This paper explores learned image compression based on traditional and learned discrete wavelet transform (DWT) architectures and learned entropy models for coding DWT subband coefficients. A learned DWT is obtained through the lifting scheme with learned nonlinear predict and update filters. Several learned entropy models are proposed to exploit inter and intra-DWT subband coefficient dependencies, akin to traditional EZW, SPIHT, or EBCOT algorithms. Experimental results show that when the proposed learned entropy models are combined with traditional wavelet filters, such as the CDF 9/7 filters, compression performance that far exceeds that of JPEG2000 can be achieved. When the learned entropy models are combined with the learned DWT, compression performance increases further. The computations in the learned DWT and all entropy models, except one, can be simply parallelized, and the systems provide practical encoding and decoding times on GPUs.
翻译:本文探讨了基于传统和学习的离散波子变换(DWT)架构和为DWT子波段系数编码而学习的昆虫模型的已学会的图像压缩。一个已学的DWT是借助于已学的非线性预测和更新过滤器的提升计划获得的。一些已学的昆虫模型建议利用与传统的EZW、SPIHT或EBCOT算法相似的DWT分带间和内部的亚频系数依赖关系。实验结果显示,当拟议的已学的微粒模型与传统的波盘过滤器(如CDF 9/7过滤器)相结合时,压缩性能远远超过2000年JPEGEG的功能。当所学的昆虫模型与已学的DWT时,压缩性能会进一步增加。在所学的DWT和除一种外的所有英特型模型中的计算方法可以简单平行,而系统可以在GPUPS上提供实际的编码和解码时间。