Name | DL | Torrents | Total Size | Joe's Recommended Mirror List [edit] | 233 | 8.28TB | 2486 | 0 | Computer Vision [edit] | 79 | 1.41TB | 705 | 0 | Medical [edit] | 87 | 2.20TB | 944 | 0 | Fundus Imaging [edit] | 11 | 67.30GB | 128 | 0 |
DRIMDB.rar | 17.07MB |
Type: Dataset
Tags: fundus
Bibtex:
Tags: fundus
Bibtex:
@article{, title= {DRIMDB (Diabetic Retinopathy Images Database) Database for Quality Testing of Retinal Images}, keywords= {fundus}, author= {}, abstract= {Retinal image quality assessment (IQA) is a crucial process for automated retinal image analysis systems to obtain an accurate and successful diagnosis of retinal diseases. Consequently, the first step in a good retinal image analysis system is measuring the quality of the input image. We present an approach for finding medically suitable retinal images for retinal diagnosis. We used a three-class grading system that consists of good, bad, and outlier classes. We created a retinal image quality dataset with a total of 216 consecutive images called the Diabetic Retinopathy Image Database. We identified the suitable images within the good images for automatic retinal image analysis systems using a novel method. Subsequently, we evaluated our retinal image suitability approach using the Digital Retinal Images for Vessel Extraction and Standard Diabetic Retinopathy Database Calibration level 1 public datasets. The results were measured through the F1 metric, which is a harmonic mean of precision and recall metrics. The highest F1 scores of the IQA tests were 99.60%, 96.50%, and 85.00% for good, bad, and outlier classes, respectively. Additionally, the accuracy of our suitable image detection approach was 98.08%. Our approach can be integrated into any automatic retinal analysis system with sufficient performance scores. Good: https://i.imgur.com/D5unNKs.png Bad: https://i.imgur.com/slFzaCZ.png Outlier: https://i.imgur.com/eG4PDet.png}, terms= {}, license= {}, superseded= {}, url= {https://pubmed.ncbi.nlm.nih.gov/24718384/} }