We introduce a novel self-attention-based normal estimation network that is able to focus softly on relevant points and adjust the softness by learning a temperature parameter, making it able to work naturally and effectively within a large neighbourhood range. As a result, our model outperforms all existing normal estimation algorithms by a large margin, achieving 94.1% accuracy in comparison with the previous state of the art of 91.2%, with a 25x smaller model and 12x faster inference time. We also use point-to-plane Iterative Closest Point (ICP) as an application case to show that our normal estimations lead to faster convergence than normal estimations from other methods, without manually fine-tuning neighbourhood range parameters. Code available at https://code.active.vision.
翻译:我们引入了一种新的基于自我注意的正常估算网络,它能够通过学习温度参数而软化地关注相关点并调整软性,从而能够自然和有效地在大邻里范围内工作,因此,我们的模型大大优于所有现有的正常估算算法,实现了94.1%的准确率,而此前的艺术水平为91.2%,模型小25倍,推导时间更快12x。 我们还使用点对点对点热点(ICP)作为应用案例,以表明我们的正常估算比其他方法的正常估算速度快,而没有手动微调邻里范围参数。 代码可在 https://code.active.vision查阅 https://code.