OtherOpen Access
Semantic Alignment: Finding Semantically Consistent Ground-Truth for Facial Landmark Detection
Authors
Author Affiliations
Institute of Automation, Chinese Academy of Sciences, University of Chinese Academy of Sciences, Academia Sinica, ...
Year2019
Citations74
Abstract
Recently, deep learning based facial landmark detection has achieved great success. Despite this, we notice that the semantic ambiguity greatly degrades the detection performance. Specifically, the semantic ambiguity means that some landmarks (e.g. those evenly distributed along the face contour) do not have clear and accurate definition, causing inconsistent annotations by annotators. Accordingly, these inconsistent annotations, which are usually provided by public databases, commonly work as the ground-truth to supervise network training, leading to the degraded accuracy. To our knowledge, little research has investigated this problem. In this paper, we propose a novel probabilistic model which introduces a latent variable, i.e. the `real' ground-truth which is semantically consistent, to optimize. This framework couples two parts (1) training landmark detection CNN…
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