Sparsity Analysis of a Sonomyographic Muscle-Computer Interface
Nima Akhlaghi, Ananya Dhawan, Amir A. Khan, Biswarup Mukherjee, Cecile, Truong, Siddhartha Sikdar

TL;DR
This study identifies optimal ultrasound transducer placement on the forearm and demonstrates that a sparse set of scanlines can achieve high classification accuracy for muscle motion, enabling simpler and more efficient muscle-computer interfaces.
Contribution
The paper shows that a small subset of ultrasound scanlines suffices for accurate motion classification, reducing hardware complexity and power consumption in sonomyographic MCIs.
Findings
Maximum muscle deformation between 30-50% of forearm length.
94.6% classification accuracy with full scanlines.
94.5% accuracy with just 4 equally-spaced scanlines.
Abstract
Objective: The objectives of this paper are to determine the optimal location for ultrasound transducer placement on the anterior forearm for imaging maximum muscle deformations during different hand motions and to investigate the effect of using a sparse set of ultrasound scanlines for motion classification for ultrasound-based muscle computer interfaces (MCIs). Methods: The optimal placement of the ultrasound transducer along the forearm is identified using freehand 3D reconstructions of the muscle thickness during rest and motion completion. From the ultrasound images acquired from the optimally placed transducer, we determine classification accuracy with equally spaced scanlines across the cross-sectional field-of-view (FOV). Furthermore, we investigated the unique contribution of each scanline to class discrimination using Fisher criteria (FC) and mutual information (MI) with…
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