Force Estimation from OCT Volumes using 3D CNNs
Nils Gessert, Jens Beringhoff, Christoph Otte, Alexander Schlaefer

TL;DR
This paper presents a novel deep learning approach using 3D CNNs to estimate interaction forces directly from OCT volumes, improving accuracy over surface-based methods for surgical applications.
Contribution
Introduces a Siamese 3D CNN architecture for force estimation from OCT volumes, outperforming existing methods and demonstrating the benefit of subsurface deformation data.
Findings
Achieves mean average error of 7.7 mN in force estimation.
Outperforms single-path and surface-only methods.
Shows good generalization across different tissue subjects.
Abstract
\textit{Purpose} Estimating the interaction forces of instruments and tissue is of interest, particularly to provide haptic feedback during robot assisted minimally invasive interventions. Different approaches based on external and integrated force sensors have been proposed. These are hampered by friction, sensor size, and sterilizability. We investigate a novel approach to estimate the force vector directly from optical coherence tomography image volumes. \textit{Methods} We introduce a novel Siamese 3D CNN architecture. The network takes an undeformed reference volume and a deformed sample volume as an input and outputs the three components of the force vector. We employ a deep residual architecture with bottlenecks for increased efficiency. We compare the Siamese approach to methods using difference volumes and two-dimensional projections. Data was generated using a robotic setup…
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