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Cross-domain activity recognition

机译:跨域活动识别

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摘要

In activity recognition, one major challenge is huge manual effort in labeling when a new domain of activities is to be tested. In this paper, we ask an interesting question: can we transfer the available labeled data from a set of existing activities in one domain to help recognize the activities in another different but related domain? Our answer is "yes", provided that the sensor data from the two domains are related in some way. We develop a bridge between the activities in two domains by learning a similarity function via Web search, under the condition that the sensor data are from the same feature space. Based on the learned similarity measures, our algorithm interprets the data from the source domain as the data in the domain with different confidence levels, thus accomplishing the cross-domain knowledge transfer task. Our algorithm is evaluated on several real-world datasets to demonstrate its effectiveness.
机译:在活动识别中,一项主要挑战是在要测试新的活动领域时在标签上进行大量的人工工作。在本文中,我们提出一个有趣的问题:我们可以从一个域中的一组现有活动中转移可用的标记数据,以帮助识别另一个不同但相关的域中的活动吗?如果来自两个域的传感器数据以某种方式相关,则我们的答案是“是”。在传感器数据来自同一特征空间的情况下,通过Web搜索学习相似性函数,我们在两个领域的活动之间架起了一座桥梁。基于学习到的相似性度量,我们的算法将源域中的数据解释为具有不同置信度的域中的数据,从而完成了跨域知识转移任务。我们的算法在几个真实世界的数据集上进行了评估,以证明其有效性。

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