Improved Object Pose Estimation via Deep Pre-touch Sensing
Patrick Lancaster, Boling Yang, Joshua R. Smith

TL;DR
This paper introduces a deep learning-based framework that uses pre-touch sensing to improve object pose estimation accuracy for robotic manipulation, especially addressing calibration errors.
Contribution
It presents a novel combination of deep neural networks and pre-touch sensing to efficiently localize objects with respect to the robot's end effector, reducing calibration errors.
Findings
Deep neural network outperforms simpler region proposal methods.
Objects localized within 0.5 cm after multiple scans.
Significant pose improvement after a single quick scan.
Abstract
For certain manipulation tasks, object pose estimation from head-mounted cameras may not be sufficiently accurate. This is at least in part due to our inability to perfectly calibrate the coordinate frames of today's high degree of freedom robot arms that link the head to the end-effectors. We present a novel framework combining pre-touch sensing and deep learning to more accurately estimate pose in an efficient manner. The use of pre-touch sensing allows our method to localize the object directly with respect to the robot's end effector, thereby avoiding error caused by miscalibration of the arms. Instead of requiring the robot to scan the entire object with its pre-touch sensor, we use a deep neural network to detect object regions that contain distinctive geometric features. By focusing pre-touch sensing on these regions, the robot can more efficiently gather the information…
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Taxonomy
TopicsRobot Manipulation and Learning · Hand Gesture Recognition Systems · Teleoperation and Haptic Systems
