Object-Pose Estimation With Neural Population Codes
Journal:
arXiv
Published Date:
Feb 19, 2025
Abstract
Robotic assembly tasks require object-pose estimation, particularly for tasks
that avoid costly mechanical constraints. Object symmetry complicates the
direct mapping of sensory input to object rotation, as the rotation becomes
ambiguous and lacks a unique training target. Some proposed solutions involve
evaluating multiple pose hypotheses against the input or predicting a
probability distribution, but these approaches suffer from significant
computational overhead. Here, we show that representing object rotation with a
neural population code overcomes these limitations, enabling a direct mapping
to rotation and end-to-end learning. As a result, population codes facilitate
fast and accurate pose estimation. On the T-LESS dataset, we achieve inference
in 3.2 milliseconds on an Apple M1 CPU and a Maximum Symmetry-Aware Surface
Distance accuracy of 84.7% using only gray-scale image input, compared to 69.7%
accuracy when directly mapping to pose.