This work presents FG-Net, a general deep learning framework for large-scale point clouds understanding without voxelizations, which achieves accurate and real-time performance with a single NVIDIA GTX 1080 GPU. First, a novel noise and outlier filtering method is designed to facilitate subsequent high-level tasks. For effective understanding purpose, we propose a deep convolutional neural network leveraging correlated feature mining and deformable convolution based geometric-aware modelling, in which the local feature relationships and geometric patterns can be fully exploited. For the efficiency issue, we put forward an inverse density sampling operation and a feature pyramid based residual learning strategy to save the computational cost and memory consumption respectively. Extensive experiments on real-world challenging datasets demonstrated that our approaches outperform state-of-the-art approaches in terms of accuracy and efficiency. Moreover, weakly supervised transfer learning is also conducted to demonstrate the generalization capacity of our method.
翻译:这项工作提出了FG-Net,这是一个用于无氧化化的大型点云理解的深深学习框架,通过单一的NVIDIA GTX 1080 GPU,实现了准确和实时的性能。首先,一种新颖的噪音和外部过滤方法旨在便利随后的高级任务。为了有效理解的目的,我们建议建立一个深革命神经网络,利用相关特征采矿和基于变形的基于几何觉的模型,充分利用当地特征关系和几何模式。关于效率问题,我们提出了一个反密度抽样作业和基于特征的金字塔残余学习战略,分别节省计算成本和记忆消耗。关于现实世界挑战数据集的广泛实验表明,我们的方法在准确和效率方面超越了最新的方法。此外,还进行了监督不力的转移学习,以展示我们方法的普遍能力。