Design of an Affordable Prosthetic Arm Equipped with Deep Learning Vision-Based Manipulation
Alishba Imran, William Escobar, Freidoon Barez

TL;DR
This paper presents a low-cost, 3D-printed prosthetic arm equipped with deep learning vision for grasping, achieving high success rates and aiming to improve accessibility and usability for amputees worldwide.
Contribution
It introduces a novel affordable prosthetic arm with integrated deep learning-based grasping, reducing costs significantly and demonstrating effective generalization in manipulation tasks.
Findings
78% grasp success rate on unseen objects
Generalizes across multiple objects for manipulation
Reduces prosthetic cost from $10,000 to $700
Abstract
Many amputees throughout the world are left with limited options to personally own a prosthetic arm due to the expensive cost, mechanical system complexity, and lack of availability. The three main control methods of prosthetic hands are: (1) body-powered control, (2) extrinsic mechanical control, and (3) myoelectric control. These methods can perform well under a controlled situation but will often break down in clinical and everyday use due to poor robustness, weak adaptability, long-term training, and heavy mental burden during use. This paper lays the complete outline of the design process of an affordable and easily accessible novel prosthetic arm that reduces the cost of prosthetics from 700 on average. The 3D printed prosthetic arm is equipped with a depth camera and closed-loop off-policy deep learning algorithm to help form grasps to the object in view. Current work…
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