We present a practical, robust and effective pipeline to compute a high-resolution image of the corneal endothelium starting from a low-resolution video sequence obtained with a general purpose slit lamp biomicroscope. An image quality typical of dedicated and more expensive confocal microscopes is achieved via software magnification by exploiting information redundancy in the video sequence. In particular, the high-resolution image is generated from the best low-resolution frames, obtained by identifying the most suitable endothelium video subsequence using a SVM-based learning approach, followed by a robust graph-based frame registration. Results on long, real sequences show that the proposed approach is fast and produces better quality images than both classical multi-frame super-resolution approaches and commercial state-of-the-art mosaicing software. Only low-cost equipment is required, that makes the proposed method a valid diagnostic tool and an affordable resource for medical practice in both developed and developing countries.
Super-resolution-based magnification of endothelium cells from biomicroscope videos of the cornea / Comanducci, Dario; Bellavia, Fabio; Colombo, Carlo. - In: JOURNAL OF ELECTRONIC IMAGING. - ISSN 1017-9909. - STAMPA. - 27:(2018), pp. 1-14. [10.1117/1.JEI.27.4.043029]
Super-resolution-based magnification of endothelium cells from biomicroscope videos of the cornea
Comanducci, Dario;Bellavia, Fabio;Colombo, Carlo
2018
Abstract
We present a practical, robust and effective pipeline to compute a high-resolution image of the corneal endothelium starting from a low-resolution video sequence obtained with a general purpose slit lamp biomicroscope. An image quality typical of dedicated and more expensive confocal microscopes is achieved via software magnification by exploiting information redundancy in the video sequence. In particular, the high-resolution image is generated from the best low-resolution frames, obtained by identifying the most suitable endothelium video subsequence using a SVM-based learning approach, followed by a robust graph-based frame registration. Results on long, real sequences show that the proposed approach is fast and produces better quality images than both classical multi-frame super-resolution approaches and commercial state-of-the-art mosaicing software. Only low-cost equipment is required, that makes the proposed method a valid diagnostic tool and an affordable resource for medical practice in both developed and developing countries.File | Dimensione | Formato | |
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