Relative placement tasks are an important category of tasks in which one object needs to be placed in a desired pose relative to another object. Previous work has shown success in learning relative placement tasks from just a small number of demonstrations when using relational reasoning networks with geometric inductive biases. However, such methods cannot flexibly represent multimodal tasks, like a mug hanging on any of n racks. We propose a method that incorporates additional properties that enable learning multimodal relative placement solutions, while retaining the provably translation-invariant and relational properties of prior work. We show that our method is able to learn precise relative placement tasks with only 10-20 multimodal demonstrations with no human annotations across a diverse set of objects within a category.
@article{arxiv.2405.04609,
title = {Learning Distributional Demonstration Spaces for Task-Specific Cross-Pose Estimation},
author = {Jenny Wang and Octavian Donca and David Held},
journal= {arXiv preprint arXiv:2405.04609},
year = {2024}
}