Litcius/Paper detail

Motion-Compensated Predictive RAHT for Dynamic Point Clouds

André L. Souto, Ricardo L. de Queiroz, Camilo Dorea

2023IEEE Transactions on Image Processing12 citationsDOI

Abstract

We study the use of predictive approaches alongside the region-adaptive hierarchical transform (RAHT) in attribute compression of dynamic point clouds. The use of intra-frame prediction with RAHT was shown to improve attribute compression performance over pure RAHT and represents the state-of-the-art in attribute compression of point clouds, being part of MPEG's geometry-based test model. We studied a combination of inter-frame and intra-frame prediction for RAHT for the compression of dynamic point clouds. An adaptive zero-motion-vector (ZMV) scheme and an adaptive motion-compensated scheme are developed. The simple adaptive ZMV approach is able to achieve sizable gains over pure RAHT and over the intra-frame predictive RAHT (I-RAHT) for point clouds with little or no motion while ensuring similar compression performance to I-RAHT for point clouds with intense motion. The motion-compensated approach, more complex and more powerful, is able to achieve large gains across all of the tested dynamic point clouds.

Topics & Concepts

Computer sciencePoint cloudInter frameQuarter-pixel motionComputer visionFrame (networking)Data compressionCompression (physics)Artificial intelligencePoint (geometry)Motion fieldReference frameMotion estimationMotion vectorMotion compensationMotion (physics)AlgorithmMathematicsGeometryImage (mathematics)Materials scienceTelecommunicationsComposite materialAdvanced Vision and ImagingComputer Graphics and Visualization TechniquesOptical measurement and interference techniques
Motion-Compensated Predictive RAHT for Dynamic Point Clouds | Litcius