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Main Authors: Schwarz, Alexander, Mehrfard, Arian, Amirkhani, Golchehr, Phalen, Henry, Ma, Justin H., Grupp, Robert B., Martin-Gomez, Alejandro, Armand, Mehran
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.07104
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author Schwarz, Alexander
Mehrfard, Arian
Amirkhani, Golchehr
Phalen, Henry
Ma, Justin H.
Grupp, Robert B.
Martin-Gomez, Alejandro
Armand, Mehran
author_facet Schwarz, Alexander
Mehrfard, Arian
Amirkhani, Golchehr
Phalen, Henry
Ma, Justin H.
Grupp, Robert B.
Martin-Gomez, Alejandro
Armand, Mehran
contents Continuum Dexterous Manipulators (CDMs) are well-suited tools for minimally invasive surgery due to their inherent dexterity and reachability. Nonetheless, their flexible structure and non-linear curvature pose significant challenges for shape-based feedback control. The use of Fiber Bragg Grating (FBG) sensors for shape sensing has shown great potential in estimating the CDM's tip position and subsequently reconstructing the shape using optimization algorithms. This optimization, however, is under-constrained and may be ill-posed for complex shapes, falling into local minima. In this work, we introduce a novel method capable of directly estimating a CDM's shape from FBG sensor wavelengths using a deep neural network. In addition, we propose the integration of uncertainty estimation to address the critical issue of uncertainty in neural network predictions. Neural network predictions are unreliable when the input sample is outside the training distribution or corrupted by noise. Recognizing such deviations is crucial when integrating neural networks within surgical robotics, as inaccurate estimations can pose serious risks to the patient. We present a robust method that not only improves the precision upon existing techniques for FBG-based shape estimation but also incorporates a mechanism to quantify the models' confidence through uncertainty estimation. We validate the uncertainty estimation through extensive experiments, demonstrating its effectiveness and reliability on out-of-distribution (OOD) data, adding an additional layer of safety and precision to minimally invasive surgical robotics.
format Preprint
id arxiv_https___arxiv_org_abs_2405_07104
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Uncertainty-Aware Shape Estimation of a Surgical Continuum Manipulator in Constrained Environments using Fiber Bragg Grating Sensors
Schwarz, Alexander
Mehrfard, Arian
Amirkhani, Golchehr
Phalen, Henry
Ma, Justin H.
Grupp, Robert B.
Martin-Gomez, Alejandro
Armand, Mehran
Robotics
Continuum Dexterous Manipulators (CDMs) are well-suited tools for minimally invasive surgery due to their inherent dexterity and reachability. Nonetheless, their flexible structure and non-linear curvature pose significant challenges for shape-based feedback control. The use of Fiber Bragg Grating (FBG) sensors for shape sensing has shown great potential in estimating the CDM's tip position and subsequently reconstructing the shape using optimization algorithms. This optimization, however, is under-constrained and may be ill-posed for complex shapes, falling into local minima. In this work, we introduce a novel method capable of directly estimating a CDM's shape from FBG sensor wavelengths using a deep neural network. In addition, we propose the integration of uncertainty estimation to address the critical issue of uncertainty in neural network predictions. Neural network predictions are unreliable when the input sample is outside the training distribution or corrupted by noise. Recognizing such deviations is crucial when integrating neural networks within surgical robotics, as inaccurate estimations can pose serious risks to the patient. We present a robust method that not only improves the precision upon existing techniques for FBG-based shape estimation but also incorporates a mechanism to quantify the models' confidence through uncertainty estimation. We validate the uncertainty estimation through extensive experiments, demonstrating its effectiveness and reliability on out-of-distribution (OOD) data, adding an additional layer of safety and precision to minimally invasive surgical robotics.
title Uncertainty-Aware Shape Estimation of a Surgical Continuum Manipulator in Constrained Environments using Fiber Bragg Grating Sensors
topic Robotics
url https://arxiv.org/abs/2405.07104