利用神经网络作为人工智能的一种新的无损图像压缩方法(AIC: artificial intelligence compression method)的开发与评价。

Hiroshi Fukatsu, Shinji Naganawa, Shinnichiro Yumura
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引用次数: 1

摘要

目的:本研究旨在验证一种使用神经网络实现无损压缩的新型图像压缩方法的性能。编码由以下块组成:预测块;残差数据计算块;变换和量化块;组织和修改块;和一个熵编码块。利用原始图像将预测图像分成四个宏块进行教学;然后重新划分为16个子块。将预测图像与原始图像进行比较以产生残差图像。对残差图像的空间数据和频率数据进行比较和变换。材料与方法:采用AIC无损压缩方法对胸片、CT、磁共振、正电子发射断层、放射性同位素乳房x线摄影、超声、数字减影血管造影等图像进行压缩;并计算了压缩率。结果:胸片、乳房x线摄影压缩率约为15:1,CT压缩率约为12:1,其他影像压缩率约为6:1。因此,这种方法比传统方法能够实现更大的无损压缩。结论:该方法可提高对日益增多的医学影像数据的处理效率。
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Development and evaluation of a novel lossless image compression method (AIC: artificial intelligence compression method) using neural networks as artificial intelligence.

Purpose: This study was aimed to validate the performance of a novel image compression method using a neural network to achieve a lossless compression. The encoding consists of the following blocks: a prediction block; a residual data calculation block; a transformation and quantization block; an organization and modification block; and an entropy encoding block. The predicted image is divided into four macro-blocks using the original image for teaching; and then redivided into sixteen sub-blocks. The predicted image is compared to the original image to create the residual image. The spatial and frequency data of the residual image are compared and transformed.

Materials and methods: Chest radiography, computed tomography (CT), magnetic resonance imaging, positron emission tomography, radioisotope mammography, ultrasonography, and digital subtraction angiography images were compressed using the AIC lossless compression method; and the compression rates were calculated.

Results: The compression rates were around 15:1 for chest radiography and mammography, 12:1 for CT, and around 6:1 for other images. This method thus enables greater lossless compression than the conventional methods.

Conclusion: This novel method should improve the efficiency of handling of the increasing volume of medical imaging data.

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