With the rapid development of whole brain imaging technology, a large number of brain images have been produced, which puts forward a great demand for efficient brain image compression methods. At present, the most commonly used compression methods are all based on 3-D wavelet transform, such as JP3D. However, traditional 3-D wavelet transforms are designed manually with certain assumptions on the signal, but brain images are not as ideal as assumed. What's more, they are not directly optimized for compression task. In order to solve these problems, we propose a trainable 3-D wavelet transform based on the lifting scheme, in which the predict and update steps are replaced by 3-D convolutional neural networks. Then the proposed transform is embedded into an end-to-end compression scheme called iWave3D, which is trained with a large amount of brain images to directly minimize the rate-distortion loss. Experimental results demonstrate that our method outperforms JP3D significantly by 2.012 dB in terms of average BD-PSNR.
翻译:随着整个大脑成像技术的迅速发展,产生了大量脑图象,从而对高效的脑图像压缩方法提出了巨大的需求。目前,最常用的压缩方法都是基于3D波盘变换,如JP3D。然而,传统的3D波盘变换是手工设计的,对信号有某些假设,但大脑图象并不象假设的那样理想。此外,它们不是直接优化的压缩任务。为了解决这些问题,我们提议了一种基于提振计划的可训练的3D波盘变换,其中预测和更新的步骤被3D波变换神经网络所取代。然后,拟议的变换被嵌入一个叫作iWave3D的端到端压缩方案,这个方案经过大量脑图象的培训,以直接将振动率损失降到最低。实验结果显示,我们的方法在平均BD-PNR中明显超过2.012 dB。