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Unified Framework for Visual Domain Adaptation Using Globality-Locality Preserving Projections

机译:使用Globity-Localital保存投影的可视域适应统一框架

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Domain Adaptation is a segment of machine learning that allows us to learn from a labelled source data distribution to classify different but related unlabelled target data distribution. In this paper, we propose a novel framework called Unified Framework for Visual Domain Adaptation using Globality-Locality Preserving Projections (UFVDA) that reduces the divergence between source and target domain both statistically and geometrically. In this framework, we use Globality-Locality Preserving Projections (GLPP) instead of primitive methods such as Principal Component Analysis (PCA) or Linear Discriminant Analysis (LDA) for dimensionality reduction and two projection vectors to project the source and the target domain data onto a common subspace. The better performance of our proposed framework than other state-of-the-art visual domain adaptation and the primitive dimensional reduction methods on real-world domain adaptation data-sets has been verified by extensive experiments. Our proposed approach UFVDA achieved a mean accuracy of 84.09% and 79.35% for all tasks of Office-Caltech data-set with VGG-Net features and PIE Face Recognition data-set respectively.
机译:域适应是一段机器学习,允许我们从标记的源数据分发中学习以对不同但相关的未标记的目标数据分发进行分类。在本文中,我们提出了一种新颖的框架,称为统一框架,用于使用Globality-localitial保存投影(UFVDA)来调整统一域的适应,该预测投影(UFVDA)在统计和几何上降低源极和目标域之间的发散。在本框架中,我们使用全球性 - 地方保存投影(GLPP)而不是原始方法,例如用于维度减少的主要成分分析(PCA)或线性判别分析(LDA),以及将源和目标域数据投影到的两个投影向量一个常见的子空间。我们的提出框架的性能比其他最先进的视域适应和真实域适应数据集的原始维度减少方法更好地通过了广泛的实验来验证。我们所提出的方法UFVDA分别取得了一个平均准确性为84.09%和79.35%,所有与VGG-NET功能和饼面识别数据集的办公室 - 卡特科数据集。

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