CVJun 3

4D Reconstruction from Sparse Dynamic Cameras

arXiv:2606.0459370.2
Predicted impact top 43% in CV · last 90 daysOriginality Incremental advance
AI Analysis

For practitioners in video production (e.g., sports, concerts), this work enables low-cost 4D reconstruction from sparse dynamic cameras, though improvements are incremental over naive baselines.

The paper tackles 4D reconstruction from sparse, independently moving cameras, a practical setup for real-world video production. The proposed method, with a 3D track initialization and noise-robust regularization, improves reconstruction quality in dynamic regions, as demonstrated on a new dataset (LetCamsGo) with 5 sequences.

Although dynamic 3D (i.e., 4D) reconstruction from a monocular dynamic camera has recently advanced, it remains fundamentally limited by depth ambiguity. In this paper, we focus on an alternative practical way, i.e., sparse dynamic camera setup, where a handful of independently moving cameras capture the same subjects. While keeping capture costs low, this setup introduces multi-view constraints and remains practical for real-world video production such as sports, concerts, and TV shows. Despite its potential, our experiments show that naive extensions of existing monocular or dense-fixed camera-based methods are insufficient since they fail to resolve the complex spatiotemporal inconsistencies across views and time. To fill this gap, we propose a simple yet effective 3D track initialization method designed to ensure spatiotemporal consistency by integrating inter-camera feature matching with intra-camera point tracking. Additionally, we incorporate a noise-robust depth-ordering regularization loss and a spatiotemporally diverse batch sampling strategy to enhance optimization stability and cross-view generalization. Furthermore, to address the lack of standardized benchmarks for this task, we introduce LetCamsGo, a new real-world video dataset with 5 sequences across 4 diverse environments, recorded by three independently moving cameras and one fixed camera. Comprehensive benchmarking on LetCamsGo demonstrated that our proposed framework improves 4D reconstruction quality in dynamic regions compared with baselines, paving the way for a low-cost 4D reconstruction paradigm in the wild.

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