Designing for Movement: Evaluating Computational Models Using LMA Effort Qualities


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Date
2014-04-29
Authors
Maranan, Diego S.
Alaoui, Sarah Fdili
Schiphorst, Thecla
Pasquier, Philippe
Subyen, Pattarawut
Bartram, Lyn
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Abstract
While single-accelerometers are a common consumer embedded sensors, their use in representing movement data as an intelligent resource remains scarce. Accelerometers have been used in movement recognition systems, but rarely to assess expressive qualities of movement. We present a prototype of wearable system for the real-time detection and classification of movement quality using acceleration data. The system applies Laban Movement Analysis (LMA) to recognize Laban Effort qualities from acceleration input using a Machine Learning software that generates classifications in real time. Existing LMA-recognition systems rely on motion capture data and video data, and can only be deployed in controlled settings. Our single-accelerometer system is portable and can be used under a wide range of environmental conditions. We evaluate the performance of the system, present two applications using the system in the digital arts and discuss future directions.
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Maranan, D. S., Alaoui, S. F., Schiphorst, T., Pasquier, P., Subyen, P., & Bartram, L. (2014). Designing for Movement: Evaluating Computational Models Using LMA Effort Qualities. Proceedings of the 32Nd Annual ACM Conference on Human Factors in Computing Systems, 991–1000. https://doi.org/10.1145/2556288.2557251
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10.1145/2556288.2557251