International audienceWe propose a practical deep generative approach for lossless point cloud geometry compression, called MSVoxelDNN, and show that it significantly reduces the rate compared to the MPEG G-PCC codec. Our previous work based on autoregressive models (VoxelDNN [1]) has a fast training phase, however, inference is slow as the occupancy probabilities are predicted sequentially, voxel by voxel. In this work, we employ a multiscale architecture which models voxel occupancy in coarse-to-fine order. At each scale, MSVoxelDNN divides voxels into eight conditionally independent groups, thus requiring a single network evaluation per group instead of one per voxel. We evaluate the performance of MSVoxelDNN on a set of point clouds fro...
Due to the diverse sparsity, high dimensionality, and large temporal variation of dynamic point clou...
In this paper we propose a new paradigm for encoding the geometry of dense point cloud sequences, wh...
International audiencePoint clouds have been recognized as a crucial data structure for 3D content a...
International audienceWe propose a practical deep generative approach for lossless point cloud geome...
International audienceThis paper proposes a lossless point cloud (PC) geometry compression method th...
International audienceThis paper presents a learning-based, lossless compression method for static p...
International audienceWe present two learning-based methods for coding point clouds geometry. The tw...
Most point cloud compression methods operate in the voxel or octree domain which is not the original...
Point cloud data are extensively used in various applications, such as autonomous driving and augmen...
International audienceEfficient point cloud compression is fundamental to enable the deployment of v...
In this paper, we propose a novel variable rate deep compression architecture that operates on raw 3...
International audienceThis short paper describes a TensorFlow toolbox for point cloud geometry codin...
This study develops a unified Point Cloud Geometry (PCG) compression method through Sparse Tensor Pr...
Due to the diverse sparsity, high dimensionality, and large temporal variation of dynamic point clou...
In this paper we propose a new paradigm for encoding the geometry of dense point cloud sequences, wh...
International audiencePoint clouds have been recognized as a crucial data structure for 3D content a...
International audienceWe propose a practical deep generative approach for lossless point cloud geome...
International audienceThis paper proposes a lossless point cloud (PC) geometry compression method th...
International audienceThis paper presents a learning-based, lossless compression method for static p...
International audienceWe present two learning-based methods for coding point clouds geometry. The tw...
Most point cloud compression methods operate in the voxel or octree domain which is not the original...
Point cloud data are extensively used in various applications, such as autonomous driving and augmen...
International audienceEfficient point cloud compression is fundamental to enable the deployment of v...
In this paper, we propose a novel variable rate deep compression architecture that operates on raw 3...
International audienceThis short paper describes a TensorFlow toolbox for point cloud geometry codin...
This study develops a unified Point Cloud Geometry (PCG) compression method through Sparse Tensor Pr...
Due to the diverse sparsity, high dimensionality, and large temporal variation of dynamic point clou...
In this paper we propose a new paradigm for encoding the geometry of dense point cloud sequences, wh...
International audiencePoint clouds have been recognized as a crucial data structure for 3D content a...