CVROOct 2, 2022

Semi-autonomous Prosthesis Control Using Minimal Depth Information and Vibrotactile Feedback

arXiv:2210.00541v22 citationsh-index: 40
AI Analysis

This addresses the problem of computational demands for embedded prosthesis control in amputees, representing an incremental step towards compact vision-based systems.

The study tackled the challenge of deploying vision-based semi-autonomous prosthesis controllers by proposing a method that reconstructs object shapes from minimal depth data using four laser scanner lines, achieving functional grasping of various objects but with performance slightly below a full-depth benchmark.

Semi-autonomous prosthesis controllers based on computer vision improve performance while reducing cognitive effort. However, controllers relying on full-depth data face challenges in being deployed as embedded prosthesis controllers due to the computational demands of processing point clouds. To address this, the present study proposes a method to reconstruct the shape of various daily objects from minimal depth data. This is achieved using four concurrent laser scanner lines instead of a full point cloud. These lines represent the partial contours of an object's cross-section, enabling its dimensions and orientation to be reconstructed using simple geometry. A control prototype was implemented using a depth sensor with four laser scanners. Vibrotactile feedback was also designed to help users to correctly aim the sensor at target objects. Ten able-bodied volunteers used a prosthesis equipped with the novel controller to grasp ten objects of varying shapes, sizes, and orientations. For comparison, they also tested an existing benchmark controller that used full-depth information. The results showed that the novel controller handled all objects and, while performance improved with training, it remained slightly below that of the benchmark. This marks an important step towards a compact vision-based system for embedded depth sensing in prosthesis grasping.

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