The Neurally-Guided Shape Parser: A Monte Carlo Method for Hierarchical Labeling of Over-segmented 3D Shapes

06/22/2021
by   R. Kenny Jones, et al.
11

Many learning-based 3D shape semantic segmentation methods assign labels to shape atoms (e.g. points in a point cloud or faces in a mesh) with a single-pass approach trained in an end-to-end fashion. Such methods achieve impressive performance but require large amounts of labeled training data. This paradigm entangles two separable subproblems: (1) decomposing a shape into regions and (2) assigning semantic labels to these regions. We claim that disentangling these subproblems reduces the labeled data burden: (1) region decomposition requires no semantic labels and could be performed in an unsupervised fashion, and (2) labeling shape regions instead of atoms results in a smaller search space and should be learnable with less labeled training data. In this paper, we investigate this second claim by presenting the Neurally-Guided Shape Parser (NGSP), a method that learns how to assign semantic labels to regions of an over-segmented 3D shape. We solve this problem via MAP inference, modeling the posterior probability of a labeling assignment conditioned on an input shape. We employ a Monte Carlo importance sampling approach guided by a neural proposal network, a search-based approach made feasible by assuming the input shape is decomposed into discrete regions. We evaluate NGSP on the task of hierarchical semantic segmentation on manufactured 3D shapes from PartNet. We find that NGSP delivers significant performance improvements over baselines that learn to label shape atoms and then aggregate predictions for each shape region, especially in low-data regimes. Finally, we demonstrate that NGSP is robust to region granularity, as it maintains strong segmentation performance even as the regions undergo significant corruption.

READ FULL TEXT

page 7

page 19

page 20

research
02/21/2018

Semantic Segmentation Refinement by Monte Carlo Region Growing of High Confidence Detections

Despite recent improvements using fully convolutional networks, in gener...
research
10/08/2021

Meta-Learning 3D Shape Segmentation Functions

Learning robust 3D shape segmentation functions with deep neural network...
research
06/07/2022

SHRED: 3D Shape Region Decomposition with Learned Local Operations

We present SHRED, a method for 3D SHape REgion Decomposition. SHRED take...
research
05/05/2019

Unsupervised Detection of Distinctive Regions on 3D Shapes

This paper presents a novel approach to learn and detect distinctive reg...
research
07/23/2018

Actor-Action Semantic Segmentation with Region Masks

In this paper, we study the actor-action semantic segmentation problem, ...
research
09/05/2019

Semantic Correlation Promoted Shape-Variant Context for Segmentation

Context is essential for semantic segmentation. Due to the diverse shape...
research
01/13/2022

Learning Semantic Abstraction of Shape via 3D Region of Interest

In this paper, we focus on the two tasks of 3D shape abstraction and sem...

Please sign up or login with your details

Forgot password? Click here to reset