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Shared learning activity labels across heterogeneous datasets

机译:异构数据集共享学习活动标签

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摘要

Nowadays, the advancement of sensing and communication technologies has led to the possibility of collecting a large amount of sensor data, however, to build a reliable computational model and accurately recognise human activities we still need the annotations on sensor data. Acquiring high-quality, detailed, continuous annotations is a challenging task. In this paper, we explore the solution space on sharing annotated activities across different datasets in order to enhance the recognition accuracies. The main challenge is to resolve heterogeneity in feature and activity space between datasets; that is, each dataset can have a different number of sensors in heterogeneous sensing technologies and deployed in diverse environments and record various activities on different users. To address the challenge, we have designed and developed sharing data and sharing classifiers algorithms that feature the knowledge model to enable computationally-efficient feature space remapping and uncertainty reasoning to enable effective classifier fusion. We have validated the algorithms on three third-party real-world datasets and demonstrated their effectiveness in recognising activities only with annotations from as little as 0.1% of each dataset.
机译:如今,传感和通信技术的进步,导致收集大量的传感器数据,但是,建立一个可靠的计算模型,准确地认识到,我们仍然需要对传感器数据的批注人类活动的可能性。收购优质,细致,持续的注释是一项艰巨的任务。在本文中,我们探讨,以提高识别的准确度跨越共享不同的数据集注解活动解空间。主要的挑战是在数据集之间的功能和活动空间异质性的决心;即,每个数据集可具有异质感测技术不同数量的传感器和部署在不同的环境和在不同的用户记录中的各种活动。为了应对这一挑战,我们设计和功能的知识模型开发的数据共享和共享分类算法,使得计算效率更高的功能空间重映射和不确定性推理来实现有效的分类器融合。我们已经验证了三个第三方现实世界的数据集的算法,并证明了只承认与每个数据集的少了0.1%,说明活动的有效性。

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