Keyword search (4,163 papers available)

"Chen Q" Authored Publications:

Title Authors PubMed ID
1 Laboratory-scale simulation study on the bioremediation of marine oil pollution by phosphate-solubilizing bacteria Bacillus subtilis PSB-1 Du Z; Li Z; Chen X; Liu M; Feng L; Li Q; Chen Z; Chen Q; 41707285
ENCS
2 Enhanced biodegradation of crude oil by phosphate-solubilizing bacteria Bacillus subtilis PSB-1: Overcoming soluble phosphorus deficiency Wang X; Du Z; Li Z; Liu M; Mu J; Feng L; Chen Z; Chen Q; 40609441
ENCS
3 Konjac glucomannan (KGM) aerogel immobilized microalgae: A new way for marine oil spills remediation Wang X; Du Z; Song Z; Liu M; He P; Feng L; Chen Z; Chen Q; 40381443
ENCS
4 Effect of konjac glucomannan aerogel-immobilized Chlorella vulgaris LH-1 on oil-contaminated seawater remediation and endogenous bacterial community diversity Du Z; Wang X; Song Z; Zhu B; Feng L; Chen Z; Chen Q; 39853794
ENCS
5 Radiation tolerance and biodegradation performance of a marine bacterium Acinetobacter sp. Y9 in radioactive composite oil-contaminated wastewater Yan J; Luo Q; Zhu B; Chen Z; Chen Q; 39806541
ENCS
6 Effects of electron acceptors and donors on anaerobic biodegradation of PAHs in marine sediments Chen Q; Li Z; Chen Y; Liu M; Yang Q; Zhu B; Mu J; Feng L; Chen Z; 38113802
ENCS
7 Degradation of enrofloxacin by a novel Fe-N-C@ZnO material in freshwater and seawater: Performance and mechanism Geng C; Chen Q; Li Z; Liu M; Chen Z; Tao H; Yang Q; Zhu B; Feng L; 37619630
ENCS
8 Author Correction: Motion estimation for large displacements and deformations Chen Q; Poullis C; 36517657
CONCORDIA
9 Motion estimation for large displacements and deformations Chen Q; Poullis C; 36385172
CONCORDIA
10 Multi-label classification for biomedical literature: an overview of the BioCreative VII LitCovid Track for COVID-19 literature topic annotations Chen Q; Allot A; Leaman R; Islamaj R; Du J; Fang L; Wang K; Xu S; Zhang Y; Bagherzadeh P; Bergler S; Bhatnagar A; Bhavsar N; Chang YC; Lin SJ; Tang W; Zhang H; Tavchioski I; Pollak S; Tian S; Zhang J; Otmakhova Y; Yepes AJ; Dong H; Wu H; Dufour R; Labrak Y; Chatterjee N; Tandon K; Laleye FAA; Rakotoson L; Chersoni E; Gu J; Friedrich A; Pujari SC; Chizhikova M; Sivadasan N; Vg S; Lu Z; 36043400
ENCS

 

Title:Motion estimation for large displacements and deformations
Authors:Chen QPoullis C
Link:https://pubmed.ncbi.nlm.nih.gov/36385172/
DOI:10.1038/s41598-022-21987-7
Publication:Scientific reports
Keywords:
PMID:36385172 Category: Date Added:2022-11-17
Dept Affiliation: CONCORDIA
1 Immersive and Creative Technologies Lab, Concordia University, Montreal, QC, Canada.
2 Immersive and Creative Technologies Lab, Concordia University, Montreal, QC, Canada. charalambos@poullis.org.

Description:

Large displacement optical flow is an integral part of many computer vision tasks. Variational optical flow techniques based on a coarse-to-fine scheme interpolate sparse matches and locally optimize an energy model conditioned on colour, gradient and smoothness, making them sensitive to noise in the sparse matches, deformations, and arbitrarily large displacements. This paper addresses this problem and presents HybridFlow, a variational motion estimation framework for large displacements and deformations. A multi-scale hybrid matching approach is performed on the image pairs. Coarse-scale clusters formed by classifying pixels according to their feature descriptors are matched using the clusters' context descriptors. We apply a multi-scale graph matching on the finer-scale superpixels contained within each matched pair of coarse-scale clusters. Small clusters that cannot be further subdivided are matched using localized feature matching. Together, these initial matches form the flow, which is propagated by an edge-preserving interpolation and variational refinement. Our approach does not require training and is robust to substantial displacements and rigid and non-rigid transformations due to motion in the scene, making it ideal for large-scale imagery such as aerial imagery. More notably, HybridFlow works on directed graphs of arbitrary topology representing perceptual groups, which improves motion estimation in the presence of significant deformations. We demonstrate HybridFlow's superior performance to state-of-the-art variational techniques on two benchmark datasets and report comparable results with state-of-the-art deep-learning-based techniques.





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