Lossless Compression of Angiogram Foreground with Visual Quality Preservation of Background

By increasing the volume of telemedicine information, the need for medical image compression has become more important. In angiographic images, a small ratio of the entire image usually belongs to the vasculature that provides crucial information for diagnosis. Other parts of the image are diagnosti...

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Hauptverfasser: Ahmadi, Mahdi, Emami, Ali, Hajabdollahi, Mohsen, Soroushmehr, S. M. Reza, Karimi, Nader, Samavi, Shadrokh, Najarian, Kayvan
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creator Ahmadi, Mahdi
Emami, Ali
Hajabdollahi, Mohsen
Soroushmehr, S. M. Reza
Karimi, Nader
Samavi, Shadrokh
Najarian, Kayvan
description By increasing the volume of telemedicine information, the need for medical image compression has become more important. In angiographic images, a small ratio of the entire image usually belongs to the vasculature that provides crucial information for diagnosis. Other parts of the image are diagnostically less important and can be compressed with higher compression ratio. However, the quality of those parts affect the visual perception of the image as well. Existing methods compress foreground and background of angiographic images using different techniques. In this paper we first utilize convolutional neural network to segment vessels and then represent a hierarchical block processing algorithm capable of both eliminating the background redundancies and preserving the overall visual quality of angiograms.
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title Lossless Compression of Angiogram Foreground with Visual Quality Preservation of Background
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