Diagram showing synthetic and realistic images acquired from a household robot

How to Bridge the Fidelity Gap Between Simulation and Reality, Especially for Object Pose Estimation

Diagram showing synthetic and realistic images acquired from a household robot
A household robot holding a plastic bottle by detecting objects via the camera installed in it
GIF animation showing precise 6D pose labeling manually on many images
A image of a robot on a dining table beside numerous images of its simulation
A synthetic image and a real image of a plastic water bottle, side by side
Overview of our sim2real domain adaptation method
Real image and synthetic image of a water bottle perceived by an object manipulating robot
Images showing that the network is able to transfer target object areas in synthetic images to be more realistic ones
Result of a pose estimation network that is trained using non-style-transferred and style-transferred images
Diagram showing that our approach is qualitatively able to stably transfer all target objects
Synthetic, transferred, and real images of a can on a table
Synthetic, transferred, and real images of a soap bottle on a table
Various kinds of bottles and containers on a dining table