Shape-Interpretable Visual Self-Modeling Enables Geometry-Aware Continuum Robot Control explores Develop a vision-based self-modeling framework for flexible and geometry-aware control of continuum robots using shape-interpretable data.. Commercial viability score: 7/10 in Robotics Control.
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