Distance Metric-Based Learning with Interpolated Latent Features for Location Classification in Endoscopy Image and Video
Mohammad Reza Mohebbian, Khan A. Wahid, Anh Dinh, and Paul Babyn

TL;DR
This paper introduces a few-shot learning approach using distance metric learning, transfer learning, and manifold mixup to accurately localize GI tract regions in endoscopy images with limited data.
Contribution
It presents a novel few-shot learning method combining transfer learning and manifold mixup for endoscopy frame localization, effective with minimal annotated data.
Findings
Achieved high accuracy with only 78 CE and 27 WCE annotated frames.
Outperformed traditional categorical cross-entropy methods in localization tasks.
Validated the approach with expert subjective evaluation.
Abstract
Conventional Endoscopy (CE) and Wireless Capsule Endoscopy (WCE) are known tools for diagnosing gastrointestinal (GI) tract disorders. Detecting the anatomical location of GI tract can help clinicians to determine a more appropriate treatment plan, can reduce repetitive endoscopy and is important in drug-delivery. There are few research that address detecting anatomical location of WCE and CE images using classification, mainly because of difficulty in collecting data and anotating them. In this study, we present a few-shot learning method based on distance metric learning which combines transfer-learning and manifold mixup scheme for localizing endoscopy frames and can be trained on few samples. The manifold mixup process improves few-shot learning by increasing the number of training epochs while reducing overfitting, as well as providing more accurate decision boundaries. A dataset…
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Taxonomy
TopicsGastrointestinal Bleeding Diagnosis and Treatment · Colorectal Cancer Screening and Detection · Domain Adaptation and Few-Shot Learning
MethodsMixup · Manifold Mixup
