Deep learning-based compression of giga-resolution whole slide images
Maren H{\o}ib{\o}, Etienne Gaucher, Ingerid Reinertsen, Marit Valla, Erik Smistad

TL;DR
This paper explores deep learning methods for compressing giga-resolution whole slide images in digital pathology, achieving significant size reductions while maintaining image quality compared to traditional codecs.
Contribution
It introduces deep learning-based tissue segmentation and compression techniques that outperform JPEG, JPEG-2000, and JPEG-XL in reducing WSI file sizes.
Findings
Deep learning compression reduced WSI size by 43-72% compared to JPEG.
Glass removal with deep learning further reduced size by up to 33%.
Deep learning models achieved 35-40% savings on tissue patches with high SSIM.
Abstract
Implementation of digital pathology leads to an increased number of whole slide images (WSIs). The large size of WSIs is challenging. Today, WSIs are compressed with codecs like JPEG resulting in several gigabytes per WSI, and large amounts of space are wasted storing glass. In this study, deep learning-based tissue segmentation for glass removal, and deep learning compression methods were explored and compared with JPEG, JPEG-2000 and JPEG-XL. Image pyramids (N=21) with intact glass, glass replaced by single-colored pixels, and glass replaced by zero-byte tiles were created and compressed with JPEG, JPEG-XL and a deep learning model. Additionally, several compression models were evaluated on a tissue patch dataset and compared with JPEG, JPEG-2000 and JPEG-XL. Removing glass reduced file sizes considerably for JPEG and JPEG-XL. Deep learning-based image compression reduced the WSI…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
