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Experimental Deep Learning Object Detection in Real-time Colonoscopies

Adrian Ciobanu, Mihaela Luca, Tudor Barbu, Vasile Drug, Andrei Olteanu, Radu Vulpoi

20212021 International Conference on e-Health and Bioengineering (EHB)15 citationsDOI

Abstract

Real-time automatic analysis of colonoscopies are important for learning and in practice. In our experiment of object detection we used a Mobilenet Deep Learning model retrained on a Jetson Xavier NX microsystem produced by NVIDIA. The training set of colonoscopy frames was build and annotated from our database of video colonoscopies. The retrained Mobilenet network model successfully detects 10 classes of objects during the playback of real-time video colonoscopies. Such a small and powerful microsystem can be improved to become a tool for students training.

Topics & Concepts

Computer scienceMicrosystemObject detectionColonoscopyObject (grammar)Deep learningArtificial intelligenceSet (abstract data type)Computer visionPattern recognition (psychology)MedicineColorectal cancerProgramming languageNanotechnologyInternal medicineCancerMaterials scienceColorectal Cancer Screening and DetectionAdvanced Data Compression Techniques
Experimental Deep Learning Object Detection in Real-time Colonoscopies | Litcius