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Unity Perception: Generate Synthetic Data for Computer Vision

9 July 2021
S. Borkman
A. Crespi
S. Dhakad
Sujoy Ganguly
Jonathan Hogins
Y. Jhang
Mohsen Kamalzadeh
Bowen Li
Steven Leal
Pete Parisi
Cesar Romero
Wesley Smith
Alex Thaman
Samuel Warren
Nupur Yadav
    3DV
    SyDa
    VLM
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Abstract

We introduce the Unity Perception package which aims to simplify and accelerate the process of generating synthetic datasets for computer vision tasks by offering an easy-to-use and highly customizable toolset. This open-source package extends the Unity Editor and engine components to generate perfectly annotated examples for several common computer vision tasks. Additionally, it offers an extensible Randomization framework that lets the user quickly construct and configure randomized simulation parameters in order to introduce variation into the generated datasets. We provide an overview of the provided tools and how they work, and demonstrate the value of the generated synthetic datasets by training a 2D object detection model. The model trained with mostly synthetic data outperforms the model trained using only real data.

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