Trajectory optimization (TO) aims to find a sequence of valid states while minimizing costs. However, its fine validation process is often costly due to computationally expensive collision searches, otherwise coarse searches lower the safety of the system losing a precise solution. To resolve the issues, we introduce a new collision-distance estimator, GraphDistNet, that can precisely encode the structural information between two geometries by leveraging edge feature-based convolutional operations, and also efficiently predict a batch of collision distances and gradients through 25,000 random environments with a maximum of 20 unforeseen objects. Further, we show the adoption of attention mechanism enables our method to be easily generalized in unforeseen complex geometries toward TO. Our evaluation show GraphDistNet outperforms state-of-the-art baseline methods in both simulated and real world tasks.
翻译:轨迹优化(TO)旨在找到一系列有效状态,同时尽量减少成本。然而,由于计算成本昂贵的碰撞搜索,其精细的验证过程往往成本高昂,否则粗略的搜索会降低系统安全性,从而降低系统安全性,从而失去了准确的解决办法。为了解决问题,我们引入了新的碰撞测距仪(GreabDistNet),它可以通过利用边缘地貌特征的共变操作来精确地编码两种地貌之间的结构信息,并有效地预测一系列碰撞距离和梯度,经过25 000个随机环境,最多有20个无法预见的物体。此外,我们展示了关注机制的采用使我们的方法能够很容易地在无法预见的复杂地形中普及。我们的评估显示,GregDistNet在模拟和现实世界任务中都超越了最先进的基线方法。