English

S3K: Self-Supervised Semantic Keypoints for Robotic Manipulation via Multi-View Consistency

Robotics 2020-10-14 v2 Computer Vision and Pattern Recognition Machine Learning

Abstract

A robot's ability to act is fundamentally constrained by what it can perceive. Many existing approaches to visual representation learning utilize general-purpose training criteria, e.g. image reconstruction, smoothness in latent space, or usefulness for control, or else make use of large datasets annotated with specific features (bounding boxes, segmentations, etc.). However, both approaches often struggle to capture the fine-detail required for precision tasks on specific objects, e.g. grasping and mating a plug and socket. We argue that these difficulties arise from a lack of geometric structure in these models. In this work we advocate semantic 3D keypoints as a visual representation, and present a semi-supervised training objective that can allow instance or category-level keypoints to be trained to 1-5 millimeter-accuracy with minimal supervision. Furthermore, unlike local texture-based approaches, our model integrates contextual information from a large area and is therefore robust to occlusion, noise, and lack of discernible texture. We demonstrate that this ability to locate semantic keypoints enables high level scripting of human understandable behaviours. Finally we show that these keypoints provide a good way to define reward functions for reinforcement learning and are a good representation for training agents.

Keywords

Cite

@article{arxiv.2009.14711,
  title  = {S3K: Self-Supervised Semantic Keypoints for Robotic Manipulation via Multi-View Consistency},
  author = {Mel Vecerik and Jean-Baptiste Regli and Oleg Sushkov and David Barker and Rugile Pevceviciute and Thomas Rothörl and Christopher Schuster and Raia Hadsell and Lourdes Agapito and Jonathan Scholz},
  journal= {arXiv preprint arXiv:2009.14711},
  year   = {2020}
}

Comments

11 pages, supplementary material available at: https://sites.google.com/view/2020-s3k/home

R2 v1 2026-06-23T18:54:42.972Z