Subspace selection to suppress confounding source domain information in AAM transfer learning

Azin Asgarian, A. Ashraf, David J. Fleet, B. Taati
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引用次数: 5

Abstract

Active appearance models (AAMs) have seen tremendous success in face analysis. However, model learning depends on the availability of detailed annotation of canonical landmark points. As a result, when accurate AAM fitting is required on a different set of variations (expression, pose, identity), a new dataset is collected and annotated. To overcome the need for time consuming data collection and annotation, transfer learning approaches have received recent attention. The goal is to transfer knowledge from previously available datasets (source) to a new dataset (target). We propose a subspace transfer learning method, in which we select a subspace from the source that best describes the target space. We propose a metric to compute the directional similarity between the source eigenvectors and the target subspace. We show an equivalence between this metric and the variance of target data when projected onto source eigenvectors. Using this equivalence, we select a subset of source principal directions that capture the variance in target data. To define our model, we augment the selected source subspace with the target subspace learned from a handful of target examples. In experiments done on six public datasets, we show that our approach outperforms the state of the art in terms of the RMS fitting error as well as the percentage of test examples for which AAM fitting converges to the ground truth.
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AAM迁移学习中抑制混杂源域信息的子空间选择
主动外观模型(aam)在人脸分析方面取得了巨大成功。然而,模型学习依赖于规范地标点的详细注释的可用性。因此,当需要对一组不同的变量(表情、姿势、身份)进行准确的AAM拟合时,将收集并注释一个新的数据集。为了克服对耗时的数据收集和注释的需求,迁移学习方法最近受到了人们的关注。目标是将知识从以前可用的数据集(源)转移到新的数据集(目标)。我们提出了一种子空间迁移学习方法,该方法从源中选择最能描述目标空间的子空间。我们提出了一个度量来计算源特征向量和目标子空间之间的方向相似性。我们展示了这个度量和目标数据的方差在投影到源特征向量上时的等价性。使用这个等价,我们选择一个捕获目标数据方差的源主方向子集。为了定义我们的模型,我们使用从少量目标示例中学习到的目标子空间来扩展选定的源子空间。在六个公共数据集上进行的实验中,我们表明,我们的方法在均方根拟合误差以及AAM拟合收敛于基本事实的测试示例百分比方面优于目前的技术水平。
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