3D StreetUnveiler with Semantic-aware 2DGS -- a simple baseline
Jingwei Xu, Yikai Wang, Yiqun Zhao, Yanwei Fu, Shenghua Gao

TL;DR
This paper introduces StreetUnveiler, a novel method for reconstructing empty street scenes from crowded in-car camera observations by leveraging semantic-aware 2D Gaussian Splatting and a temporal inpainting framework.
Contribution
It proposes a scalable 3D street reconstruction approach using semantic-aware 2DGS and a novel time-reversal inpainting framework for long-trajectory observations.
Findings
Successfully reconstructed 3D empty street scenes from crowded data
Enhanced temporal consistency in inpainting through reverse frame processing
Mesh representations enable further applications
Abstract
Unveiling an empty street from crowded observations captured by in-car cameras is crucial for autonomous driving. However, removing all temporarily static objects, such as stopped vehicles and standing pedestrians, presents a significant challenge. Unlike object-centric 3D inpainting, which relies on thorough observation in a small scene, street scene cases involve long trajectories that differ from previous 3D inpainting tasks. The camera-centric moving environment of captured videos further complicates the task due to the limited degree and time duration of object observation. To address these obstacles, we introduce StreetUnveiler to reconstruct an empty street. StreetUnveiler learns a 3D representation of the empty street from crowded observations. Our representation is based on the hard-label semantic 2D Gaussian Splatting (2DGS) for its scalability and ability to identify…
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Code & Models
Videos
Taxonomy
TopicsVideo Surveillance and Tracking Methods · Automated Road and Building Extraction · Advanced Image and Video Retrieval Techniques
MethodsInpainting
