As a fundamental data format representing spatial information, depth map is widely used in signal processing and computer vision fields. Massive amount of high precision depth maps are produced with the rapid development of equipment like laser scanner or LiDAR. Therefore, it is urgent to explore a new compression method with better compression ratio for high precision depth maps. Utilizing the wide spread deep learning environment, we propose an end-to-end learning-based lossless compression method for high precision depth maps. The whole process is comprised of two sub-processes, named pre-processing of depth maps and deep lossless compression of processed depth maps. The deep lossless compression network consists of two sub-networks, named lossy compression network and lossless compression network. We leverage the concept of pseudo-residual to guide the generation of distribution for residual and avoid introducing context models. Our end-to-end lossless compression network achieves competitive performance over engineered codecs and has low computational cost.
翻译:作为代表空间信息的基本数据格式,深度地图被广泛用于信号处理和计算机视觉领域;大量高精密深度地图随着激光扫描仪或激光雷达等设备的快速开发而制作;因此,迫切需要探索一种新的压缩方法,对高精密深度地图采用更好的压缩比例;利用广泛分布的深层学习环境,我们提议为高精密深度地图采用基于端到端学习的无损压缩方法;整个过程由两个子程序组成,称为深度图预处理,以及经过处理的深度地图的深层无损压缩;深无损压缩网络由两个亚网络组成,称为损压缩网络和无损压缩网络;我们利用假再现概念来指导剩余分布的生成,并避免引入环境模型;我们的端到端无损压缩网络在设计编码器上取得了竞争性的性能,而且计算成本低。