Watermark retrieval from 3D printed objects via synthetic data training

05/23/2019
by   Xin Zhang, et al.
3

We present a deep neural network based method for the retrieval of watermarks from images of 3D printed objects. To deal with the variability of all possible 3D printing and image acquisition settings we train the network with synthetic data. The main simulator parameters such as texture, illumination and camera position are dynamically randomized in non-realistic ways, forcing the neural network to learn the intrinsic features of the 3D printed watermarks. At the end of the pipeline, the watermark, in the form of a two-dimensional bit array, is retrieved through a series of simple image processing and statistical operations applied on the confidence map generated by the neural network. The results demonstrate that the inclusion of synthetic DR data in the training set increases the generalization power of the network, which performs better on images from previously unseen 3D printed objects. We conclude that in our application domain of information retrieval from 3D printed objects, where access to the exact CAD files of the printed objects can be assumed, one can use inexpensive synthetic data to enhance neural network training, reducing the need for the labour intensive process of creating large amounts of hand labelled real data or the need to generate photorealistic synthetic data.

READ FULL TEXT

page 2

page 5

page 7

page 8

research
04/18/2018

Training Deep Networks with Synthetic Data: Bridging the Reality Gap by Domain Randomization

We present a system for training deep neural networks for object detecti...
research
11/19/2018

Watermark Retrieval from 3D Printed Objects via Convolutional Neural Networks

We present a method for reading digital data embedded in planar 3D print...
research
07/17/2020

Mixing Real and Synthetic Data to Enhance Neural Network Training – A Review of Current Approaches

Deep neural networks have gained tremendous importance in many computer ...
research
12/08/2019

Neural Network Generalization: The impact of camera parameters

We quantify the generalization of a convolutional neural network (CNN) t...
research
04/25/2019

Improved visible to IR image transformation using synthetic data augmentation with cycle-consistent adversarial networks

Infrared (IR) images are essential to improve the visibility of dark or ...
research
10/23/2018

Structured Domain Randomization: Bridging the Reality Gap by Context-Aware Synthetic Data

We present structured domain randomization (SDR), a variant of domain ra...
research
10/09/2018

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

While convolutional neural networks are dominating the field of computer...

Please sign up or login with your details

Forgot password? Click here to reset