最困难的一组例子进行评估的。该代码可在 guthub.com/valeoai/CAB查阅。