Robotic Smart Prosthesis Arm with BCI and Kansei / Kawaii / Affective Engineering Approach. Pt I: Quantum Soft Computing Supremacy
Article ID: 1567
DOI: https://doi.org/10.30564/aia.v2i2.1567
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