We propose the Neurally-Guided Shape Parser (NGSP), a method that learns how to assign fine-grained semantic labels to regions of a 3D shape. NGSP solves this problem via MAP inference, modeling the posterior probability of a label assignment conditioned on an input shape with a learned likelihood function. To make this search tractable, NGSP employs a neural guide network that learns to approximate the posterior. NGSP finds high-probability label assignments by first sampling proposals with the guide network and then evaluating each proposal under the full likelihood. We evaluate NGSP on the task of fine-grained semantic segmentation of manufactured 3D shapes from PartNet, where shapes have been decomposed into regions that correspond to part instance over-segmentations. We find that NGSP delivers significant performance improvements over comparison methods that (i) use regions to group per-point predictions, (ii) use regions as a self-supervisory signal or (iii) assign labels to regions under alternative formulations. Further, we show that NGSP maintains strong performance even with limited labeled data or as shape regions undergo artificial corruption. Finally, we demonstrate that NGSP can be directly applied to CAD shapes found in online repositories and validate its effectiveness with a perceptual study.
翻译:我们建议使用Neural-Guide 形状剖析器(NGSP),该方法可以学习如何向3D形状的区域分配精度的语义标签。 NGSP通过 MAP 推断解决了这一问题,对标签分配以输入形状为条件且具有学习的可能性功能的后代概率进行建模。为了使这一搜索可移植,NGSP使用一个神经指导网络,以了解近似后代的近似性能。NGSP通过首先与指导网络对建议进行取样,然后在完全可能的情况下对每项建议进行评估,从而发现高概率标签任务。我们评估NGSP如何通过PartNet对制造的3D形状的精度语义分解任务进行评估,在部分与超分解功能功能的输入形状上建模。我们发现,NGSP比比较方法(i)使用区域来对每组的预测进行分类,(ii)使用区域作为自我监督信号,或(iii)甚至将标签应用到处于替代性配置的C-SP 结构下的区域,我们还可以直接展示C-AD 的绩效,我们最终在进行在线标签下进行。