Matches in SemOpenAlex for { <https://semopenalex.org/work/W2772619632> ?p ?o ?g. }
- W2772619632 abstract "Most recent approaches to 3D pose estimation from RGB-D images address the problem in a two-stage pipeline. First, they learn a classifier-typically a random forest-to predict the position of each input pixel on the object surface. These estimates are then used to define an energy function that is minimized w.r.t. the object pose. In this paper, we focus on the first stage of the problem and propose a novel classifier based on a depth-aware Convolutional Neural Network. This classifier is able to learn a scale-adaptive regression model that yields very accurate pixel-level predictions, allowing to finally estimate the pose using a simple RANSAC-based scheme, with no need to optimize complex ad hoc energy functions. Our experiments on publicly available datasets show that our approach achieves remarkable improvements over state-of-the-art methods." @default.
- W2772619632 created "2017-12-22" @default.
- W2772619632 creator A5023962259 @default.
- W2772619632 creator A5039307249 @default.
- W2772619632 creator A5065059558 @default.
- W2772619632 creator A5082732256 @default.
- W2772619632 date "2017-09-01" @default.
- W2772619632 modified "2023-09-26" @default.
- W2772619632 title "Depth-aware convolutional neural networks for accurate 3D pose estimation in RGB-D images" @default.
- W2772619632 cites W1022526533 @default.
- W2772619632 cites W1162411702 @default.
- W2772619632 cites W129501612 @default.
- W2772619632 cites W132147841 @default.
- W2772619632 cites W1445015017 @default.
- W2772619632 cites W1526868886 @default.
- W2772619632 cites W1565402342 @default.
- W2772619632 cites W1576725826 @default.
- W2772619632 cites W1588488905 @default.
- W2772619632 cites W172235910 @default.
- W2772619632 cites W182048296 @default.
- W2772619632 cites W1855641990 @default.
- W2772619632 cites W1912570122 @default.
- W2772619632 cites W1934027668 @default.
- W2772619632 cites W1949568868 @default.
- W2772619632 cites W1969868017 @default.
- W2772619632 cites W1982392942 @default.
- W2772619632 cites W1990444762 @default.
- W2772619632 cites W1997513865 @default.
- W2772619632 cites W2036273537 @default.
- W2772619632 cites W2060280062 @default.
- W2772619632 cites W2072072671 @default.
- W2772619632 cites W2085261163 @default.
- W2772619632 cites W2101199297 @default.
- W2772619632 cites W2106199912 @default.
- W2772619632 cites W2124592697 @default.
- W2772619632 cites W2136026194 @default.
- W2772619632 cites W2151103935 @default.
- W2772619632 cites W2207044458 @default.
- W2772619632 cites W2211722331 @default.
- W2772619632 cites W2550305219 @default.
- W2772619632 cites W2560491685 @default.
- W2772619632 cites W2962835968 @default.
- W2772619632 cites W2963024893 @default.
- W2772619632 cites W2963038646 @default.
- W2772619632 cites W2963956866 @default.
- W2772619632 cites W603908379 @default.
- W2772619632 doi "https://doi.org/10.1109/iros.2017.8206469" @default.
- W2772619632 hasPublicationYear "2017" @default.
- W2772619632 type Work @default.
- W2772619632 sameAs 2772619632 @default.
- W2772619632 citedByCount "11" @default.
- W2772619632 countsByYear W27726196322018 @default.
- W2772619632 countsByYear W27726196322019 @default.
- W2772619632 countsByYear W27726196322020 @default.
- W2772619632 countsByYear W27726196322021 @default.
- W2772619632 crossrefType "proceedings-article" @default.
- W2772619632 hasAuthorship W2772619632A5023962259 @default.
- W2772619632 hasAuthorship W2772619632A5039307249 @default.
- W2772619632 hasAuthorship W2772619632A5065059558 @default.
- W2772619632 hasAuthorship W2772619632A5082732256 @default.
- W2772619632 hasBestOaLocation W27726196322 @default.
- W2772619632 hasConcept C114744707 @default.
- W2772619632 hasConcept C115961682 @default.
- W2772619632 hasConcept C153180895 @default.
- W2772619632 hasConcept C154945302 @default.
- W2772619632 hasConcept C160633673 @default.
- W2772619632 hasConcept C169258074 @default.
- W2772619632 hasConcept C31972630 @default.
- W2772619632 hasConcept C41008148 @default.
- W2772619632 hasConcept C50644808 @default.
- W2772619632 hasConcept C52102323 @default.
- W2772619632 hasConcept C81363708 @default.
- W2772619632 hasConcept C82990744 @default.
- W2772619632 hasConcept C95623464 @default.
- W2772619632 hasConceptScore W2772619632C114744707 @default.
- W2772619632 hasConceptScore W2772619632C115961682 @default.
- W2772619632 hasConceptScore W2772619632C153180895 @default.
- W2772619632 hasConceptScore W2772619632C154945302 @default.
- W2772619632 hasConceptScore W2772619632C160633673 @default.
- W2772619632 hasConceptScore W2772619632C169258074 @default.
- W2772619632 hasConceptScore W2772619632C31972630 @default.
- W2772619632 hasConceptScore W2772619632C41008148 @default.
- W2772619632 hasConceptScore W2772619632C50644808 @default.
- W2772619632 hasConceptScore W2772619632C52102323 @default.
- W2772619632 hasConceptScore W2772619632C81363708 @default.
- W2772619632 hasConceptScore W2772619632C82990744 @default.
- W2772619632 hasConceptScore W2772619632C95623464 @default.
- W2772619632 hasLocation W27726196321 @default.
- W2772619632 hasLocation W27726196322 @default.
- W2772619632 hasLocation W27726196323 @default.
- W2772619632 hasOpenAccess W2772619632 @default.
- W2772619632 hasPrimaryLocation W27726196321 @default.
- W2772619632 hasRelatedWork W2067156433 @default.
- W2772619632 hasRelatedWork W2090753609 @default.
- W2772619632 hasRelatedWork W2146447720 @default.
- W2772619632 hasRelatedWork W2275058042 @default.
- W2772619632 hasRelatedWork W2766352406 @default.
- W2772619632 hasRelatedWork W2794187083 @default.
- W2772619632 hasRelatedWork W2888913023 @default.
- W2772619632 hasRelatedWork W2964383635 @default.