Among the most prevalent motion planning techniques, sampling and trajectory optimization have emerged successful due to their ability to handle tight constraints and high-dimensional systems, respectively. However, limitations in sampling in higher dimensions and local minima issues in optimization have hindered their ability to excel beyond static scenes in offline settings. Here we consider highly dynamic environments with long horizons that necessitate a fast online solution. We present a unified approach that leverages the complementary strengths of sampling and optimization, and interleaves them both in a manner that is well suited to this challenging problem. With benchmarks in multiple synthetic and realistic simulated environments, we show that our approach performs significantly better on various metrics against baselines that employ either only sampling or only optimization. Project page: https://sites.google.com/view/jistplanner
翻译:在最流行的运动规划技术中,取样和轨迹优化由于能够分别处理紧凑的制约和高维系统而取得了成功,但是,在较高层面取样和局部小型优化问题方面的局限性妨碍了它们超越离线环境中静态场面的能力。这里我们考虑的是具有长期视野的高度动态环境,需要快速在线解决方案。我们提出了一个统一的方法,利用取样和优化的互补优势,以非常适合这一挑战性问题的方式将两者联系起来。在多个合成和现实模拟环境中,我们用多种合成和现实模拟环境中的基准,表明我们的方法在针对仅使用取样或优化的基线的各种衡量标准上表现得更好。项目网页:https://sites.gogle.com/view/jistplanner。项目网页:https://sites.gogle.cook/view/jistplanner。项目网页:https://sites.view/jistplanner。