CM-EVS: Sparse Panoramic RGB-D-Pose Data for Complete Scene Coverage
Jiale Liu, Jungang Li, Jieming Yu, Xinglin Yu, Zihao Dongfang, Zongjian Ding, Kaifeng Ding, Yi Yang, Lidong Chen, Yang Zou, Shunwen Bai, Jiahuan Zhang, Haoran Huang, Shan Huang, Yudong Gao, Mingjun Cheng

TL;DR
This paper introduces COVER, a viewpoint curation method, and CM-EVS, a comprehensive panoramic RGB-D-pose dataset, enabling geometry-consistent 3D learning with complete scene coverage and low redundancy.
Contribution
The paper presents a novel, training-free viewpoint curation technique and a curated dataset that together improve scene coverage and data consistency for panoramic 3D learning.
Findings
COVER enhances coverage-conflict trade-off in panoramic data collection.
CM-EVS dataset covers all room types with median 25 frames per scene.
Indoor frames include provenance logs for data auditing.
Abstract
Modern 3D visual learning relies on observations sampled from metric 3D assets, yet existing scans, meshes, point clouds, simulations, and reconstructions do not directly provide a sparse, comparable, and geometry-consistent panoramic training interface. Dense trajectories duplicate nearby views, source-specific rendering policies yield heterogeneous annotations, and sparse heuristics may miss important regions or introduce depth-inconsistent observations. We study how to convert 3D assets into sparse panoramic RGB-D-pose data that preserves complete scene coverage with low redundancy and auditable provenance. We propose COVER (Coverage-Oriented Viewpoint curation with ERP Range-depth warping), a training-free ERP viewpoint curator that projects geometry observed from selected views into candidate ERP probes, scores incremental coverage, and penalizes depth conflicts. Under bounded…
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