Matches in SemOpenAlex for { <https://semopenalex.org/work/W4320040053> ?p ?o ?g. }
- W4320040053 endingPage "112592" @default.
- W4320040053 startingPage "112592" @default.
- W4320040053 abstract "Almost all point clouds denoising methods contain various parameters, which need to be set carefully to acquire desired results. In this paper, we introduce an evolutionary optimization algorithm based framework to obtain the parameter configuration of point clouds denoising methods automatically. New no-reference quality assessment metrics are proposed as objective functions to quantitatively evaluate the point clouds during the optimization process. The proposed metrics infer the quality of point clouds in terms of both smoothness and density. The ideas of manifold dimension and holes detection are combined to get the smoothness evaluation results. Simplified local outlier factor is further exploited for the density evaluation. Using public dataset and real-world scanned data, experimental results prove that the automatic tuning parameters provide a significant boost in performance compared with the manual tuning parameters. Furthermore, the results acquired by the proposed metrics achieve better or equivalent performance than the state-of-the-art metrics." @default.
- W4320040053 created "2023-02-12" @default.
- W4320040053 creator A5002889815 @default.
- W4320040053 creator A5024822997 @default.
- W4320040053 creator A5051476994 @default.
- W4320040053 creator A5071825149 @default.
- W4320040053 date "2023-04-01" @default.
- W4320040053 modified "2023-09-30" @default.
- W4320040053 title "Parameter optimization for point clouds denoising based on no-reference quality assessment" @default.
- W4320040053 cites W1075626806 @default.
- W4320040053 cites W1994616650 @default.
- W4320040053 cites W2022485595 @default.
- W4320040053 cites W2041184937 @default.
- W4320040053 cites W2193782188 @default.
- W4320040053 cites W2500517591 @default.
- W4320040053 cites W2751451999 @default.
- W4320040053 cites W2756068468 @default.
- W4320040053 cites W2763211003 @default.
- W4320040053 cites W2764251381 @default.
- W4320040053 cites W2769591697 @default.
- W4320040053 cites W2793792141 @default.
- W4320040053 cites W2885553657 @default.
- W4320040053 cites W2892037488 @default.
- W4320040053 cites W2898474623 @default.
- W4320040053 cites W2900399004 @default.
- W4320040053 cites W2906788812 @default.
- W4320040053 cites W2961614712 @default.
- W4320040053 cites W2963299521 @default.
- W4320040053 cites W2988661284 @default.
- W4320040053 cites W2990346675 @default.
- W4320040053 cites W2998456637 @default.
- W4320040053 cites W3022630129 @default.
- W4320040053 cites W3030482238 @default.
- W4320040053 cites W3032718103 @default.
- W4320040053 cites W3035130434 @default.
- W4320040053 cites W3041767007 @default.
- W4320040053 cites W3043557276 @default.
- W4320040053 cites W3045004532 @default.
- W4320040053 cites W3084486342 @default.
- W4320040053 cites W3089343273 @default.
- W4320040053 cites W3089703561 @default.
- W4320040053 cites W3092301558 @default.
- W4320040053 cites W3094394107 @default.
- W4320040053 cites W3142798943 @default.
- W4320040053 cites W3172963178 @default.
- W4320040053 cites W3173823845 @default.
- W4320040053 cites W3183144290 @default.
- W4320040053 cites W3190212754 @default.
- W4320040053 cites W3203099324 @default.
- W4320040053 cites W4213031350 @default.
- W4320040053 doi "https://doi.org/10.1016/j.measurement.2023.112592" @default.
- W4320040053 hasPublicationYear "2023" @default.
- W4320040053 type Work @default.
- W4320040053 citedByCount "0" @default.
- W4320040053 crossrefType "journal-article" @default.
- W4320040053 hasAuthorship W4320040053A5002889815 @default.
- W4320040053 hasAuthorship W4320040053A5024822997 @default.
- W4320040053 hasAuthorship W4320040053A5051476994 @default.
- W4320040053 hasAuthorship W4320040053A5071825149 @default.
- W4320040053 hasConcept C102634674 @default.
- W4320040053 hasConcept C111919701 @default.
- W4320040053 hasConcept C11413529 @default.
- W4320040053 hasConcept C124101348 @default.
- W4320040053 hasConcept C131979681 @default.
- W4320040053 hasConcept C134306372 @default.
- W4320040053 hasConcept C153180895 @default.
- W4320040053 hasConcept C154945302 @default.
- W4320040053 hasConcept C163294075 @default.
- W4320040053 hasConcept C169029474 @default.
- W4320040053 hasConcept C177264268 @default.
- W4320040053 hasConcept C199360897 @default.
- W4320040053 hasConcept C202444582 @default.
- W4320040053 hasConcept C2524010 @default.
- W4320040053 hasConcept C28719098 @default.
- W4320040053 hasConcept C33676613 @default.
- W4320040053 hasConcept C33923547 @default.
- W4320040053 hasConcept C41008148 @default.
- W4320040053 hasConcept C739882 @default.
- W4320040053 hasConcept C79337645 @default.
- W4320040053 hasConcept C98045186 @default.
- W4320040053 hasConceptScore W4320040053C102634674 @default.
- W4320040053 hasConceptScore W4320040053C111919701 @default.
- W4320040053 hasConceptScore W4320040053C11413529 @default.
- W4320040053 hasConceptScore W4320040053C124101348 @default.
- W4320040053 hasConceptScore W4320040053C131979681 @default.
- W4320040053 hasConceptScore W4320040053C134306372 @default.
- W4320040053 hasConceptScore W4320040053C153180895 @default.
- W4320040053 hasConceptScore W4320040053C154945302 @default.
- W4320040053 hasConceptScore W4320040053C163294075 @default.
- W4320040053 hasConceptScore W4320040053C169029474 @default.
- W4320040053 hasConceptScore W4320040053C177264268 @default.
- W4320040053 hasConceptScore W4320040053C199360897 @default.
- W4320040053 hasConceptScore W4320040053C202444582 @default.
- W4320040053 hasConceptScore W4320040053C2524010 @default.
- W4320040053 hasConceptScore W4320040053C28719098 @default.
- W4320040053 hasConceptScore W4320040053C33676613 @default.
- W4320040053 hasConceptScore W4320040053C33923547 @default.
- W4320040053 hasConceptScore W4320040053C41008148 @default.