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Near-lossless and scalable compression for medical imaging using a new adaptive hierarchical oriented prediction

机译:使用新的自适应分层定向预测的医学成像近无损和可扩展压缩

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A new adaptive approach for lossless and near-lossless scalable compression of medical images is presented. It combines the adaptivity of DPCM schemes with hierarchical oriented prediction (HOP) in order to provide resolution scalability with better compression performances. We obtain lossless results which are about 4% better than resolution scalable JPEG2000 and close to non scalable CALIC on a large scale database. The HOP algorithm is also well suited for near-lossless compression, providing interesting rate-distortion trade-off compared to JPEG-LS and equivalent or better PSNR than JPEG2000 for high bit-rate on noisy (native) medical images.
机译:提出了一种新的自适应方法,用于医学图像的无损和近无损可缩放压缩。它结合了DPCM方案的适应性和面向层次的预测(HOP),以提供具有更好压缩性能的分辨率可伸缩性。我们获得的无损结果比分辨率可伸缩的JPEG2000好约4%,并且在大规模数据库上接近不可伸缩的CALIC。 HOP算法也非常适合于近乎无损的压缩,与嘈杂的(本机)医学图像上的高比特率相比,与JPEG-LS相比,它提供了有趣的速率失真权衡,并且与JPEG2000相比,具有等效或更好的PSNR。

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