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Semi-automatic Hand Annotation of Egocentric Recordings

  • Stijn De BeugherEmail author
  • Geert Brône
  • Toon Goedemé
Part of the Communications in Computer and Information Science book series (CCIS, volume 598)

Abstract

We present a fast and accurate algorithm for the detection of human hands in real-life 2D image sequences. We focus on a specific application of hand detection, viz. the annotation of egocentric recordings. A well known type of egocentric camera is the mobile eye-tracker, which is often used in research on human-human interaction. Nowadays, this type of data is typically annotated manually for relevant features (e.g. visual fixations of gestures), which is a time-consuming and error-prone task. We present a semi-automatic approach for the detection of human hands in images. Such an approach reduces the amount of manual analysis drastically while guaranteeing high accuracy. In our algorithm we combine several well-known detection techniques together with an advanced elimination scheme to reduce false detections. We validate our approach using a challenging dataset containing over 4300 hand instances. This validation allows us to explore the capabilities and boundaries of our approach.

Keywords

Eye-tracking Ego-centric Annotation Hand detection Human-human interaction (Semi-)automatic analysis 

Notes

Acknowledgements

This work is partially funded by KU Leuven via the projects Cametron and InSight Out. We also thank Raphael Den Dooven for his contributions.

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Copyright information

© Springer International Publishing Switzerland 2016

Authors and Affiliations

  • Stijn De Beugher
    • 1
    Email author
  • Geert Brône
    • 2
  • Toon Goedemé
    • 1
  1. 1.EAVISE, ESATKU LeuvenSint-Katelijne-WaverBelgium
  2. 2.MIDI Research GroupKU LeuvenLeuvenBelgium

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