Abstract-Much progress has been made recently in the development of 3D acquisition methods and technologies, which increased the availability of low-cost 3D sensors, such as the Microsoft Kinect. This promotes a wide variety of computer vision applications needing object recognition and 3D shape retrieval. We present a novel algorithm for full 3D reconstruction of unknown moving objects in 2.5D point cloud sequences, such as those generated by 3D sensors. Our algorithm incorporates structural and temporal motion information to build 3D models of moving objects and is based on motion compensated temporal accumulation. Unlike other 3D reconstruction methods, the proposed algorithm does not require ICP refinement, keypoint detection, feature description, correspondence matching, provided object models or any geometric information about the object. Given only a fixed centre or axis of rotation, the algorithm integrally estimates the best rigid transformation parameters for registration, applies surface resampling, reduces noise and estimates the optimum angular velocity of the moving object.