| Keyword search (4,163 papers available) | ![]() |
"multivariate" Keyword-tagged Publications:
| Title | Authors | PubMed ID | |
|---|---|---|---|
| 1 | A multidimensional investigation of sleep and biopsychosocial profiles with associated neural signatures | Perrault AA; Kebets V; Kuek NMY; Cross NE; Tesfaye R; Pomares FB; Li J; Chee MWL; Dang-Vu TT; Yeo BTT; | 38659875 HKAP |
| 2 | A multidimensional investigation of sleep and biopsychosocialprofiles with associated neural signatures | Perrault AA; Kebets V; Kuek NMY; Cross NE; Tesfaye R; Pomares FB; Li J; Chee MWL; Dang-Vu TT; Thomas Yeo BT; | 38559143 HKAP |
| 3 | MVComp toolbox: MultiVariate Comparisons of brain MRI features accounting for common information across metrics | Tremblay SA; Alasmar Z; Pirhadi A; Carbonell F; Iturria-Medina Y; Gauthier CJ; Steele CJ; | 38463982 SOH |
| 4 | Data-Weighted Multivariate Generalized Gaussian Mixture Model: Application to Point Cloud Robust Registration | Ge B; Najar F; Bouguila N; | 37754943 ENCS |
| 5 | Consolidation alters motor sequence-specific distributed representations. | Pinsard B, Boutin A, Gabitov E, Lungu O, Benali H, Doyon J | 30882348 PERFORM |
| Title: | Data-Weighted Multivariate Generalized Gaussian Mixture Model: Application to Point Cloud Robust Registration | ||||
| Authors: | Ge B, Najar F, Bouguila N | ||||
| Link: | https://pubmed.ncbi.nlm.nih.gov/37754943/ | ||||
| DOI: | 10.3390/jimaging9090179 | ||||
| Publication: | Journal of imaging | ||||
| Keywords: | KL divergence; minimum message length; multivariate generalized Gaussian; point set robust registration; stochastic optimization; weighted-data clustering; | ||||
| PMID: | 37754943 | Category: | Date Added: | 2023-09-27 | |
| Dept Affiliation: | ENCS | ||||
Description: |
In this paper, a weighted multivariate generalized Gaussian mixture model combined with stochastic optimization is proposed for point cloud registration. The mixture model parameters of the target scene and the scene to be registered are updated iteratively by the fixed point method under the framework of the EM algorithm, and the number of components is determined based on the minimum message length criterion (MML). The KL divergence between these two mixture models is utilized as the loss function for stochastic optimization to find the optimal parameters of the transformation model. The self-built point clouds are used to evaluate the performance of the proposed algorithm on rigid registration. Experiments demonstrate that the algorithm dramatically reduces the impact of noise and outliers and effectively extracts the key features of the data-intensive regions. |



