Multi-scale Conditional Random Fields for first-person activity recognition

PerCom(2014)

引用 59|浏览56
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摘要
We propose a novel pervasive system to recognise human daily activities from a wearable device. The system is designed in a form of reading glasses, named `Smart Glasses', integrating a 3-axis accelerometer and a first-person view camera. Our aim is to classify user's activities of daily living (ADLs) based on both vision and head motion data. This ego-activity recognition system not only allows caretakers to track on a specific person (such as patient or elderly people), but also has the potential to remind/warn people with cognitive impairments of hazardous situations. We present the following contributions in this paper: a feature extraction method from accelerometer and video; a classification algorithm integrating both locomotive (body motions) and stationary activities (without or with small motions); a novel multi-scale dynamic graphical model structure for structured classification over time. We collect, train and validate our system on a large dataset containing 20 hours of ADLs data, including 12 daily activities under different environmental settings. Our method improves the classification performance (F-Score) of conventional approaches from 43.32%(video features) and 66.02%(acceleration features) by an average of 20-40% to 84.45%, with an overall accuracy of 90.04% in realistic ADLs.
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关键词
first-person activity recognition,head motion data,video signal processing,smart glasses,classification algorithm,pervasive system,f-score,multiscale dynamic graphical model structure,adl,geriatrics,3-axis accelerometer,vision data,feature extraction method,cognitive impairments,activities-of-daily living,multiscale conditional random fields,feature extraction,image classification,ego-activity recognition system,image sequences,cameras,locomotive activities,first-person view camera,object recognition,reading glasses,accelerometers,smart phones,stationary activities,classification performance,mobile computing,medical image processing,activities of daily living,graphical models,vectors,f score,acceleration,sensors
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