Region of Interest-guided Unsupervised Anomaly Detection of Forceps Force

The lack of haptic feedback in robotic surgical systems can lead to unintended tissue damage due to excessive mechanical force. In this study, we propose an approach by formulating the force feedback problem as an image-based anomaly detection task. Our method employs Bidirectional Generative Advers...

Full description

Saved in:
Bibliographic Details
Published inTransactions of Japanese Society for Medical and Biological Engineering Vol. Annual62; no. Abstract; p. 125_2
Main Authors 庄, 文輝, 中尾, 恵, 粂, 直人, 増井, 仁彦
Format Journal Article
LanguageJapanese
Published 公益社団法人 日本生体医工学会 2024
Japanese Society for Medical and Biological Engineering
Online AccessGet full text
ISSN1347-443X
1881-4379
DOI10.11239/jsmbe.Annual62.125_2

Cover

More Information
Summary:The lack of haptic feedback in robotic surgical systems can lead to unintended tissue damage due to excessive mechanical force. In this study, we propose an approach by formulating the force feedback problem as an image-based anomaly detection task. Our method employs Bidirectional Generative Adversarial Networks (BiGANs) integrated with a Region of Interest (ROI) localization module to enhance the model's attention on the contact area between surgical instruments and tissue. The model is trained to distinguish normal and abnormal force samples based on deformation features in an organ. Extensive experiments on an ex vivo porcine spleen manipulation dataset demonstrate the efficacy of our proposed method in accurately detecting abnormal forces.
ISSN:1347-443X
1881-4379
DOI:10.11239/jsmbe.Annual62.125_2