Seeing Beyond Appearance - Mapping Real Images into Geometrical Domains for Unsupervised CAD-based Recognition

10/09/2018
by   Benjamin Planche, et al.
2

While convolutional neural networks are dominating the field of computer vision, one usually does not have access to the large amount of domain-relevant data needed for their training. It thus became common to use available synthetic samples along domain adaptation schemes to prepare algorithms for the target domain. Tackling this problem from a different angle, we introduce a pipeline to map unseen target samples into the synthetic domain used to train task-specific methods. Denoising the data and retaining only the features these recognition algorithms are familiar with, our solution greatly improves their performance. As this mapping is easier to learn than the opposite one (ie to learn to generate realistic features to augment the source samples), we demonstrate how our whole solution can be trained purely on augmented synthetic data, and still perform better than methods trained with domain-relevant information (eg real images or realistic textures for the 3D models). Applying our approach to object recognition from texture-less CAD data, we present a custom generative network which fully utilizes the purely geometrical information to learn robust features and achieve a more refined mapping for unseen color images.

READ FULL TEXT

page 2

page 4

page 5

page 6

page 7

page 11

page 12

page 14

research
04/24/2018

Keep it Unreal: Bridging the Realism Gap for 2.5D Recognition with Geometry Priors Only

With the increasing availability of large databases of 3D CAD models, de...
research
01/19/2017

Synthetic to Real Adaptation with Generative Correlation Alignment Networks

Synthetic images rendered from 3D CAD models are useful for augmenting t...
research
12/22/2014

Learning Deep Object Detectors from 3D Models

Crowdsourced 3D CAD models are becoming easily accessible online, and ca...
research
07/01/2018

Augmented Cyclic Adversarial Learning for Domain Adaptation

Training a model to perform a task typically requires a large amount of ...
research
02/27/2017

DepthSynth: Real-Time Realistic Synthetic Data Generation from CAD Models for 2.5D Recognition

Recent progress in computer vision has been dominated by deep neural net...
research
05/23/2019

Watermark retrieval from 3D printed objects via synthetic data training

We present a deep neural network based method for the retrieval of water...
research
07/06/2021

Attention-based Adversarial Appearance Learning of Augmented Pedestrians

Synthetic data became already an essential component of machine learning...

Please sign up or login with your details

Forgot password? Click here to reset