We address key challenges in long-horizon embodied exploration and navigation by proposing a new object transport task and a novel modular framework for temporally extended navigation. Our first contribution is the design of a novel Long-HOT environment focused on deep exploration and long-horizon planning where the agent is required to efficiently find and pick up target objects to be carried and dropped at a goal location, with load constraints and optional access to a container if it finds one. Further, we propose a modular hierarchical transport policy (HTP) that builds a topological graph of the scene to perform exploration with the help of weighted frontiers. Our hierarchical approach uses a combination of motion planning algorithms to reach point goals within explored locations and object navigation policies for moving towards semantic targets at unknown locations. Experiments on both our proposed Habitat transport task and on MultiOn benchmarks show that our method significantly outperforms baselines and prior works. Further, we validate the effectiveness of our modular approach for long-horizon transport by demonstrating meaningful generalization to much harder transport scenes with training only on simpler versions of the task.
翻译:我们通过提出一个新的物体运输任务和一个用于时间延伸导航的新型模块化框架,应对长方位成形的勘探和航行方面的主要挑战。我们的第一个贡献是设计一个新的长方位环境,其重点是深层勘探和长方位规划,在这种环境中,代理人必须高效率地发现和采集拟在目标地点运载和丢弃的目标物体,并有负载限制和在发现一个集装箱时可选择进入该集装箱。此外,我们提出一个模块式等级运输政策,在加权边界的帮助下,绘制一个地形图,进行勘探。我们分级方法采用运动规划算法,在探索地点和物体导航政策范围内达到点点目标,在未知地点走向语义目标。关于拟议的生境运输任务和多方位基准的实验表明,我们的方法大大超出基线和先前工程。此外,我们验证了我们的模块式运输方法在长方位运输方面的有效性,通过对更难得多的运输场面进行有意义的概括化,仅对任务进行更简单版本的培训。