Surgical audio information as base for haptic feedback in robotic-assisted procedures
Alfredo Illanes, Anna Schaufler, Thomas Sühn, Axel Boese, Roland S. Croner, Michael Friebe
- 发表年份
- 2020
- 引用次数
- 11
- 访问权限
- 开放获取
摘要
Abstract This work aims to demonstrate the feasibility that haptic information can be acquired from a da Vinci robotic tool using audio sensing according to sensor placement requirements in a real clinical scenario. For that, two potential audio sensor locations were studied using an experimental setup for performing, in a repeatable way, interactions of a da Vinci forceps with three different tissues. The obtained audio signals were assessed in terms of their resulting signal-to-noise-ratio (SNR) and their capability to distinguish between different tissues. A spectral energy distribution analysis using Discrete Wavelet Transformation was performed to extract signal signatures from the tested tissues. Results show that a high SNR was obtained in most of the audio recordings acquired from both studied positions. Additionally, evident spectral energy-related patterns could be extracted from the audio signals allowing us to distinguish between different palpated tissues.
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