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Activity Recognition of Assembly Tasks Using Body-Worn Microphones and Accelerometers

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Activity Recognition of Assembly Tasks Using Body-Worn Microphones and Accelerometers. / Ward, Jamie A; Lukowicz, Paul; Troster, Gerhard et al.
In: IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. 28, No. 10, 2006, p. 1553-1567.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Ward, JA, Lukowicz, P, Troster, G & Starner, TE 2006, 'Activity Recognition of Assembly Tasks Using Body-Worn Microphones and Accelerometers', IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 28, no. 10, pp. 1553-1567. <http://dx.doi.org/10.1109/TPAMI.2006.197>

APA

Ward, J. A., Lukowicz, P., Troster, G., & Starner, T. E. (2006). Activity Recognition of Assembly Tasks Using Body-Worn Microphones and Accelerometers. IEEE Transactions on Pattern Analysis and Machine Intelligence, 28(10), 1553-1567. http://dx.doi.org/10.1109/TPAMI.2006.197

Vancouver

Ward JA, Lukowicz P, Troster G, Starner TE. Activity Recognition of Assembly Tasks Using Body-Worn Microphones and Accelerometers. IEEE Transactions on Pattern Analysis and Machine Intelligence. 2006;28(10):1553-1567.

Author

Ward, Jamie A ; Lukowicz, Paul ; Troster, Gerhard et al. / Activity Recognition of Assembly Tasks Using Body-Worn Microphones and Accelerometers. In: IEEE Transactions on Pattern Analysis and Machine Intelligence. 2006 ; Vol. 28, No. 10. pp. 1553-1567.

Bibtex

@article{9a647eb999e04eb7872172d9f9667c00,
title = "Activity Recognition of Assembly Tasks Using Body-Worn Microphones and Accelerometers",
abstract = "In order to provide relevant information to mobile users, such as workers engaging in the manual tasks of maintenance and assembly, a wearable computer requires information about the user's specific activities. This work focuses on the recognition of activities that are characterized by a hand motion and an accompanying sound. Suitable activities can be found in assembly and maintenance work. Here, we provide an initial exploration into the problem domain of continuous activity recognition using on-body sensing. We use a mock {"}wood workshop” assembly task to ground our investigation. We describe a method for the continuous recognition of activities (sawing, hammering, filing, drilling, grinding, sanding, opening a drawer, tightening a vise, and turning a screwdriver) using microphones and three-axis accelerometers mounted at two positions on the user's arms. Potentially {"}interesting” activities are segmented from continuous streams of data using an analysis of the sound intensity detected at the two different locations. Activity classification is then performed on these detected segments using linear discriminant analysis (LDA) on the sound channel and hidden Markov models (HMMs) on the acceleration data. Four different methods at classifier fusion are compared for improving these classifications. Using user-dependent training, we obtain continuous average recall and precision rates (for positive activities) of 78 percent and 74 percent, respectively. Using user-independent training (leave-one-out across five users), we obtain recall rates of 66 percent and precision rates of 63 percent. In isolation, these activities were recognized with accuracies of 98 percent, 87 percent, and 95 percent for the user-dependent, user-independent, and user-adapted cases, respectively.",
keywords = "cs_eprint_id, 1624 cs_uid, 382",
author = "Ward, {Jamie A} and Paul Lukowicz and Gerhard Troster and Starner, {Thad E.}",
year = "2006",
language = "English",
volume = "28",
pages = "1553--1567",
journal = "IEEE Transactions on Pattern Analysis and Machine Intelligence",
issn = "0162-8828",
publisher = "IEEE Computer Society",
number = "10",

}

RIS

TY - JOUR

T1 - Activity Recognition of Assembly Tasks Using Body-Worn Microphones and Accelerometers

AU - Ward, Jamie A

AU - Lukowicz, Paul

AU - Troster, Gerhard

AU - Starner, Thad E.

PY - 2006

Y1 - 2006

N2 - In order to provide relevant information to mobile users, such as workers engaging in the manual tasks of maintenance and assembly, a wearable computer requires information about the user's specific activities. This work focuses on the recognition of activities that are characterized by a hand motion and an accompanying sound. Suitable activities can be found in assembly and maintenance work. Here, we provide an initial exploration into the problem domain of continuous activity recognition using on-body sensing. We use a mock "wood workshop” assembly task to ground our investigation. We describe a method for the continuous recognition of activities (sawing, hammering, filing, drilling, grinding, sanding, opening a drawer, tightening a vise, and turning a screwdriver) using microphones and three-axis accelerometers mounted at two positions on the user's arms. Potentially "interesting” activities are segmented from continuous streams of data using an analysis of the sound intensity detected at the two different locations. Activity classification is then performed on these detected segments using linear discriminant analysis (LDA) on the sound channel and hidden Markov models (HMMs) on the acceleration data. Four different methods at classifier fusion are compared for improving these classifications. Using user-dependent training, we obtain continuous average recall and precision rates (for positive activities) of 78 percent and 74 percent, respectively. Using user-independent training (leave-one-out across five users), we obtain recall rates of 66 percent and precision rates of 63 percent. In isolation, these activities were recognized with accuracies of 98 percent, 87 percent, and 95 percent for the user-dependent, user-independent, and user-adapted cases, respectively.

AB - In order to provide relevant information to mobile users, such as workers engaging in the manual tasks of maintenance and assembly, a wearable computer requires information about the user's specific activities. This work focuses on the recognition of activities that are characterized by a hand motion and an accompanying sound. Suitable activities can be found in assembly and maintenance work. Here, we provide an initial exploration into the problem domain of continuous activity recognition using on-body sensing. We use a mock "wood workshop” assembly task to ground our investigation. We describe a method for the continuous recognition of activities (sawing, hammering, filing, drilling, grinding, sanding, opening a drawer, tightening a vise, and turning a screwdriver) using microphones and three-axis accelerometers mounted at two positions on the user's arms. Potentially "interesting” activities are segmented from continuous streams of data using an analysis of the sound intensity detected at the two different locations. Activity classification is then performed on these detected segments using linear discriminant analysis (LDA) on the sound channel and hidden Markov models (HMMs) on the acceleration data. Four different methods at classifier fusion are compared for improving these classifications. Using user-dependent training, we obtain continuous average recall and precision rates (for positive activities) of 78 percent and 74 percent, respectively. Using user-independent training (leave-one-out across five users), we obtain recall rates of 66 percent and precision rates of 63 percent. In isolation, these activities were recognized with accuracies of 98 percent, 87 percent, and 95 percent for the user-dependent, user-independent, and user-adapted cases, respectively.

KW - cs_eprint_id

KW - 1624 cs_uid

KW - 382

M3 - Journal article

VL - 28

SP - 1553

EP - 1567

JO - IEEE Transactions on Pattern Analysis and Machine Intelligence

JF - IEEE Transactions on Pattern Analysis and Machine Intelligence

SN - 0162-8828

IS - 10

ER -