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Dense motion segmentation for first-person activity recognition

机译:密集运动分割,用于第一人称活动识别

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摘要

In this paper, we propose a dense motion segmentation method for human daily activity recognition from a wearable device - "Smart Glasses". The glasses are embedded with a camera, which allows the system to automatically recognise the wearer's activities from a first-person perspective. This application can be broadly applied to patients, elderly, safety workers, e-health monitoring, or anyone requiring cognitive assistance or guidance on their activities of daily living (ADLs). We validate our system in challenging real-world scenarios, and compare two feature extraction approaches: averaged optical flow and a combined dense motion segmentation approach. We classify them using LogitBoost (on Decision Stumps) and Support Vector Machine (SVM). We also suggest the optimal settings of the classifiers through cross-validation over our ADLs database. The results show that the optical flow with average pooling has a good performance when classifying general locomotive activities. The results also indicate the benefits that dense motion segmentation features can have on reliably classify activities involving a moving object, such as hands. We achieve an overall accuracy of up to 69.76% on 12 ADLs using local classifiers, and with a Hidden Markov Model (HMM) process this accuracy improves to up to 89.59%.
机译:在本文中,我们提出了一种用于从可穿戴设备“智能眼镜”识别人类日常活动的密集运动分割方法。眼镜内置有摄像头,使系统可以从第一人称视角自动识别佩戴者的活动。此应用程序可广泛应用于患者,老年人,安全工作者,电子健康监控或任何需要认知帮助或日常生活活动指导(ADL)的人。我们在具有挑战性的真实场景中验证我们的系统,并比较两种特征提取方法:平均光流和组合密集运动分割方法。我们使用LogitBoost(在决策树桩上)和支持向量机(SVM)对它们进行分类。我们还建议通过对我们的ADL数据库进行交叉验证来建议分类器的最佳设置。结果表明,在对一般机车活动进行分类时,具有平均池化的光流​​具有良好的性能。结果还表明,密集运动分割功能可以可靠地对涉及移动对象(例如手)的活动进行分类。使用局部分类器,我们在12个ADL上实现了高达69.76%的整体准确度,并且借助隐马尔可夫模型(HMM),该准确度提高了89.59%。

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