Lossy Medical Image Compression using Residual Learning-based Dual Autoencoder Model

Dipti Mishra, S. Singh, R. Singh
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引用次数: 5

Abstract

In this work, we propose a two-stage autoencoder based compressor-decompressor framework for compressing malaria RBC cell image patches. We know that the medical images used for disease diagnosis are around multiple gigabytes size, which is quite huge. The proposed residual-based dual autoencoder network is trained to extract the unique features which are then used to reconstruct the original image through the decompressor module. The two latent space representations (first for the original image and second for the residual image) are used to rebuild the final original image. Color-SSIM has been exclusively used to check the quality of the chrominance part of the cell images after decompression. The empirical results indicate that the proposed work outperformed other neural network related compression technique for medical images by approximately 35%, 10% and 5% in PSNR, Color SSIM and MS-SSIM respectively. The algorithm exhibits a significant improvement in bit savings of 76%, 78%, 75% & 74% over JPEG-LS, JP2K-LM, CALIC and recent neural network approach respectively, making it a good compression-decompression technique.
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基于残差学习的双自编码器模型的有损医学图像压缩
在这项工作中,我们提出了一个基于两阶段自编码器的压缩-解压缩框架,用于压缩疟疾红细胞图像补丁。我们知道,用于疾病诊断的医学图像大约有几千兆字节大小,这是相当巨大的。提出的基于残差的双自编码器网络进行训练,提取图像的独特特征,然后通过解压缩模块重建原始图像。两个潜在空间表示(第一个用于原始图像,第二个用于残差图像)用于重建最终的原始图像。Color-SSIM专门用于检查解压后细胞图像的色度部分的质量。实验结果表明,该方法在PSNR、Color SSIM和MS-SSIM方面分别优于其他神经网络相关的医学图像压缩技术约35%、10%和5%。该算法比JPEG-LS、JP2K-LM、CALIC和最近的神经网络方法分别节省了76%、78%、75%和74%的比特,是一种很好的压缩-解压缩技术。
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