MICAR: multi-inhabitant context-aware activity recognition in home environments.

IF 1.5 4区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Distributed and Parallel Databases Pub Date : 2022-04-05 DOI:10.1007/s10619-022-07403-z
Luca Arrotta, Claudio Bettini, Gabriele Civitarese
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Abstract

The sensor-based recognition of Activities of Daily Living (ADLs) in smart-home environments enables several important applications, including the continuous monitoring of fragile subjects in their homes for healthcare systems. The majority of the approaches in the literature assume that only one resident is living in the home. Multi-inhabitant ADLs recognition is significantly more challenging, and only a limited effort has been devoted to address this setting by the research community. One of the major open problems is called data association, which is correctly associating each environmental sensor event (e.g., the opening of a fridge door) with the inhabitant that actually triggered it. Moreover, existing multi-inhabitant approaches rely on supervised learning, assuming a high availability of labeled data. However, collecting a comprehensive training set of ADLs (especially in multiple-residents settings) is prohibitive. In this work, we propose MICAR: a novel multi-inhabitant ADLs recognition approach that combines semi-supervised learning and knowledge-based reasoning. Data association is performed by semantic reasoning, combining high-level context information (e.g., residents' postures and semantic locations) with triggered sensor events. The personalized stream of sensor events is processed by an incremental classifier, that is initialized with a limited amount of labeled ADLs. A novel cache-based active learning strategy is adopted to continuously improve the classifier. Our results on a dataset where up to 4 subjects perform ADLs at the same time show that MICAR reliably recognizes individual and joint activities while triggering a significantly low number of active learning queries.

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MICAR:家庭环境中多居民情境感知活动识别
在智能家居环境中,基于传感器的日常生活活动(ADLs)识别可实现多种重要应用,包括为医疗保健系统持续监测家中的脆弱对象。文献中的大多数方法都假定家中只有一位住户。而多住户 ADLs 识别则更具挑战性,研究界仅投入了有限的精力来解决这一问题。其中一个主要的未决问题叫做数据关联,即正确地将每个环境传感器事件(如打开冰箱门)与实际触发该事件的居民关联起来。此外,现有的多住户方法依赖于监督学习,假定标注数据的可用性很高。然而,收集一个全面的 ADL 训练集(尤其是在多居民环境中)是非常困难的。在这项工作中,我们提出了 MICAR:一种结合了半监督学习和知识推理的新型多居住地 ADLs 识别方法。数据关联是通过语义推理进行的,结合了高级上下文信息(如居民的姿势和语义位置)和触发的传感器事件。传感器事件的个性化流由增量分类器处理,该分类器使用有限数量的标记 ADL 进行初始化。我们采用了一种新颖的基于缓存的主动学习策略来不断改进分类器。我们在一个多达 4 名受试者同时进行 ADL 的数据集上取得的结果表明,MICAR 能可靠地识别个人和联合活动,同时触发的主动学习查询次数明显较少。
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来源期刊
Distributed and Parallel Databases
Distributed and Parallel Databases 工程技术-计算机:理论方法
CiteScore
3.50
自引率
0.00%
发文量
17
审稿时长
>12 weeks
期刊介绍: Distributed and Parallel Databases publishes papers in all the traditional as well as most emerging areas of database research, including: Availability and reliability; Benchmarking and performance evaluation, and tuning; Big Data Storage and Processing; Cloud Computing and Database-as-a-Service; Crowdsourcing; Data curation, annotation and provenance; Data integration, metadata Management, and interoperability; Data models, semantics, query languages; Data mining and knowledge discovery; Data privacy, security, trust; Data provenance, workflows, Scientific Data Management; Data visualization and interactive data exploration; Data warehousing, OLAP, Analytics; Graph data management, RDF, social networks; Information Extraction and Data Cleaning; Middleware and Workflow Management; Modern Hardware and In-Memory Database Systems; Query Processing and Optimization; Semantic Web and open data; Social Networks; Storage, indexing, and physical database design; Streams, sensor networks, and complex event processing; Strings, Texts, and Keyword Search; Spatial, temporal, and spatio-temporal databases; Transaction processing; Uncertain, probabilistic, and approximate databases.
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