UltraCompression: Framework for High Density Compression of Ultrasound Volumes using Physics Modeling Deep Neural Networks
Ultrasound image compression by preserving speckle-based key information is a challenging task. In this paper, we introduce an ultrasound image compression framework with the ability to retain realism of speckle appearance despite achieving very high-density compression factors. The compressor emplo...
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Main Authors | , , , , , , |
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Format | Journal Article |
Language | English |
Published |
17.01.2019
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Subjects | |
Online Access | Get full text |
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Summary: | Ultrasound image compression by preserving speckle-based key information is a
challenging task. In this paper, we introduce an ultrasound image compression
framework with the ability to retain realism of speckle appearance despite
achieving very high-density compression factors. The compressor employs a
tissue segmentation method, transmitting segments along with transducer
frequency, number of samples and image size as essential information required
for decompression. The decompressor is based on a convolutional network trained
to generate patho-realistic ultrasound images which convey essential
information pertinent to tissue pathology visible in the images. We demonstrate
generalizability of the building blocks using two variants to build the
compressor. We have evaluated the quality of decompressed images using
distortion losses as well as perception loss and compared it with other off the
shelf solutions. The proposed method achieves a compression ratio of $725:1$
while preserving the statistical distribution of speckles. This enables image
segmentation on decompressed images to achieve dice score of $0.89 \pm 0.11$,
which evidently is not so accurately achievable when images are compressed with
current standards like JPEG, JPEG 2000, WebP and BPG. We envision this frame
work to serve as a roadmap for speckle image compression standards. |
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DOI: | 10.48550/arxiv.1901.05880 |