HyperAIHyperAI

Command Palette

Search for a command to run...

3 months ago

Dynamic Plane Convolutional Occupancy Networks

Stefan Lionar Daniil Emtsev Dusan Svilarkovic Songyou Peng

Dynamic Plane Convolutional Occupancy Networks

Abstract

Learning-based 3D reconstruction using implicit neural representations has shown promising progress not only at the object level but also in more complicated scenes. In this paper, we propose Dynamic Plane Convolutional Occupancy Networks, a novel implicit representation pushing further the quality of 3D surface reconstruction. The input noisy point clouds are encoded into per-point features that are projected onto multiple 2D dynamic planes. A fully-connected network learns to predict plane parameters that best describe the shapes of objects or scenes. To further exploit translational equivariance, convolutional neural networks are applied to process the plane features. Our method shows superior performance in surface reconstruction from unoriented point clouds in ShapeNet as well as an indoor scene dataset. Moreover, we also provide interesting observations on the distribution of learned dynamic planes.

Code Repositories

dsvilarkovic/dynamic_plane_convolutional_onet
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
3d-reconstruction-on-shapenetDP-ConvONet
Chamfer Distance: 0.42
IoU: 89.5
3d-reconstruction-on-shapenetONet
Chamfer Distance: 0.87
IoU: 76.1
3d-reconstruction-on-shapenetConvONet
Chamfer Distance: 0.45
IoU: 88.4

Build AI with AI

From idea to launch — accelerate your AI development with free AI co-coding, out-of-the-box environment and best price of GPUs.

AI Co-coding
Ready-to-use GPUs
Best Pricing
Get Started

Hyper Newsletters

Subscribe to our latest updates
We will deliver the latest updates of the week to your inbox at nine o'clock every Monday morning
Powered by MailChimp
Dynamic Plane Convolutional Occupancy Networks | Papers | HyperAI