Publication | Closed Access
Leveraging the crowd for annotation of retinal images
10
Citations
22
References
2015
Year
Unknown Venue
Artificial IntelligenceData AnnotationImage ClassificationAnnotation ApproachImage AnalysisMachine VisionData ScienceMachine LearningRetinal ImagesEngineeringAutomatic Annotation ToolEye TrackingCrowd-sourced AnnotationsComputer ScienceMedical Image ComputingComputer VisionAutomatic Annotation
Medical data presents a number of challenges. It tends to be unstructured, noisy and protected. To train algorithms to understand medical images, doctors can label the condition associated with a particular image, but obtaining enough labels can be difficult. We propose an annotation approach which starts with a small pool of expertly annotated images and uses their expertise to rate the performance of crowd-sourced annotations. In this paper we demonstrate how to apply our approach for annotation of large-scale datasets of retinal images. We introduce a novel data validation procedure which is designed to cope with noisy ground-truth data and with non-consistent input from both experts and crowd-workers.
| Year | Citations | |
|---|---|---|
Page 1
Page 1