Using Supervised Deep-Learning to Model Edge-FBG Shape Sensors
Samaneh Manavi Roodsari, Antal Huck-Horvath, Sara Freund, Azhar Zam,, Georg Rauter, Wolfgang Schade, Philippe C. Cattin

TL;DR
This paper explores deep learning models, including hyperparameter optimization and Siamese networks, to improve shape prediction accuracy of edge-FBG sensors in minimally invasive robotic surgeries.
Contribution
It introduces a thorough investigation of neural network architectures and training strategies, including hyperparameter tuning and discriminative training, for edge-FBG sensor shape estimation.
Findings
Median tip error of 3.11 mm achieved
Hyperband algorithm effectively optimized model hyperparameters
Discriminative Siamese network improved shape prediction accuracy
Abstract
Continuum robots in robot-assisted minimally invasive surgeries provide adequate access to target anatomies that are not directly reachable through small incisions. Achieving precise and reliable motion control of such snake-like manipulators necessitates an accurate navigation system that requires no line-of-sight and is immune to electromagnetic noises. Fiber Bragg Grating (FBG) shape sensors, particularly edge-FBGs, are promising tools for this task. However, in edge-FBG sensors, the intensity ratio between Bragg wavelengths carries the strain information that can be affected by undesired bending-related phenomena, making standard characterization techniques less suitable for these sensors. We showed in our previous work that a deep learning model has the potential to extract the strain information from the full edge-FBG spectrum and accurately predict the sensor's shape. In this…
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Taxonomy
TopicsAdvanced Fiber Optic Sensors · Advanced Fiber Laser Technologies · Optical Coherence Tomography Applications
