The paper introduces a novel method called CPPF++ for sim-to-real 6D object pose estimation. The key highlights are:
Probabilistic Uncertainty Modeling: CPPF++ models the input point pairs as a multinomial distribution in the canonical space, sampling it to generate votes and employing noisy pair filtering to mitigate background noise.
N-Point Tuple Feature Extraction: CPPF++ introduces N-point tuples to preserve more context information and presents three rotation-invariant features to maintain rotation invariance.
Online Alignment Optimization: CPPF++ proposes a novel online alignment optimization module to refine the output pose differentiably.
Tuple Feature Ensemble: CPPF++ advocates for the amalgamation of geometric and visual features through an innovative inference-time model switching strategy.
Comprehensive Evaluation: CPPF++ is evaluated on four different pose estimation datasets, including the newly proposed DiversePose 300 dataset, which presents a significant challenge within category-level pose estimation.
The experiments reveal that CPPF++ substantially surpasses prior sim-to-real techniques across all datasets, including outperforming state-of-the-art real-world training methods on unseen datasets.
In eine andere Sprache
aus dem Quellinhalt
arxiv.org
Wichtige Erkenntnisse aus
by Yang You,Wen... um arxiv.org 04-01-2024
https://arxiv.org/pdf/2211.13398.pdfTiefere Fragen