Detecting spontaneous collaboration in dynamic group activities from noisy individual activity data

Agnes Grünerbl, G. Bahle, P. Lukowicz
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引用次数: 3

Abstract

This paper investigates the problem of recognizing activities and dynamic ad-hoc collaboration involving multiple users. Thus, we consider people performing various predominantly physical, compound activities in a smart environment (which includes personal/wearable devices). In this case, being “compound” means that the activity can be decomposed into primitive (atomic) actions that are executed by individual users. We investigate how noisy recognition of the atomic actions of individual users can be used to identify instances of cooperation at the level of the compound activities. To this end, we first introduce a hierarchical tree plan library model for activity representation. Using this new model we developed an algorithm, which allows detecting of ad-hoc team interaction without any further knowledge about roles or preliminary designed tasks. We evaluate the model and algorithm “post-mortem” with data extracted from video footage of a real nurse-emergency-training session and with increasing difficulties by artificially adding recognition-errors.
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从嘈杂的个人活动数据中发现动态群体活动中的自发协作
本文研究了多用户活动识别和动态自组织协作问题。因此,我们考虑人们在智能环境(包括个人/可穿戴设备)中进行各种主要是体力的复合活动。在这种情况下,“复合”意味着活动可以分解为由单个用户执行的基本(原子)操作。我们研究了如何使用个体用户原子行为的噪声识别来识别复合活动级别的合作实例。为此,我们首先引入了一个用于活动表示的分层树计划库模型。使用这个新模型,我们开发了一种算法,它允许在没有任何关于角色或初步设计任务的进一步知识的情况下检测特设团队交互。我们对模型和算法进行了“事后分析”,数据提取自真实护士急救培训的视频片段,并通过人为添加识别错误来增加难度。
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