A Dataset-Dispersion Perspective on Reconstruction Versus Recognition in Single-View 3D Reconstruction Networks

11/30/2021
by   Yefan Zhou, et al.
0

Neural networks (NN) for single-view 3D reconstruction (SVR) have gained in popularity. Recent work points out that for SVR, most cutting-edge NNs have limited performance on reconstructing unseen objects because they rely primarily on recognition (i.e., classification-based methods) rather than shape reconstruction. To understand this issue in depth, we provide a systematic study on when and why NNs prefer recognition to reconstruction and vice versa. Our finding shows that a leading factor in determining recognition versus reconstruction is how dispersed the training data is. Thus, we introduce the dispersion score, a new data-driven metric, to quantify this leading factor and study its effect on NNs. We hypothesize that NNs are biased toward recognition when training images are more dispersed and training shapes are less dispersed. Our hypothesis is supported and the dispersion score is proved effective through our experiments on synthetic and benchmark datasets. We show that the proposed metric is a principal way to analyze reconstruction quality and provides novel information in addition to the conventional reconstruction score.

READ FULL TEXT

page 4

page 12

research
09/03/2019

Few-Shot Generalization for Single-Image 3D Reconstruction via Priors

Recent work on single-view 3D reconstruction shows impressive results, b...
research
01/17/2017

3D Reconstruction of Simple Objects from A Single View Silhouette Image

While recent deep neural networks have achieved promising results for 3D...
research
06/14/2020

3D Reconstruction of Novel Object Shapes from Single Images

The key challenge in single image 3D shape reconstruction is to ensure t...
research
10/16/2020

Training Data Generating Networks: Linking 3D Shapes and Few-Shot Classification

We propose a novel 3d shape representation for 3d shape reconstruction f...
research
04/12/2018

Pix3D: Dataset and Methods for Single-Image 3D Shape Modeling

We study 3D shape modeling from a single image and make contributions to...
research
11/20/2019

DR-KFD: A Differentiable Visual Metric for 3D Shape Reconstruction

We advocate the use of differential visual shape metrics to train deep n...
research
06/18/2016

Automatic 3D Reconstruction for Symmetric Shapes

Generic 3D reconstruction from a single image is a difficult problem. A ...

Please sign up or login with your details

Forgot password? Click here to reset