A joint 3D image semantic segmentation and scalable coding scheme with ROI approach

Khouloud Samrouth, O. Déforges, Yi Liu, W. Falou, Mohamad Khalil
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引用次数: 0

Abstract

Along with the digital evolution, image post-production and indexing have become one of the most advanced and desired services in the lossless 3D image domain. The 3D context provides a significant gain in terms of semantics for scene representation. However, it also induces many drawbacks including monitoring visual degradation of compressed 3D image (especially upon edges), and increased complexity for scene representation. In this paper, we propose a semantic region representation and a scalable coding scheme. First, the semantic region representation scheme is based on a low resolution version of the 3D image. It provides the possibility to segment the image according to a desirable balance between 2D and depth. Second, the scalable coding scheme consists in selecting a number of regions as a Region of Interest (RoI), based on the region representation, in order to be refined at a higher bitrate. Experiments show that the proposed scheme provides a high coherence between texture, depth and regions and ensures an efficient solution to the problems of compression and scene representation in the 3D image domain.
一种结合ROI方法的三维图像语义分割和可扩展编码方案
随着数字技术的发展,图像后期制作和索引已成为无损三维图像领域最先进和最受欢迎的服务之一。3D上下文在场景表示的语义方面提供了显著的增益。然而,它也有许多缺点,包括监测压缩3D图像的视觉退化(特别是在边缘上),以及增加场景表示的复杂性。本文提出了一种语义区域表示和可扩展编码方案。首先,语义区域表示方案基于3D图像的低分辨率版本。它提供了根据2D和深度之间的理想平衡分割图像的可能性。其次,可扩展编码方案包括根据区域表示选择一些区域作为感兴趣区域(RoI),以便以更高的比特率进行细化。实验表明,该方法在纹理、深度和区域之间具有较高的一致性,有效地解决了三维图像域的压缩和场景表示问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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