Generalisable Dialogue-based Approach for Active Learning of Activities of Daily Living

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Ronnie Smith, M. Dragone
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引用次数: 0

Abstract

While Human Activity Recognition systems may benefit from Active Learning by allowing users to self-annotate their Activities of Daily Living (ADLs), many proposed methods for collecting such annotations are for short-term data collection campaigns for specific datasets. We present a reusable dialogue-based approach to user interaction for active learning in activity recognition systems, which utilises semantic similarity measures and a dataset of natural language descriptions of common activities (which we make publicly available). Our approach involves system-initiated dialogue, including follow-up questions to reduce ambiguity in user responses where appropriate. We apply this approach to two active learning scenarios: (i) using an existing CASAS dataset, demonstrating long-term usage; and (ii) using an online activity recognition system, which tackles the issue of online segmentation and labelling. We demonstrate our work in context, in which a natural language interface provides knowledge that can help interpret other multi-modal sensor data. We provide results highlighting the potential of our dialogue- and semantic similarity-based approach. We evaluate our work: (i) quantitatively, as an efficient way to seek users’ input for active learning of ADLs; and (ii) qualitatively, through a user study in which users were asked to compare our approach and an established method. Results show the potential of our approach as a hands-free interface for annotation of sensor data as part of an active learning system. We provide insights into the challenges of active learning for activity recognition under real-world conditions and identify potential ways to address them.
基于对话的日常生活活动主动学习方法
虽然人类活动识别系统可以通过允许用户自我注释他们的日常生活活动(adl)而受益于主动学习,但许多收集此类注释的建议方法都是针对特定数据集的短期数据收集活动。我们提出了一种可重用的基于对话的用户交互方法,用于活动识别系统中的主动学习,该方法利用语义相似性度量和常见活动的自然语言描述数据集(我们公开提供)。我们的方法包括系统发起的对话,包括后续问题,以减少在适当情况下用户回答的模糊性。我们将这种方法应用于两个主动学习场景:(i)使用现有的CASAS数据集,展示长期使用情况;(ii)使用在线活动识别系统,该系统解决了在线分割和标签问题。我们在上下文中展示了我们的工作,其中自然语言界面提供了可以帮助解释其他多模态传感器数据的知识。我们提供的结果突出了我们基于对话和语义相似性的方法的潜力。我们评估我们的工作:(i)定量地,作为一种有效的方式来寻求用户对adl的主动学习的输入;(ii)定性地,通过用户研究,要求用户比较我们的方法和既定的方法。结果表明,作为主动学习系统的一部分,我们的方法具有作为传感器数据注释的免提接口的潜力。我们提供了在现实世界条件下主动学习对活动识别的挑战的见解,并确定了解决这些挑战的潜在方法。
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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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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