Location-guided Head Pose Estimation for Fisheye Image
CoRR(2024)
Abstract
Camera with a fisheye or ultra-wide lens covers a wide field of view that
cannot be modeled by the perspective projection. Serious fisheye
lens distortion in the peripheral region of the image leads
to degraded performance of the existing head pose estimation
models trained on undistorted images. This paper presents a new approach for
head pose estimation that uses the knowledge of head location in the image to
reduce the negative effect of fisheye distortion. We develop an end-to-end
convolutional neural network to estimate the head pose with the multi-task
learning of head pose and head location. Our proposed network estimates the
head pose directly from the fisheye image without the operation of
rectification or calibration. We also created a
fisheye-distorted version of the three popular head pose
estimation datasets, BIWI, 300W-LP, and AFLW2000 for our experiments.
Experiments results show that our network remarkably improves the accuracy of
head pose estimation compared with other state-of-the-art one-stage and
two-stage methods.
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