跨域活动识别的深度迁移学习

Jindong Wang, V. Zheng, Yiqiang Chen, Meiyu Huang
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引用次数: 103

摘要

人类活动识别在人们的日常生活中起着重要的作用。然而,获取足够的标记活动数据通常既昂贵又耗时。为了解决这个问题,迁移学习利用来自源域的标记样本来注释很少或没有标签的目标域。不幸的是,当有多个可用的源域时,很难选择正确的源域进行传输。正确的源域意味着它与目标域具有最相似的属性,因此它们的相似度更高,有利于迁移学习。选择正确的源域有助于提高算法的性能,防止负迁移。本文提出了一种有效的活动识别(USSAR)无监督源选择算法。USSAR能够从可用域列表中选择最相似的K源域。在此基础上,我们提出了一种有效的转移神经网络来进行活动识别(TNNAR)的知识转移。TNNAR能够在知识转移过程中捕捉到活动之间的时间和空间关系。在三个公共活动识别数据集上的实验表明:1)USSAR算法在选择最佳源域方面是有效的。2) TNNAR方法在进行活动知识转移时具有较高的准确率。
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Deep Transfer Learning for Cross-domain Activity Recognition
Human activity recognition plays an important role in people's daily life. However, it is often expensive and time-consuming to acquire sufficient labeled activity data. To solve this problem, transfer learning leverages the labeled samples from the source domain to annotate the target domain which has few or none labels. Unfortunately, when there are several source domains available, it is difficult to select the right source domains for transfer. The right source domain means that it has the most similar properties with the target domain, thus their similarity is higher, which can facilitate transfer learning. Choosing the right source domain helps the algorithm perform well and prevents the negative transfer. In this paper, we propose an effective Unsupervised Source Selection algorithm for Activity Recognition (USSAR). USSAR is able to select the most similar K source domains from a list of available domains. After this, we propose an effective Transfer Neural Network to perform knowledge transfer for Activity Recognition (TNNAR). TNNAR could capture both the time and spatial relationship between activities while transferring knowledge. Experiments on three public activity recognition datasets demonstrate that: 1) The USSAR algorithm is effective in selecting the best source domains. 2) The TNNAR method can reach high accuracy when performing activity knowledge transfer.
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