Abstract
Disability may limit someone to move freely, especially when the severity of the disability is high. In order to help disabled people control their wheelchair, head movement-based control is preferred due to its reliability. This paper proposed a head direction detector framework which can be applied to wheelchair control. First, face and nose were detected from a video frame using Haar cascade classfier. Then, the detected bounding boxes were used to initialize Kernelized Correlation Filters tracker. Direction of a head was determined by relative position of the nose to the face, extracted from tracker's bounding boxes. Results show that the method effectively detect head direction indicated by 82% accuracy and very low detection or tracking failure.
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CITATION STYLE
Utaminingrum, F., Sari, Y. A., Adikara, P. P., Syauqy, D., & Adinugroho, S. (2018). Hybrid head tracking for wheelchair control using Haar cascade classifsier and KCF tracker. Telkomnika (Telecommunication Computing Electronics and Control), 16(4), 1616–1624. https://doi.org/10.12928/TELKOMNIKA.v16i4.6595
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