Towards a Deep Learning-based Activity Discovery System

Eoin Rogers, John D. Kelleher, R. Ross
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引用次数: 2

Abstract

. Activity discovery is a challenging machine learning problem where we seek to uncover new or altered behavioural patterns in sensor data. In this paper we motivate and introduce a novel approach to activity discovery based on modern deep learning techniques. We hypothesise that our proposed approach can deal with interleaved datasets in a more intelligent manner than most existing AD methods. We also build upon prior work building hierarchies of activities that capture the inherent ag-gregate nature of complex activities and show how this could plausibly be adapted to work with the deep learning technique we present. Finally, we briefly talk about the challenge of evaluating activity discovery systems in a fair way and outline our future plans for implementing this model.
基于深度学习的活动发现系统
。活动发现是一个具有挑战性的机器学习问题,我们试图在传感器数据中发现新的或改变的行为模式。在本文中,我们提出并介绍了一种基于现代深度学习技术的活动发现新方法。我们假设我们提出的方法可以以比大多数现有AD方法更智能的方式处理交错数据集。我们还在先前的工作基础上构建了活动层次结构,这些层次结构捕获了复杂活动的固有聚合性质,并展示了如何合理地适应我们提出的深度学习技术。最后,我们简要讨论了以公平的方式评估活动发现系统所面临的挑战,并概述了我们实现该模型的未来计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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