Diagnostically Lossless Compression of Medical Images

Published: 11 Jul 2023, Last Modified: 17 Jul 2023NCW ICML 2023EveryoneRevisionsBibTeX
Keywords: medical images, neural compression
TL;DR: In this work, we (1) use over one million medical images to train a domain-specific neural compressor and (2) develop a comprehensive evaluation suite for evaluating the preservation of fine-grained features in compressed images.
Abstract: Medical images (e.g. X-rays) are often acquired at high resolutions with large dimensions in order to capture fine-grained details. In this work, we address the challenge of compressing medical images while preserving fine-grained features needed for diagnosis, a property known as diagnostic losslessness. To this end, we (1) use over one million medical images to train a domain-specific neural compressor and (2) develop a comprehensive evaluation suite for measuring compressed image quality. Extensive experiments demonstrate that large-scale, domain-specific training of neural compressors improves the diagnostic losslessness of compressed images when compared to prior approaches.
Submission Number: 36
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