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Efficient Single-Image Depth Estimation on Mobile Devices, Mobile AI & AIM 2022 Challenge: Report

Authors :
Ignatov, Andrey
Malivenko, Grigory
Timofte, Radu
Treszczotko, Lukasz
Chang, Xin
Ksiazek, Piotr
Lopuszynski, Michal
Pioro, Maciej
Rudnicki, Rafal
Smyl, Maciej
Ma, Yujie
Li, Zhenyu
Chen, Zehui
Xu, Jialei
Liu, Xianming
Jiang, Junjun
Shi, XueChao
Xu, Difan
Li, Yanan
Wang, Xiaotao
Lei, Lei
Zhang, Ziyu
Wang, Yicheng
Huang, Zilong
Luo, Guozhong
Yu, Gang
Fu, Bin
Li, Jiaqi
Wang, Yiran
Huang, Zihao
Cao, Zhiguo
Conde, Marcos V.
Sapozhnikov, Denis
Lee, Byeong Hyun
Park, Dongwon
Hong, Seongmin
Lee, Joonhee
Lee, Seunggyu
Chun, Se Young
Publication Year :
2022

Abstract

Various depth estimation models are now widely used on many mobile and IoT devices for image segmentation, bokeh effect rendering, object tracking and many other mobile tasks. Thus, it is very crucial to have efficient and accurate depth estimation models that can run fast on low-power mobile chipsets. In this Mobile AI challenge, the target was to develop deep learning-based single image depth estimation solutions that can show a real-time performance on IoT platforms and smartphones. For this, the participants used a large-scale RGB-to-depth dataset that was collected with the ZED stereo camera capable to generated depth maps for objects located at up to 50 meters. The runtime of all models was evaluated on the Raspberry Pi 4 platform, where the developed solutions were able to generate VGA resolution depth maps at up to 27 FPS while achieving high fidelity results. All models developed in the challenge are also compatible with any Android or Linux-based mobile devices, their detailed description is provided in this paper.<br />Comment: arXiv admin note: substantial text overlap with arXiv:2105.08630, arXiv:2211.03885; text overlap with arXiv:2105.08819, arXiv:2105.08826, arXiv:2105.08629, arXiv:2105.07809, arXiv:2105.07825

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2211.04470
Document Type :
Working Paper