Robust Facial Landmark Localization Based on Texture and Pose Correlated Initialization
Robust facial landmark localization remains a challenging task when faces are partially occluded. Recently, the cascaded pose regression has attracted increasing attentions, due to it's superior performance in facial landmark localization and occlusion detection. However, such an approach is se...
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Zusammenfassung: | Robust facial landmark localization remains a challenging task when faces are
partially occluded. Recently, the cascaded pose regression has attracted
increasing attentions, due to it's superior performance in facial landmark
localization and occlusion detection. However, such an approach is sensitive to
initialization, where an improper initialization can severly degrade the
performance. In this paper, we propose a Robust Initialization for Cascaded
Pose Regression (RICPR) by providing texture and pose correlated initial shapes
for the testing face. By examining the correlation of local binary patterns
histograms between the testing face and the training faces, the shapes of the
training faces that are most correlated with the testing face are selected as
the texture correlated initialization. To make the initialization more robust
to various poses, we estimate the rough pose of the testing face according to
five fiducial landmarks located by multitask cascaded convolutional networks.
Then the pose correlated initial shapes are constructed by the mean face's
shape and the rough testing face pose. Finally, the texture correlated and the
pose correlated initial shapes are joined together as the robust
initialization. We evaluate RICPR on the challenging dataset of COFW. The
experimental results demonstrate that the proposed scheme achieves better
performances than the state-of-the-art methods in facial landmark localization
and occlusion detection. |
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DOI: | 10.48550/arxiv.1805.05612 |