Diabetic retinopathy is the leading cause of blindness in the adult population. Mass-screening efforts, during which high resolution images of the retina are captured, are therefore underway in order to detect the disease in its early stages. In this paper we evaluate the compression performance of several lossless image compression algorithms that could be employed in a retina Picture Archiving and Communications System to lessen the demand on computing resources. The algorithms we analyse are TIFF PackBits, Lossless JPEG, JPEG-LS, and JPEG2000 all of which are incorporated in the current DICOM standard together with the non-standard CALIC algorithm for benchmark comparison. Compression performance is evaluated in terms of compression ratio, compression speed, and decompression speed. Based on a large dataset of more than 800 colour retinal images, divided into groups according to retinal region (nasal, posterior, and temporal) and image size, JPEG-LS is found to be the most suitable compression algorithm, offering good compression ratios combined with high compression and decompression speed. Compression ratios can be further improved through the application of a reversible colour space transformation prior to compression as a second set of experiments show.
[1]
Glen G. Langdon,et al.
On the JPEG model for lossless image compression
,
1992,
Data Compression Conference, 1992..
[2]
Thomas S. Huang,et al.
Image processing
,
1971
.
[3]
Touradj Ebrahimi,et al.
Christopoulos: Thc Jpeg2000 Still Image Coding System: an Overview the Jpeg2000 Still Image Coding System: an Overview
,
2022
.
[4]
Xiaolin Wu,et al.
Lossless compression of continuous-tone images via context selection, quantization, and modeling
,
1997,
IEEE Trans. Image Process..
[5]
Antoine Geissbühler,et al.
A Review of Content{Based Image Retrieval Systems in Medical Applications { Clinical Bene(cid:12)ts and Future Directions
,
2022
.
[6]
R. Starosolski,et al.
Lossless Compression Of Colour Medical Retinal Images
,
2006
.
[7]
Nasir D. Memon,et al.
Context-based, adaptive, lossless image coding
,
1997,
IEEE Trans. Commun..
[8]
Guillermo Sapiro,et al.
The LOCO-I lossless image compression algorithm: principles and standardization into JPEG-LS
,
2000,
IEEE Trans. Image Process..