Vision and Acceleration Modalities: Partners for Recognizing Complex Activities

Alexander Diete, T. Sztyler, H. Stuckenschmidt
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引用次数: 8

Abstract

Wearable devices have been used widely for human activity recognition in the field of pervasive computing. One big area of in this research is the recognition of activities of daily living where especially inertial and interaction sensors like RFID tags and scanners have been used. An issue that may arise when using interaction sensors is a lack of certainty. A positive signal from an interaction sensor is not necessarily caused by a performed activity e.g, when an object is only touched but no interaction occurred afterwards. In our work, we aim to overcome this limitation and present a multi-modal egocentric-based activity recognition approach which is able to recognize the critical activities by looking at movement and object information at the same time. We present our results of combining inertial and video features to recognize human activities on different types of scenarios where we achieve a $F_{1}$-measure up to 79.6%.
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视觉和加速模式:识别复杂活动的伙伴
在普适计算领域,可穿戴设备已被广泛用于人体活动识别。这项研究的一个重要领域是对日常生活活动的识别,特别是惯性和交互传感器,如RFID标签和扫描仪已经被使用。使用交互传感器时可能出现的一个问题是缺乏确定性。来自交互传感器的积极信号不一定是由已执行的活动引起的,例如,当物体仅被触摸但随后没有发生交互时。在我们的工作中,我们的目标是克服这一限制,并提出了一种多模态以自我为中心的活动识别方法,该方法能够通过同时查看运动和对象信息来识别关键活动。我们展示了结合惯性和视频特征来识别不同类型场景下人类活动的结果,我们实现了高达79.6%的F_{1} -测量。
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