4.7 Article

Efficient Environmental Context Prediction for Lower Limb Prostheses

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSMC.2021.3084036

关键词

Cameras; Wearable robots; Uncertainty; Neural networks; Real-time systems; Sensors; Hardware; Bayesian neural network (BNN); efficient deep learning system; environmental context prediction; prostheses; uncertainty quantification

资金

  1. National Science Foundation (NSF) [1552828, 1563454, 1926998]
  2. Direct For Computer & Info Scie & Enginr
  3. Division Of Computer and Network Systems [1552828] Funding Source: National Science Foundation
  4. Directorate For Engineering
  5. Div Of Civil, Mechanical, & Manufact Inn [1926998] Funding Source: National Science Foundation

向作者/读者索取更多资源

This article focuses on the system efficiency of real-time environmental context prediction for lower limb prostheses, proposing an uncertainty-aware frame selection strategy and a dynamic Bayesian gated recurrent unit network, while also exploring the tradeoff between computational complexity and environment prediction accuracy with additional sensing modalities. Experiments demonstrate that the proposed frame selection strategy can significantly reduce computations while maintaining high accuracy, with potential for multimodality fusion.
Environmental context prediction is important for wearable robotic applications, such as terrain-adaptive control. System efficiency is critical for wearable robots, in which system resources (e.g., processors and memory) are highly constrained. This article aims to address the system efficiency of real-time environmental context prediction for lower limb prostheses. First, we develop an uncertainty-aware frame selection strategy that can dynamically select frames according to lower limb motion and uncertainty captured by Bayesian neural networks (BNNs) for environment prediction. We further propose a dynamic Bayesian gated recurrent unit (D-BGRU) network to address the inconsistent frame rate which is a side effect of the dynamic frame selection. Second, we investigate the effects on the tradeoff between computational complexity and environment prediction accuracy of adding additional sensing modalities (e.g., GPS and an on-glasses camera) into the system. Finally, we implement and optimize our framework for embedded hardware, and evaluate the real-time inference accuracy and efficiency of classifying six types of terrains. The experiments show that our proposed frame selection strategy can reduce more than 90% of the computations without sacrificing environment prediction accuracy, and can be easily extended to the situation of multimodality fusion. We achieve around 93% prediction accuracy with less than one frame to be processed per second. Our model has 6.4 million 16-bit float numbers and takes 44 ms to process each frame on a lightweight embedded platform (NVIDIA Jetson TX2).

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