arXiv Open Access 2021

Image2Lego: Customized LEGO Set Generation from Images

Kyle Lennon Katharina Fransen Alexander O'Brien Yumeng Cao Matthew Beveridge +3 lainnya
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Abstrak

Although LEGO sets have entertained generations of children and adults, the challenge of designing customized builds matching the complexity of real-world or imagined scenes remains too great for the average enthusiast. In order to make this feat possible, we implement a system that generates a LEGO brick model from 2D images. We design a novel solution to this problem that uses an octree-structured autoencoder trained on 3D voxelized models to obtain a feasible latent representation for model reconstruction, and a separate network trained to predict this latent representation from 2D images. LEGO models are obtained by algorithmic conversion of the 3D voxelized model to bricks. We demonstrate first-of-its-kind conversion of photographs to 3D LEGO models. An octree architecture enables the flexibility to produce multiple resolutions to best fit a user's creative vision or design needs. In order to demonstrate the broad applicability of our system, we generate step-by-step building instructions and animations for LEGO models of objects and human faces. Finally, we test these automatically generated LEGO sets by constructing physical builds using real LEGO bricks.

Topik & Kata Kunci

Penulis (8)

K

Kyle Lennon

K

Katharina Fransen

A

Alexander O'Brien

Y

Yumeng Cao

M

Matthew Beveridge

Y

Yamin Arefeen

N

Nikhil Singh

I

Iddo Drori

Format Sitasi

Lennon, K., Fransen, K., O'Brien, A., Cao, Y., Beveridge, M., Arefeen, Y. et al. (2021). Image2Lego: Customized LEGO Set Generation from Images. https://arxiv.org/abs/2108.08477

Akses Cepat

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Informasi Jurnal
Tahun Terbit
2021
Bahasa
en
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arXiv
Akses
Open Access ✓