A Hybrid Model and Learning-Based Force Estimation Framework for Surgical Robots
Haptic feedback to the surgeon during robotic surgery would enable safer and more immersive surgeries but estimating tissue interaction forces at the tips of robotically controlled surgical instruments has proven challenging. Few existing surgical robots can measure interaction forces directly and t...
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Zusammenfassung: | Haptic feedback to the surgeon during robotic surgery would enable safer and
more immersive surgeries but estimating tissue interaction forces at the tips
of robotically controlled surgical instruments has proven challenging. Few
existing surgical robots can measure interaction forces directly and the
additional sensor may limit the life of instruments. We present a hybrid model
and learning-based framework for force estimation for the Patient Side
Manipulators (PSM) of a da Vinci Research Kit (dVRK). The model-based component
identifies the dynamic parameters of the robot and estimates free-space joint
torque, while the learning-based component compensates for environmental
factors, such as the additional torque caused by trocar interaction between the
PSM instrument and the patient's body wall. We evaluate our method in an
abdominal phantom and achieve an error in force estimation of under 10%
normalized root-mean-squared error. We show that by using a model-based method
to perform dynamics identification, we reduce reliance on the training data
covering the entire workspace. Although originally developed for the dVRK, the
proposed method is a generalizable framework for other compliant surgical
robots. The code is available at
https://github.com/vu-maple-lab/dvrk_force_estimation. |
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DOI: | 10.48550/arxiv.2409.19970 |