Facial Anatomical Landmark Detection using Regularized Transfer Learning with Application to Fetal Alcohol Syndrome Recognition
Zeyu Fu, Jianbo Jiao, Michael Suttie, J. Alison Noble

TL;DR
This paper introduces a regularized transfer learning method for facial landmark detection tailored to fetal alcohol syndrome diagnosis, effectively handling limited data and large appearance variations.
Contribution
It proposes a novel transfer learning approach that regularizes model behavior using rich visual semantics from a pre-trained network, improving landmark detection in limited data scenarios.
Findings
Enhanced generalization on clinical dataset
Outperforms existing landmark detection methods
Effective with limited training samples
Abstract
Fetal alcohol syndrome (FAS) caused by prenatal alcohol exposure can result in a series of cranio-facial anomalies, and behavioral and neurocognitive problems. Current diagnosis of FAS is typically done by identifying a set of facial characteristics, which are often obtained by manual examination. Anatomical landmark detection, which provides rich geometric information, is important to detect the presence of FAS associated facial anomalies. This imaging application is characterized by large variations in data appearance and limited availability of labeled data. Current deep learning-based heatmap regression methods designed for facial landmark detection in natural images assume availability of large datasets and are therefore not wellsuited for this application. To address this restriction, we develop a new regularized transfer learning approach that exploits the knowledge of a network…
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Taxonomy
TopicsPrenatal Substance Exposure Effects · Neonatal and fetal brain pathology · Domain Adaptation and Few-Shot Learning
MethodsHeatmap
