CMU-Flownet: Exploring Point Cloud Scene Flow Estimation in Occluded Scenario

Research output: Working paperPreprintResearch

Standard

CMU-Flownet : Exploring Point Cloud Scene Flow Estimation in Occluded Scenario. / Chen, Jingze; Yao, Junfeng; Lin, Qiqin; Li, Lei.

arXiv.org, 2024.

Research output: Working paperPreprintResearch

Harvard

Chen, J, Yao, J, Lin, Q & Li, L 2024 'CMU-Flownet: Exploring Point Cloud Scene Flow Estimation in Occluded Scenario' arXiv.org. <https://arxiv.org/abs/2404.10571>

APA

Chen, J., Yao, J., Lin, Q., & Li, L. (2024). CMU-Flownet: Exploring Point Cloud Scene Flow Estimation in Occluded Scenario. arXiv.org. https://arxiv.org/abs/2404.10571

Vancouver

Chen J, Yao J, Lin Q, Li L. CMU-Flownet: Exploring Point Cloud Scene Flow Estimation in Occluded Scenario. arXiv.org. 2024 Apr 16.

Author

Chen, Jingze ; Yao, Junfeng ; Lin, Qiqin ; Li, Lei. / CMU-Flownet : Exploring Point Cloud Scene Flow Estimation in Occluded Scenario. arXiv.org, 2024.

Bibtex

@techreport{139db79314cf4606887a1c31134c6112,
title = "CMU-Flownet: Exploring Point Cloud Scene Flow Estimation in Occluded Scenario",
abstract = " Occlusions hinder point cloud frame alignment in LiDAR data, a challenge inadequately addressed by scene flow models tested mainly on occlusion-free datasets. Attempts to integrate occlusion handling within networks often suffer accuracy issues due to two main limitations: a) the inadequate use of occlusion information, often merging it with flow estimation without an effective integration strategy, and b) reliance on distance-weighted upsampling that falls short in correcting occlusion-related errors. To address these challenges, we introduce the Correlation Matrix Upsampling Flownet (CMU-Flownet), incorporating an occlusion estimation module within its cost volume layer, alongside an Occlusion-aware Cost Volume (OCV) mechanism. Specifically, we propose an enhanced upsampling approach that expands the sensory field of the sampling process which integrates a Correlation Matrix designed to evaluate point-level similarity. Meanwhile, our model robustly integrates occlusion data within the context of scene flow, deploying this information strategically during the refinement phase of the flow estimation. The efficacy of this approach is demonstrated through subsequent experimental validation. Empirical assessments reveal that CMU-Flownet establishes state-of-the-art performance within the realms of occluded Flyingthings3D and KITTY datasets, surpassing previous methodologies across a majority of evaluated metrics. ",
keywords = "cs.CV",
author = "Jingze Chen and Junfeng Yao and Qiqin Lin and Lei Li",
note = "14 pages",
year = "2024",
month = apr,
day = "16",
language = "English",
publisher = "arXiv.org",
type = "WorkingPaper",
institution = "arXiv.org",

}

RIS

TY - UNPB

T1 - CMU-Flownet

T2 - Exploring Point Cloud Scene Flow Estimation in Occluded Scenario

AU - Chen, Jingze

AU - Yao, Junfeng

AU - Lin, Qiqin

AU - Li, Lei

N1 - 14 pages

PY - 2024/4/16

Y1 - 2024/4/16

N2 - Occlusions hinder point cloud frame alignment in LiDAR data, a challenge inadequately addressed by scene flow models tested mainly on occlusion-free datasets. Attempts to integrate occlusion handling within networks often suffer accuracy issues due to two main limitations: a) the inadequate use of occlusion information, often merging it with flow estimation without an effective integration strategy, and b) reliance on distance-weighted upsampling that falls short in correcting occlusion-related errors. To address these challenges, we introduce the Correlation Matrix Upsampling Flownet (CMU-Flownet), incorporating an occlusion estimation module within its cost volume layer, alongside an Occlusion-aware Cost Volume (OCV) mechanism. Specifically, we propose an enhanced upsampling approach that expands the sensory field of the sampling process which integrates a Correlation Matrix designed to evaluate point-level similarity. Meanwhile, our model robustly integrates occlusion data within the context of scene flow, deploying this information strategically during the refinement phase of the flow estimation. The efficacy of this approach is demonstrated through subsequent experimental validation. Empirical assessments reveal that CMU-Flownet establishes state-of-the-art performance within the realms of occluded Flyingthings3D and KITTY datasets, surpassing previous methodologies across a majority of evaluated metrics.

AB - Occlusions hinder point cloud frame alignment in LiDAR data, a challenge inadequately addressed by scene flow models tested mainly on occlusion-free datasets. Attempts to integrate occlusion handling within networks often suffer accuracy issues due to two main limitations: a) the inadequate use of occlusion information, often merging it with flow estimation without an effective integration strategy, and b) reliance on distance-weighted upsampling that falls short in correcting occlusion-related errors. To address these challenges, we introduce the Correlation Matrix Upsampling Flownet (CMU-Flownet), incorporating an occlusion estimation module within its cost volume layer, alongside an Occlusion-aware Cost Volume (OCV) mechanism. Specifically, we propose an enhanced upsampling approach that expands the sensory field of the sampling process which integrates a Correlation Matrix designed to evaluate point-level similarity. Meanwhile, our model robustly integrates occlusion data within the context of scene flow, deploying this information strategically during the refinement phase of the flow estimation. The efficacy of this approach is demonstrated through subsequent experimental validation. Empirical assessments reveal that CMU-Flownet establishes state-of-the-art performance within the realms of occluded Flyingthings3D and KITTY datasets, surpassing previous methodologies across a majority of evaluated metrics.

KW - cs.CV

M3 - Preprint

BT - CMU-Flownet

PB - arXiv.org

ER -

ID: 395360683