Zero-Shot Transfer of Haptics-Based Object Insertion Policies
Samarth Manoj Brahmbhatt, Ankur Deka, Andrew Spielberg, Matthias Müller
Abstract
Humans naturally exploit haptic feedback during contact-rich tasks like loading a dishwasher or stocking a bookshelf. Current robotic systems focus on avoiding un- expected contact, often relying on strategically placed en- vironment sensors. Recently, contact-exploiting manipulation policies have been trained in simulation and deployed on real robots. However, they require some form of real-world adaptation to bridge the sim-to-real gap, which might not be feasible in all scenarios. In this paper we train a contact- exploiting manipulation policy in simulation for the contact- rich household task of loading plates into a slotted holder, which transfers without any fine-tuning to the real robot. We investigate various factors necessary for this zero-shot transfer, like time delay modeling, memory representation, and domain randomization. Our policy transfers with minimal sim-to-real gap and significantly outperforms heuristic and learnt baselines. It also generalizes well to a cup and plates of different sizes and weights. The project website is https://sites.google. com/view/compliant-object-insertion.