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Head Pose Estimation of Patients with Monocular Vision for Surgery Robot Based on Deep Learning |
Feng Pengfei1&, Li Liang2&#, Ding Hui1, Wang Guangzhi1#* |
1(Department of Biomedical Engineering, School of Medicine, Tsinghua University, Beijing 100084, China) 2(School of Biomedical Engineering and Informatics, Nanjing Medical University, Nanjing 211100, China) |
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Abstract Patient head pose estimationis one of the key technologies for autonomous and intelligent perception of neurosurgery robots. This paper aimed to use data-driven deep learning method to help the neurosurgery robot to estimate the patient′s head posture, laying the foundation for the intelligence of neurosurgery. This paper firstly established the basic mathematical relationship of the patient head pose estimation task. Next, an efficient and robust head pose labeling method was proposed to solve the problem of 2D head image pose labeling in the absence of facial features. After that, by collecting the neurosurgery scene photos from the perspective of the robot, a patient head pose estimation dataset containing a total of 79 surgical scenes and a total of 4 301 photos was constructed. Finally, the applicability of the HopeNet deep neural network in the patient head pose estimation problem was studied, and methods including cropping, rotation data augmentation, and our newly proposed rotation rate loss function improved the model performance. For the network training and evaluation, on the homologous test set 1 containing 10 surgical scenes and 386 pictures, the pose estimation based on a single perspective could reach an average of ±12.76°in three directions including yaw angle, roll angle, and pitch angle; on the heterogeneous test set 2 of 8 surgical scenes and 229 photos, the average prediction error of ±13.41° could be achieved in the three directions. The results showed that the proposed model could accurately estimate the patient′s head pose, and the proposed optimization methods could effectively improve the accuracy of the algorithm and improve the generalization performance of the model.
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Received: 15 March 2022
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Corresponding Authors:
* E-mail: wgz-dea@tsinghua.edu.cn
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About author:: &Co-first author #Member, Chinese Society of Biomedical Engineering |
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