Human health is closely associated with their daily behavior and environment. However, keeping a healthy lifestyle is still challenging for most people as it is difficult to recognize their living behaviors and identify their surrounding situations to take appropriate action. Human activity recognition is a promising approach to building a behavior model of users, by which users can get feedback about their habits and be encouraged to develop a healthier lifestyle. In this paper, we present a smart light wearable badge with six kinds of sensors, including an infrared array sensor MLX90640 offering privacy-preserving, low-cost, and non-invasive features, to recognize daily activities in a realistic unmodified kitchen environment. A multi-channel convolutional neural network (MC-CNN) based on data and feature fusion methods is applied to classify 14 human activities associated with potentially unhealthy habits. Meanwhile, we evaluate the impact of the infrared array sensor on the recognition accuracy of these activities. We demonstrate the performance of the proposed work to detect the 14 activities performed by ten volunteers with an average accuracy of 92.44 % and an F1 score of 88.27 %.
翻译:然而,保持健康的生活方式对于大多数人来说仍是一个挑战,因为很难认识他们的生活行为,也难以辨别他们周围的情况,以便采取适当行动。人类活动的承认是建立用户行为模式的一个很有希望的方法,用户可以通过这种模式获得有关其习惯的反馈,并鼓励他们发展一种更健康的生活方式。在本文中,我们展示了一个智能的光戴徽章,带有六种感应器,包括红外线阵列传感器MLX90640, 提供隐私保护、低成本和非侵入性特征,以识别在现实的、未经改变的厨房环境中的日常活动。基于数据和特征融合方法的多频道神经网络(MC-CNN)被用于分类14种可能具有不健康习惯的人类活动。与此同时,我们评估红外线阵列传感器对这些活动的准确度的影响。我们展示了为检测10名志愿人员开展的14项活动而拟议开展的工作的绩效,平均精确度为92.44%,F1分为88.27。