Real Time Egocentric Object Segmentation: THU-READ Labeling and Benchmarking Results
E. Gonzalez-Sosa,
G. Robledo,
D. Gonzalez-Morin
et al.
Abstract:Egocentric segmentation has attracted recent interest in the computer vision community due to their potential in Mixed Reality (MR) applications. While most previous works have been focused on segmenting egocentric human body parts (mainly hands), little attention has been given to egocentric objects. Due to the lack of datasets of pixelwise annotations of egocentric objects, in this paper we contribute with a semantic-wise labeling of a subset of 2124 images from the RGB-D THU-READ Dataset. We also report ben… Show more
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