6533b833fe1ef96bd129c7dd

RESEARCH PRODUCT

OLF : RGB-D Adaptive Late Fusion for Robust 6D Pose Estimation

Petitjean ThéoZongwei WuCédric DemonceauxOlivier Laligant

subject

Late fusion[SPI] Engineering Sciences [physics]PSNRDeep learningSelf Optimized parameter

description

RGB-D 6D pose estimation has recently gained significant research attention due to the complementary information provided by depth data. However, in real-world scenarios, especially in industrial applications, the depth and color images are often more noisy. Existing methods typically employ fusion designs that equally average RGB and depth features, which may not be optimal. In this paper, we propose a novel fusion design that adaptively merges RGB-D cues. Our approach involves assigning two learnable weight α 1 and α 2 to adjust the RGB and depth contributions with respect to the network depth. This enables us to improve the robustness against low-quality depth input in a simple yet effective manner. We conducted extensive experiments on the 6D pose estimation benchmark and demonstrated the effectiveness of our method. We evaluated our network in conjunction with DenseFusion on two datasets (LineMod 3 and YCB 4) using similar noise scenarios to verify the usefulness of reinforcing the fusion with the α1 and α2 parameters. Our experiments show that our method outperforms existing methods, particularly in low-quality depth input scenarios. We plan to make our source code publicly available for future research.

https://hal.science/hal-04085729