International audiencePoint clouds are becoming essential in key applications with advances in capture technologies leading to large volumes of data. Compression is thus essential for storage and transmission. In this work, the state of the art for geometry and attribute compression methods with a focus on deep learning based approaches is reviewed. The challenges faced when compressing geometry and attributes are considered, with an analysis of the current approaches to address them, their limitations and the relations between deep learning and traditional ones. Current open questions in point cloud compression, existing solutions and perspectives are identified and discussed. Finally, the link between existing point cloud compression rese...
International audienceEfficient point cloud compression is fundamental to enable the deployment of v...
International audiencePoint clouds are essential for storage and transmission of 3D content. As they...
As the interest in deep learning tools continues to rise, new multimedia research fields begin to di...
International audiencePoint clouds are becoming essential in key applications with advances in captu...
Point clouds are becoming essential in key applications with advances in capture technologies leadin...
Point cloud data are extensively used in various applications, such as autonomous driving and augmen...
International audienceExisting techniques to compress point cloud attributes leverage either geometr...
International audiencePoint clouds have been recognized as a crucial data structure for 3D content a...
Xu J, Fang Z, Gao Y, et al. Point AE-DCGAN: A deep learning model for 3D point cloud lossy geometry ...
Point cloud imaging has emerged as an efficient and popular solution to represent immersive visual i...
International audienceWe present two learning-based methods for coding point clouds geometry. The tw...
International audienceThis short paper describes a TensorFlow toolbox for point cloud geometry codin...
Recent advancements in self-driving cars, robotics, and remote sensing have widened the range of app...
Point cloud representation is a popular modality to code immersive 3D contents. Several solutions an...
International audienceEfficient point cloud compression is fundamental to enable the deployment of v...
International audiencePoint clouds are essential for storage and transmission of 3D content. As they...
As the interest in deep learning tools continues to rise, new multimedia research fields begin to di...
International audiencePoint clouds are becoming essential in key applications with advances in captu...
Point clouds are becoming essential in key applications with advances in capture technologies leadin...
Point cloud data are extensively used in various applications, such as autonomous driving and augmen...
International audienceExisting techniques to compress point cloud attributes leverage either geometr...
International audiencePoint clouds have been recognized as a crucial data structure for 3D content a...
Xu J, Fang Z, Gao Y, et al. Point AE-DCGAN: A deep learning model for 3D point cloud lossy geometry ...
Point cloud imaging has emerged as an efficient and popular solution to represent immersive visual i...
International audienceWe present two learning-based methods for coding point clouds geometry. The tw...
International audienceThis short paper describes a TensorFlow toolbox for point cloud geometry codin...
Recent advancements in self-driving cars, robotics, and remote sensing have widened the range of app...
Point cloud representation is a popular modality to code immersive 3D contents. Several solutions an...
International audienceEfficient point cloud compression is fundamental to enable the deployment of v...
International audiencePoint clouds are essential for storage and transmission of 3D content. As they...
As the interest in deep learning tools continues to rise, new multimedia research fields begin to di...