ROMar 20, 2018

Hybrid Contact Preintegration for Visual-Inertial-Contact State Estimation Using Factor Graphs

arXiv:1803.07531v363 citations
Originality Incremental advance
AI Analysis

This work addresses state estimation for legged robots, offering an incremental improvement in sensor fusion methods.

The paper tackled the problem of switching contact frames in legged robot state estimation by proposing a hybrid contact preintegration theory that integrates contact information through arbitrary contact switches, reducing variables in optimization. Evaluation on a Cassie-series robot showed improved estimation accuracy and robustness to vision failure.

The factor graph framework is a convenient modeling technique for robotic state estimation where states are represented as nodes, and measurements are modeled as factors. When designing a sensor fusion framework for legged robots, one often has access to visual, inertial, joint encoder, and contact sensors. While visual-inertial odometry has been studied extensively in this framework, the addition of a preintegrated contact factor for legged robots has been only recently proposed. This allowed for integration of encoder and contact measurements into existing factor graphs, however, new nodes had to be added to the graph every time contact was made or broken. In this work, to cope with the problem of switching contact frames, we propose a hybrid contact preintegration theory that allows contact information to be integrated through an arbitrary number of contact switches. The proposed hybrid modeling approach reduces the number of required variables in the nonlinear optimization problem by only requiring new states to be added alongside camera or selected keyframes. This method is evaluated using real experimental data collected from a Cassie-series robot where the trajectory of the robot produced by a motion capture system is used as a proxy for ground truth. The evaluation shows that inclusion of the proposed preintegrated hybrid contact factor alongside visual-inertial navigation systems improves estimation accuracy as well as robustness to vision failure, while its generalization makes it more accessible for legged platforms.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes