CVJun 24, 2025

Active View Selector: Fast and Accurate Active View Selection with Cross Reference Image Quality Assessment

arXiv:2506.19844v11 citations
Originality Highly original
AI Analysis

This addresses the problem of efficient and accurate view selection for 3D reconstruction and synthesis, offering a representation-agnostic solution that is faster than prior specialized methods.

The paper tackles active view selection in novel view synthesis and 3D reconstruction by reframing it as a 2D image quality assessment task, achieving substantial improvements in accuracy and running 14-33 times faster than previous methods.

We tackle active view selection in novel view synthesis and 3D reconstruction. Existing methods like FisheRF and ActiveNeRF select the next best view by minimizing uncertainty or maximizing information gain in 3D, but they require specialized designs for different 3D representations and involve complex modelling in 3D space. Instead, we reframe this as a 2D image quality assessment (IQA) task, selecting views where current renderings have the lowest quality. Since ground-truth images for candidate views are unavailable, full-reference metrics like PSNR and SSIM are inapplicable, while no-reference metrics, such as MUSIQ and MANIQA, lack the essential multi-view context. Inspired by a recent cross-referencing quality framework CrossScore, we train a model to predict SSIM within a multi-view setup and use it to guide view selection. Our cross-reference IQA framework achieves substantial quantitative and qualitative improvements across standard benchmarks, while being agnostic to 3D representations, and runs 14-33 times faster than previous methods.

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