A Generic Pixel Pitch Calibration Method for Fundus Camera via Automated ROI Extraction.

Sensors (Basel)

Department of Eye Disease Control and Prevention, Shanghai Eye Disease Prevention and Treatment Center, Shanghai Eye Hospital, Shanghai 200040, China.

Published: November 2022

AI Article Synopsis

  • - Pixel pitch calibration is crucial for accurately measuring fundus structures in images, aiding in the diagnosis of diseases like diabetes and arteriosclerosis, but traditional methods rely on specific camera details that may not be available.
  • - The new method uses automated detection of the region of interest (ROI) and optic disc to analyze a large number of fundus images, allowing for pixel pitch estimation without needing chessboard images or detailed camera specs.
  • - Results show consistent ROI-disc ratios across 40,600 images taken with various cameras, leading to accurate pixel pitch estimates that are within 5% of manual measurements, highlighting the effectiveness of this automated approach.

Article Abstract

Pixel pitch calibration is an essential step to make the fundus structures in the fundus image quantitatively measurable, which is important for the diagnosis and treatment of many diseases, e.g., diabetes, arteriosclerosis, hereditary optic atrophy, etc. The conventional calibration approaches require the specific parameters of the fundus camera or several specially shot images of the chess board, but these are generally not accessible, and the calibration results cannot be generalized to other cameras. Based on automated ROI (region of interest) and optic disc detection, the diameter ratio of ROI and optic disc (ROI-disc ratio) is quantitatively analyzed for a large number of fundus images. With the prior knowledge of the average diameter of an optic disc in fundus, the pixel pitch can be statistically estimated from a large number of fundus images captured by a specific camera without the availability of chess board images or detailed specifics of the fundus camera. Furthermore, for fundus cameras of FOV (fixed field-of-view), the pixel pitch of a fundus image of 45° FOV can be directly estimated according to the automatically measured diameter of ROI in the pixel. The average ROI-disc ratio is approximately constant, i.e., 6.404 ± 0.619 in the pixel, according to 40,600 fundus images, captured by different cameras, of 45° FOV. In consequence, the pixel pitch of a fundus image of 45° FOV can be directly estimated according to the automatically measured diameter of ROI in the pixel, and results show the pixel pitches of Canon CR2, Topcon NW400, Zeiss Visucam 200, and Newvision RetiCam 3100 cameras are 6.825 ± 0.666 μm, 6.625 ± 0.647 μm, 5.793 ± 0.565 μm, and 5.884 ± 0.574 μm, respectively. Compared with the manually measured pixel pitches, based on the method of ISO 10940:2009, i.e., 6.897 μm, 6.807 μm, 5.693 μm, and 6.050 μm, respectively, the bias of the proposed method is less than 5%. Since our method doesn't require chess board images or detailed specifics, the fundus structures on the fundus image can be measured accurately, according to the pixel pitch obtained by this method, without knowing the type and parameters of the camera.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9653591PMC
http://dx.doi.org/10.3390/s22218565DOI Listing

Publication Analysis

Top Keywords

pixel pitch
24
fundus image
16
fundus
14
fundus camera
12
chess board
12
optic disc
12
fundus images
12
45° fov
12
pixel
10
pitch calibration
8

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!