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Efficient Models for Real-time Person Segmentation on Mobile Phones

May 25, 2021 Strohmayer Julian

Supplementary material for the paper Efficient Models for Real-time Person Segmentation on Mobile Phones, accepted at the European Signal Processing Conference (EUSIPCO) 2021.

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TU Wien
Faculty of Informatics
Institute of Visual Computing & Human-Centered Technology
Computer Vision Lab

Favoritenstr. 9/193-1
A-1040 Vienna, Austria
Phone: +43-1-58801-193176
e-mail: sek@cvl.tuwien.ac.at
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