通过本体论和概率推理对日常生活中交错活动的无监督识别

Daniele Riboni, T. Sztyler, Gabriele Civitarese, H. Stuckenschmidt
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引用次数: 94

摘要

日常生活活动识别(ADLs)是几种泛在计算应用的使能技术。在该领域,大多数活动识别系统依赖于监督学习方法从标记数据集中提取活动模型。这种方法的一个固有问题在于获取全面的活动数据集,这是昂贵的,并且可能侵犯个人隐私。当关注复杂的adl时,这个问题尤其具有挑战性,因为它的特点是执行的内部和人际差异很大。在本文中,我们提出了一种利用活动语义、上下文数据和传感设备来识别复杂adl的无监督方法。通过本体推理,我们推导出活动和传感器事件之间的语义关联。通过将观察到的传感器事件与语义关联相匹配,统计推理器对发生的活动形成初步假设。这些假设是通过概率推理,利用从本体派生的语义约束来改进的。对真实世界数据集的大量实验表明,我们的无监督方法的准确性可与最先进的监督方法相媲美。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised recognition of interleaved activities of daily living through ontological and probabilistic reasoning
Recognition of activities of daily living (ADLs) is an enabling technology for several ubiquitous computing applications. In this field, most activity recognition systems rely on supervised learning methods to extract activity models from labeled datasets. An inherent problem of that approach consists in the acquisition of comprehensive activity datasets, which is expensive and may violate individuals' privacy. The problem is particularly challenging when focusing on complex ADLs, which are characterized by large intra- and inter-personal variability of execution. In this paper, we propose an unsupervised method to recognize complex ADLs exploiting the semantics of activities, context data, and sensing devices. Through ontological reasoning, we derive semantic correlations among activities and sensor events. By matching observed sensor events with semantic correlations, a statistical reasoner formulates initial hypotheses about the occurred activities. Those hypotheses are refined through probabilistic reasoning, exploiting semantic constraints derived from the ontology. Extensive experiments with real-world datasets show that the accuracy of our unsupervised method is comparable to the one of state of the art supervised approaches.
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