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Papers/Improving Landmark Localization with Semi-Supervised Learn...

Improving Landmark Localization with Semi-Supervised Learning

Sina Honari, Pavlo Molchanov, Stephen Tyree, Pascal Vincent, Christopher Pal, Jan Kautz

2017-09-05CVPR 2018 6Face AlignmentSmall Data Image Classification
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Abstract

We present two techniques to improve landmark localization in images from partially annotated datasets. Our primary goal is to leverage the common situation where precise landmark locations are only provided for a small data subset, but where class labels for classification or regression tasks related to the landmarks are more abundantly available. First, we propose the framework of sequential multitasking and explore it here through an architecture for landmark localization where training with class labels acts as an auxiliary signal to guide the landmark localization on unlabeled data. A key aspect of our approach is that errors can be backpropagated through a complete landmark localization model. Second, we propose and explore an unsupervised learning technique for landmark localization based on having a model predict equivariant landmarks with respect to transformations applied to the image. We show that these techniques, improve landmark prediction considerably and can learn effective detectors even when only a small fraction of the dataset has landmark labels. We present results on two toy datasets and four real datasets, with hands and faces, and report new state-of-the-art on two datasets in the wild, e.g. with only 5\% of labeled images we outperform previous state-of-the-art trained on the AFLW dataset.

Results

TaskDatasetMetricValueModel
Facial Recognition and Modelling300WNME_inter-ocular (%, Challenge)7.78RCN
Facial Recognition and Modelling300WNME_inter-ocular (%, Common)4.2RCN
Facial Recognition and Modelling300WNME_inter-ocular (%, Full)4.9RCN
Face Reconstruction300WNME_inter-ocular (%, Challenge)7.78RCN
Face Reconstruction300WNME_inter-ocular (%, Common)4.2RCN
Face Reconstruction300WNME_inter-ocular (%, Full)4.9RCN
3D300WNME_inter-ocular (%, Challenge)7.78RCN
3D300WNME_inter-ocular (%, Common)4.2RCN
3D300WNME_inter-ocular (%, Full)4.9RCN
3D Face Modelling300WNME_inter-ocular (%, Challenge)7.78RCN
3D Face Modelling300WNME_inter-ocular (%, Common)4.2RCN
3D Face Modelling300WNME_inter-ocular (%, Full)4.9RCN
3D Face Reconstruction300WNME_inter-ocular (%, Challenge)7.78RCN
3D Face Reconstruction300WNME_inter-ocular (%, Common)4.2RCN
3D Face Reconstruction300WNME_inter-ocular (%, Full)4.9RCN

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