Recent advances in 3D scanning technology have enabled the deployment of 3D models in various industrial applications like digital twins, remote inspection and reverse engineering. Despite their evolving performance, 3D scanners, still introduce noise and artifacts in the acquired dense models. In this work, we propose a fast and robust denoising method for dense 3D scanned industrial models. The proposed approach employs conditional variational autoencoders to effectively filter face normals. Training and inference are performed in a sliding patch setup reducing the size of the required training data and execution times. We conducted extensive evaluation studies using 3D scanned and CAD models. The results verify plausible denoising outcomes, demonstrating similar or higher reconstruction accuracy, compared to other state-of-the-art approaches. Specifically, for 3D models with more than 1e4 faces, the presented pipeline is twice as fast as methods with equivalent reconstruction error.
翻译:3D扫描技术的最近进展使得在数字双胞胎、远程检查和反向工程等各种工业应用中能够部署3D模型。尽管3D扫描仪的性能在不断演变,但仍在获得的密集模型中引入噪音和人工制品。在这项工作中,我们建议对密度大的3D扫描工业模型采用快速和稳健的除尘方法。拟议方法使用有条件的变异自动编码器有效过滤正常面部。培训和推断是在一个滑动补丁装置中进行的,减少了所需培训数据的规模和执行时间。我们利用3D扫描和CAD模型进行了广泛的评价研究。结果证实,与其它最先进的方法相比,重建的准确性类似或更高。具体地说,对于1e4面以上的3D模型,所提出的管道速度是重建错误的两倍。