TL;DR
ReFlow6D introduces a refraction-guided intermediate representation for accurate 6D pose estimation of transparent objects using only RGB images, significantly outperforming existing methods and benefiting robotic manipulation tasks.
Contribution
The paper proposes a novel refraction-guided intermediate representation and a transparent object compositing loss for improved 6D pose estimation of transparent objects from RGB images.
Findings
Outperforms state-of-the-art on TOD and Trans32K-6D datasets.
Achieves high pose estimation accuracy in real-world robotic grasping.
Introduces a refraction-based intermediate feature that is environment-independent.
Abstract
Transparent objects are ubiquitous in daily life, making their perception and robotics manipulation important. However, they present a major challenge due to their distinct refractive and reflective properties when it comes to accurately estimating the 6D pose. To solve this, we present ReFlow6D, a novel method for transparent object 6D pose estimation that harnesses the refractive-intermediate representation. Unlike conventional approaches, our method leverages a feature space impervious to changes in RGB image space and independent of depth information. Drawing inspiration from image matting, we model the deformation of the light path through transparent objects, yielding a unique object-specific intermediate representation guided by light refraction that is independent of the environment in which objects are observed. By integrating these intermediate features into the pose…
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