2023
DOI: 10.1109/les.2022.3190707
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Novel Low Memory Footprint DNN Models for Edge Classification of Surgeons’ Postures

Abstract: Skill assessment is fundamental to enhance current laparoscopic surgical training and reduce the incidence of musculoskeletal injuries from performing these procedures. Recently, deep neural networks (DNNs) have been used to improve human posture and surgeons' skills training. While they work well in lab, they normally require significant computational power which makes it impossible to use them on edge devices. This paper presents two low memory footprint DNN models used for classifying laparoscopic surgical … Show more

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