| Literature DB >> 29250590 |
Mehmet Turan1, Jahanzaib Shabbir2, Helder Araujo2, Ender Konukoglu3, Metin Sitti1.
Abstract
A reliable, real time localization functionality is crutial for actively controlled capsule endoscopy robots, which are an emerging, minimally invasive diagnostic and therapeutic technology for the gastrointestinal (GI) tract. In this study, we extend the success of deep learning approaches from various research fields to the problem of sensor fusion for endoscopic capsule robots. We propose a multi-sensor fusion based localization approach which combines endoscopic camera information and magnetic sensor based localization information. The results performed on real pig stomach dataset show that our method achieves sub-millimeter precision for both translational and rotational movements.Entities:
Keywords: Endoscopic Capsule Robots; RNN-CNN (RNN:Recurrent Neural Network, CNN: Convolutional Neural Network); Deep Learning based Sensor Fusion
Year: 2017 PMID: 29250590 PMCID: PMC5727155 DOI: 10.1007/s41315-017-0039-1
Source DB: PubMed Journal: Int J Intell Robot Appl ISSN: 2366-598X
Fig. 1Experimental setup
Fig. 3System architecture diagram
Fig. 2Vessel detection and enhancement
Fig. 4Magnetic localization system
Fig. 5Information flow through the hidden units of the LSTM
Fig. 6Sample images from dataset
Fig. 8Trajectory length versus translation error
Fig. 9Trajectory length versus rotation error
Fig. 7Plotted trajectories