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Atypical Sample Regularizer Autoencoder for Cross-Domain Human Activity Recognition

机译:非典型示例规范器AutoEncoder用于跨域人类活动识别

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摘要

The sensor-based human activity recognition (HAR) using machine learning requires a sufficiently large amount of annotated data to realize an accurate classification model. This requirement stimulates the advancement of the transfer learning research area that minimizes the use of labeled data by transferring knowledge from the existing activity recognition domain. Existing approaches transform the data into a common subspace between domains which theoretically loses information, to begin with. Besides, they are based on the linear projection which is bound to linearity assumption and its limitations. Some recent works have already incorporated nonlinearity to find a latent representation that minimizes domain discrepancy based on an autoencoder that includes statistical distance minimization. However, such approach discovers latent representation for both domains at once, which causes sub-optimal representation because both domains compensate each other's reconstruction error during the training. We propose an autoencoder-based approach on domain adaptation for sensor-based HAR. The proposed approach learns a latent representation which minimizes the discrepancy between domains by reducing statistical distance. Instead of learning representation of both domains simultaneously, our method is a two-phase approach which first learns the representation for the domain of interest independently to ensure its optimality. Subsequently, the useful information from the existing domain is transferred. We test our approach on the publicly available sensor-based HAR datasets, using cross-domain setup. The experimental result shows that our approach significantly outperforms the existing ones.
机译:使用机器学习的基于传感器的人类活动识别(HAR)需要足够大量的注释数据来实现准确的分类模型。该要求刺激转移学习研究区域的进步,通过将知识从现有的活动识别域转移来促进最小化标记数据的使用。现有方法将数据转换为从理论上失去信息的域之间的常见子空间中,以便开始。此外,它们基于线性投影,其绑定到线性假设及其限制。最近的一些作品已经纳入非线性,以找到潜在的表示,以基于包括统计距离最小化的AutoEncoder最小化域差异。然而,这种方法立即发现两个域的潜在表示,这会导致次优表示,因为两个域在训练期间补偿了彼此的重建错误。我们提出了一种基于AutoEncoder的域自身方法,用于传感器的RAR。所提出的方法学习潜在的表示,通过减少统计距离来最小化域之间的差异。我们的方法而不是同时学习两个域的学习表示,我们的方法是一个两相方法,首先独立地了解感兴趣领域的表示,以确保其最优性。随后,传输来自现有域的有用信息。我们使用跨域设置在基于可公开的传感器的HAR数据集中测试我们的方法。实验结果表明,我们的方法显着优于现有的方法。

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