Learning Positive-Incentive Point Sampling in Neural Implicit Fields for Object Pose Estimation
Yifei Shi, Boyan Wan, Xin Xu, Kai Xu

TL;DR
This paper introduces a novel neural implicit field approach with a positive-incentive point sampling strategy, significantly improving object pose estimation accuracy, especially in challenging scenarios like occlusion and unseen poses.
Contribution
It combines an SO(3)-equivariant convolutional implicit network with a dynamic sampling strategy to enhance pose estimation performance and training efficiency.
Findings
Outperforms state-of-the-art on three datasets.
Excels in scenarios with occlusion, noise, and novel shapes.
Demonstrates superior accuracy and efficiency.
Abstract
Learning neural implicit fields of 3D shapes is a rapidly emerging field that enables shape representation at arbitrary resolutions. Due to the flexibility, neural implicit fields have succeeded in many research areas, including shape reconstruction, novel view image synthesis, and more recently, object pose estimation. Neural implicit fields enable learning dense correspondences between the camera space and the object's canonical space-including unobserved regions in camera space-significantly boosting object pose estimation performance in challenging scenarios like highly occluded objects and novel shapes. Despite progress, predicting canonical coordinates for unobserved camera-space regions remains challenging due to the lack of direct observational signals. This necessitates heavy reliance on the model's generalization ability, resulting in high uncertainty. Consequently, densely…
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Taxonomy
TopicsRobot Manipulation and Learning · 3D Shape Modeling and Analysis · Human Pose and Action Recognition
