A Predictive Approach for Enhancing Accuracy in Remote Robotic Surgery Using Informer Model
Journal:
arXiv
Published Date:
Jan 24, 2025
Abstract
Precise and real-time estimation of the robotic arm's position on the
patient's side is essential for the success of remote robotic surgery in
Tactile Internet (TI) environments. This paper presents a prediction model
based on the Transformer-based Informer framework for accurate and efficient
position estimation. Additionally, it combines a Four-State Hidden Markov Model
(4-State HMM) to simulate realistic packet loss scenarios. The proposed
approach addresses challenges such as network delays, jitter, and packet loss
to ensure reliable and precise operation in remote surgical applications. The
method integrates the optimization problem into the Informer model by embedding
constraints such as energy efficiency, smoothness, and robustness into its
training process using a differentiable optimization layer. The Informer
framework uses features such as ProbSparse attention, attention distilling, and
a generative-style decoder to focus on position-critical features while
maintaining a low computational complexity of O(L log L). The method is
evaluated using the JIGSAWS dataset, achieving a prediction accuracy of over 90
percent under various network scenarios. A comparison with models such as TCN,
RNN, and LSTM demonstrates the Informer framework's superior performance in
handling position prediction and meeting real-time requirements, making it
suitable for Tactile Internet-enabled robotic surgery.