|
||||||
DEEP 3D HUMAN POSE ESTIMATION UNDER PARTIAL BODY PRESENCE
Saeid Vosoughi and Maria A. Amer
IEEE ICIP 2018: accepted Contact: amer att ece.concordia.ca |
||||||
Abstract
This paper addresses the problem of 3D human pose estimation
when not all body parts are present in the input image,
i.e., when some body joints are present while other joints are
fully absent (we exclude self-occlusion). State-of-the-art is
not designed and thus not effective for such cases. We propose
a deep CNN to regress the human pose directly from an
input image; we design and train this network to work under
partial body presence. Parallel to this, we train a detection
network to classify the presence or absence of each of the
main body joints in the input image. The outputs of our detection
and regression networks are a) joints that are present
and b) joints that are absent. With these outputs, our method
reconstructs the full body skeleton. Evaluations on the Human3.6M
dataset yield promising results compared to related
work.
Software To get the code email the authors Code for creating the dataset of partial subjects Paper published at IEEE ICIP; for inquiries contact: amer ATT ece.concordia.ca |