Real-Time Pose Based Human Detection and Re-Identification with a Single Camera for Robot Person Following
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Abstract
In this work we address the challenge of following a person with a mobile
robot, with a focus on the image processing aspect. We overview different historical
approaches for person following and outline the advantages and disadvantages of
each. We then show that recent convolutional neural networks trained for human
pose detection are suitable for person detection as it relates to the robot following
problem. We extend one such pose detection network to spatially embed the identity
of individuals in the image, utilizing the pose features already computed. The
proposed identity embedding allows the system to robustly track individuals in
consecutive frames even in long term occlusion or absence. The final system provides
a robust person tracking scheme which is suitable for person following.