National Institute of Informatics, Tokyo, Japan.
Department of Information Engineering and Computer Science, Feng Chia University, Taichung 40724, Taiwan.
J Healthc Eng. 2021 Apr 28;2021:9917545. doi: 10.1155/2021/9917545. eCollection 2021.
The healthcare sector is currently undergoing a major transformation due to the recent advances in deep learning and artificial intelligence. Despite a significant breakthrough in medical imaging and diagnosis, there are still many open issues and undeveloped applications in the healthcare domain. In particular, transmission of a large volume of medical images proves to be a challenging and time-consuming problem, and yet no prior studies have investigated the use of deep neural networks towards this task. The purpose of this paper is to introduce and develop a deep-learning approach for the efficient transmission of medical images, with a particular interest in the progressive coding of bit-planes. We establish a connection between bit-plane synthesis and image-to-image translation and propose a two-step pipeline for progressive image transmission. First, a bank of generative adversarial networks is trained for predicting bit-planes in a top-down manner, and then prediction residuals are encoded with a tailored adaptive lossless compression algorithm. Experimental results validate the effectiveness of the network bank for generating an accurate low-order bit-plane from high-order bit-planes and demonstrate an advantage of the tailored compression algorithm over conventional arithmetic coding for this special type of prediction residuals in terms of compression ratio.
由于深度学习和人工智能的最新进展,医疗保健领域正在发生重大变革。尽管在医学成像和诊断方面取得了重大突破,但在医疗保健领域仍有许多悬而未决的问题和未开发的应用。特别是,大量医学图像的传输被证明是一个具有挑战性和耗时的问题,但之前没有研究探讨使用深度神经网络来解决这个问题。本文的目的是介绍和开发一种用于高效传输医学图像的深度学习方法,特别关注位平面的渐进式编码。我们在位平面合成和图像到图像转换之间建立了联系,并提出了一种用于渐进式图像传输的两步流水线。首先,训练一组生成对抗网络,以自上而下的方式预测位平面,然后使用定制的自适应无损压缩算法对预测残差进行编码。实验结果验证了网络库从高阶位平面生成准确的低阶位平面的有效性,并表明在这种特殊类型的预测残差方面,定制的压缩算法在压缩比方面优于传统的算术编码。