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Capsule robot pose and mechanism state detection in ultrasound using attention-based hierarchical deep learning

Xiaoyun Liu, Daniel S. Esser, Brandon Wagstaff, Anna Zavodni, Naomi Matsuura, Jonathan Kelly, Eric Diller

Year
2022
Citations
16
Access
Open access

Abstract

Ingestible robotic capsules with locomotion capabilities and on-board sampling mechanism have great potential for non-invasive diagnostic and interventional use in the gastrointestinal tract. Real-time tracking of capsule location and operational state is necessary for clinical application, yet remains a significant challenge. To this end, we propose an approach that can simultaneously determine the mechanism state and in-plane 2D pose of millimeter capsule robots in an anatomically representative environment using ultrasound imaging. Our work proposes an attention-based hierarchical deep learning approach and adapts the success of transfer learning towards solving the multi-task tracking problem with limited dataset. To train the neural networks, we generate a representative dataset of a robotic capsule within ex-vivo porcine stomachs. Experimental results show that the accuracy of capsule state classification is 97%, and the mean estimation errors for orientation and centroid position are 2.0 degrees and 0.24 mm (1.7% of the capsule's body length) on the hold-out test set. Accurate detection of the capsule while manipulated by an external magnet in a porcine stomach and colon is also demonstrated. The results suggest our proposed method has the potential for advancing the wireless capsule-based technologies by providing accurate detection of capsule robots in clinical scenarios.

Keywords

Artificial intelligenceComputer scienceCapsuleDeep learningRobotOrientation (vector space)Computer visionTransfer of learningPattern recognition (psychology)Biology

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