CarPatch: A Synthetic Benchmark for Radiance Field Evaluation on Vehicle Components

Davide Di Nucci, A. Simoni, Matteo Tomei, L. Ciuffreda, R. Vezzani, R. Cucchiara
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Abstract

Neural Radiance Fields (NeRFs) have gained widespread recognition as a highly effective technique for representing 3D reconstructions of objects and scenes derived from sets of images. Despite their efficiency, NeRF models can pose challenges in certain scenarios such as vehicle inspection, where the lack of sufficient data or the presence of challenging elements (e.g. reflections) strongly impact the accuracy of the reconstruction. To this aim, we introduce CarPatch, a novel synthetic benchmark of vehicles. In addition to a set of images annotated with their intrinsic and extrinsic camera parameters, the corresponding depth maps and semantic segmentation masks have been generated for each view. Global and part-based metrics have been defined and used to evaluate, compare, and better characterize some state-of-the-art techniques. The dataset is publicly released at https://aimagelab.ing.unimore.it/go/carpatch and can be used as an evaluation guide and as a baseline for future work on this challenging topic.
CarPatch:汽车零部件辐射场评价的综合基准
神经辐射场(Neural Radiance Fields, nerf)作为一种非常有效的技术,已经获得了广泛的认可,用于表示来自图像集的物体和场景的3D重建。尽管NeRF模型效率很高,但在某些情况下(例如车辆检查),由于缺乏足够的数据或存在具有挑战性的元素(例如反射),会严重影响重建的准确性。为此,我们引入了一种新的汽车综合基准CarPatch。除了一组带有相机内部和外部参数注释的图像外,还为每个视图生成了相应的深度图和语义分割掩码。已经定义了全局和基于部件的度量标准,并使用它们来评估、比较和更好地描述一些最先进的技术。该数据集在https://aimagelab.ing.unimore.it/go/carpatch上公开发布,可以用作评估指南和未来研究这一具有挑战性主题的基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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