Xinhe Kuang’s scientific contributions

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Publications (1)


Figure 2. Distribution of a boundary and a non-boundary point with their neighboring points.
Figure 4. Samples of point clouds from our dataset.
Figure 8. Performance comparison between our proposed covariance matrix descriptor and the state-of-art feature descriptors under different noise conditions.
Parameters used in our experiments.
Average registration errors for point cloud registration based on different transformation estimations.

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A Multi-Scale Covariance Matrix Descriptor and an Accurate Transformation Estimation for Robust Point Cloud Registration
  • Article
  • Full-text available

October 2024

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21 Reads

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1 Citation

Applied Sciences

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Yu Kong

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Xinhe Kuang

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This paper presents a robust point cloud registration method based on a multi-scale covariance matrix descriptor and an accurate transformation estimation. Compared with state-of-the-art feature descriptors, such as FPH, 3DSC, spin image, etc., our proposed multi-scale covariance matrix descriptor is superior for dealing with registration problems in a higher noise environment since the mean operation in generating the covariance matrix can filter out most of the noise-damaged samples or outliers and also make itself robust to noise. Compared with transformation estimation, such as feature matching, clustering, ICP, RANSAC, etc., our transformation estimation is able to find a better optimal transformation between a pair of point clouds since our transformation estimation is a multi-level point cloud transformation estimator including feature matching, coarse transformation estimation based on clustering, and a fine transformation estimation based on ICP. Experiment findings reveal that our proposed feature descriptor and transformation estimation outperforms state-of-the-art feature descriptors and transformation estimation, and registration effectiveness based on our registration framework of point cloud is extremely successful in the Stanford 3D Scanning Repository, the SpaceTime dataset, and the Kinect dataset, where the Stanford 3D Scanning Repository is known for its comprehensive collection of high-quality 3D scans, and the SpaceTime dataset and the Kinect dataset are captured by a SpaceTime Stereo scanner and a low-cost Microsoft Kinect scanner, respectively.

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Citations (1)


... Deformable registration allows for non-linear transformations that adapt to local tissue variations, making them especially suitable for complex organ modeling and tracking in dynamic scenarios such as brain or lung imaging. Approaches such as B-spline free-form deformations (FFD) [5,12,13] and diffeomorphic methods, including large displacement diffeomorphic metric mapping (LDDMM), are widely used to model such deformations while preserving the topology of anatomical structures [14,15]. ...

Reference:

Anatomical Plausibility in Deformable Image Registration Using Bayesian Optimization for Brain MRI Analysis
A Multi-Scale Covariance Matrix Descriptor and an Accurate Transformation Estimation for Robust Point Cloud Registration

Applied Sciences