Published April 2, 2024 | Version v1
Dataset Open

VCE-AnomalyNet Dataset

  • 1. ROR icon Indira Gandhi Delhi Technical University for Women
  • 2. ROR icon Delhi Technological University
  • 3. ROR icon All India Institute of Medical Sciences

Description

Video capsule endoscopy (VCE) is a minimally invasive diagnostic technique that helps in the detection of various anomalies like polyps, ulcers, aphthae, etc, within the intestinal lumen. Due to the high no. of frames in VCE and the low doctor-to-patient ratio across the globe, the inspection time of VCE is about 2-4 hours. Research has shown that Artificial Intelligence (AI) has the potential to decrease the inspection time in VCE reading and improve upon the false-positive rates. However, the lack of AI data is a big hindrance to it. To address this issue, we present the VCE-AnomalyNet Dataset, a new AI dataset fueling AI precision in anomaly detection for VCE. The dataset comprises 108,832 accurately labeled frames with bounding box annotations in YOLO (You Only Look Once) format. These frames have been compiled from multiple open-source datasets, aiming to support research in automatic anomaly detection in VCE.

Files

VCE-AnomalyNet Dataset.zip

Files (20.7 GB)

Name Size Download all
md5:d8353a5db94b6ab657c4e82aa6c6093b
20.7 GB Preview Download
md5:1f35ad42ddc96907490fad817e83d7d5
164.2 kB Preview Download