Most point cloud compression methods operate in the voxel or octree domain which is not the original representation of point clouds. Those representations either remove the geometric information or require high computational power for processing. In this paper, we propose a context-based lossless point cloud geometry compression that directly processes the point representation. Operating on a point representation allows us to preserve geometry correlation between points and thus to obtain an accurate context model while significantly reduce the computational cost. Specifically, our method uses a sparse convolution neural network to estimate the voxel occupancy sequentially from the x,y,z input data. Experimental results show that our method...
This paper presents an approach for compressing point cloud geometry by leveraging a lightweight sup...
International audienceThis short paper describes a TensorFlow toolbox for point cloud geometry codin...
Point cloud imaging has emerged as an efficient and popular solution to represent immersive visual i...
International audienceThis paper presents a learning-based, lossless compression method for static p...
International audienceThis paper proposes a lossless point cloud (PC) geometry compression method th...
This study develops a unified Point Cloud Geometry (PCG) compression method through Sparse Tensor Pr...
International audienceEfficient point cloud compression is fundamental to enable the deployment of v...
International audienceWe present two learning-based methods for coding point clouds geometry. The tw...
International audienceWe propose a practical deep generative approach for lossless point cloud geome...
Due to the diverse sparsity, high dimensionality, and large temporal variation of dynamic point clou...
This paper describes a novel lossless compression method for point cloud geometry, building on a rec...
Point cloud data are extensively used in various applications, such as autonomous driving and augmen...
This paper presents an approach for compressing point cloud geometry by leveraging a lightweight sup...
International audienceThis short paper describes a TensorFlow toolbox for point cloud geometry codin...
Point cloud imaging has emerged as an efficient and popular solution to represent immersive visual i...
International audienceThis paper presents a learning-based, lossless compression method for static p...
International audienceThis paper proposes a lossless point cloud (PC) geometry compression method th...
This study develops a unified Point Cloud Geometry (PCG) compression method through Sparse Tensor Pr...
International audienceEfficient point cloud compression is fundamental to enable the deployment of v...
International audienceWe present two learning-based methods for coding point clouds geometry. The tw...
International audienceWe propose a practical deep generative approach for lossless point cloud geome...
Due to the diverse sparsity, high dimensionality, and large temporal variation of dynamic point clou...
This paper describes a novel lossless compression method for point cloud geometry, building on a rec...
Point cloud data are extensively used in various applications, such as autonomous driving and augmen...
This paper presents an approach for compressing point cloud geometry by leveraging a lightweight sup...
International audienceThis short paper describes a TensorFlow toolbox for point cloud geometry codin...
Point cloud imaging has emerged as an efficient and popular solution to represent immersive visual i...