Matches in SemOpenAlex for { <https://semopenalex.org/work/W3101766778> ?p ?o ?g. }
- W3101766778 endingPage "758" @default.
- W3101766778 startingPage "741" @default.
- W3101766778 abstract "Although deep learning techniques have largely improved face recognition, unconstrained surveillance face recognition is still an unsolved challenge, due to the limited training data and the gap of domain distribution. Previous methods mostly match low-resolution and high-resolution faces in different domains, which tend to deteriorate the original feature space in the common recognition scenarios. To avoid this problem, we propose resolution adaption network (RAN) which contains Multi-Resolution Generative Adversarial Networks (MR-GAN) followed by a feature adaption network. MR-GAN learns multi-resolution representations and randomly selects one resolution to generate realistic low-resolution (LR) faces that can avoid the artifacts of down-sampled faces. A novel feature adaption network with translation gate is developed to fuse the discriminative information of LR faces into backbone network, while preserving the discrimination ability of original face representations. The experimental results on IJB-C TinyFace, SCface, QMUL-SurvFace datasets have demonstrated the superiority of our method compared with state-of-the-art surveillance face recognition methods, while showing stable performance on the common recognition scenarios." @default.
- W3101766778 created "2020-11-23" @default.
- W3101766778 creator A5025452586 @default.
- W3101766778 creator A5028920827 @default.
- W3101766778 creator A5032465074 @default.
- W3101766778 creator A5063224243 @default.
- W3101766778 date "2020-01-01" @default.
- W3101766778 modified "2023-09-25" @default.
- W3101766778 title "Generate to Adapt: Resolution Adaption Network for Surveillance Face Recognition" @default.
- W3101766778 cites W2055492845 @default.
- W3101766778 cites W2114380981 @default.
- W3101766778 cites W2194775991 @default.
- W3101766778 cites W2242218935 @default.
- W3101766778 cites W2325939864 @default.
- W3101766778 cites W2404498690 @default.
- W3101766778 cites W2503339013 @default.
- W3101766778 cites W2515770085 @default.
- W3101766778 cites W2593414223 @default.
- W3101766778 cites W2605488490 @default.
- W3101766778 cites W2606377603 @default.
- W3101766778 cites W2607041014 @default.
- W3101766778 cites W2663800299 @default.
- W3101766778 cites W2747898905 @default.
- W3101766778 cites W2752042386 @default.
- W3101766778 cites W2752782242 @default.
- W3101766778 cites W2786808285 @default.
- W3101766778 cites W2792481260 @default.
- W3101766778 cites W2798691622 @default.
- W3101766778 cites W2871667416 @default.
- W3101766778 cites W2883102461 @default.
- W3101766778 cites W2901505625 @default.
- W3101766778 cites W2916798096 @default.
- W3101766778 cites W2935456071 @default.
- W3101766778 cites W2938076880 @default.
- W3101766778 cites W2961224374 @default.
- W3101766778 cites W2962793481 @default.
- W3101766778 cites W2962898354 @default.
- W3101766778 cites W2963446712 @default.
- W3101766778 cites W2963466847 @default.
- W3101766778 cites W2963583792 @default.
- W3101766778 cites W2963676087 @default.
- W3101766778 cites W2963814162 @default.
- W3101766778 cites W2963839617 @default.
- W3101766778 cites W2963976704 @default.
- W3101766778 cites W2964167901 @default.
- W3101766778 cites W2965774906 @default.
- W3101766778 cites W2969985801 @default.
- W3101766778 cites W3012359244 @default.
- W3101766778 cites W3034882062 @default.
- W3101766778 cites W3099206234 @default.
- W3101766778 cites W3101998545 @default.
- W3101766778 cites W54257720 @default.
- W3101766778 doi "https://doi.org/10.1007/978-3-030-58555-6_44" @default.
- W3101766778 hasPublicationYear "2020" @default.
- W3101766778 type Work @default.
- W3101766778 sameAs 3101766778 @default.
- W3101766778 citedByCount "12" @default.
- W3101766778 countsByYear W31017667782021 @default.
- W3101766778 countsByYear W31017667782022 @default.
- W3101766778 countsByYear W31017667782023 @default.
- W3101766778 crossrefType "book-chapter" @default.
- W3101766778 hasAuthorship W3101766778A5025452586 @default.
- W3101766778 hasAuthorship W3101766778A5028920827 @default.
- W3101766778 hasAuthorship W3101766778A5032465074 @default.
- W3101766778 hasAuthorship W3101766778A5063224243 @default.
- W3101766778 hasConcept C108583219 @default.
- W3101766778 hasConcept C119599485 @default.
- W3101766778 hasConcept C127313418 @default.
- W3101766778 hasConcept C127413603 @default.
- W3101766778 hasConcept C138268822 @default.
- W3101766778 hasConcept C138885662 @default.
- W3101766778 hasConcept C141353440 @default.
- W3101766778 hasConcept C144024400 @default.
- W3101766778 hasConcept C153180895 @default.
- W3101766778 hasConcept C154945302 @default.
- W3101766778 hasConcept C2776401178 @default.
- W3101766778 hasConcept C2779304628 @default.
- W3101766778 hasConcept C2988773926 @default.
- W3101766778 hasConcept C3019883945 @default.
- W3101766778 hasConcept C3020199158 @default.
- W3101766778 hasConcept C31510193 @default.
- W3101766778 hasConcept C31972630 @default.
- W3101766778 hasConcept C36289849 @default.
- W3101766778 hasConcept C41008148 @default.
- W3101766778 hasConcept C41895202 @default.
- W3101766778 hasConcept C62649853 @default.
- W3101766778 hasConcept C83665646 @default.
- W3101766778 hasConcept C97931131 @default.
- W3101766778 hasConceptScore W3101766778C108583219 @default.
- W3101766778 hasConceptScore W3101766778C119599485 @default.
- W3101766778 hasConceptScore W3101766778C127313418 @default.
- W3101766778 hasConceptScore W3101766778C127413603 @default.
- W3101766778 hasConceptScore W3101766778C138268822 @default.
- W3101766778 hasConceptScore W3101766778C138885662 @default.
- W3101766778 hasConceptScore W3101766778C141353440 @default.
- W3101766778 hasConceptScore W3101766778C144024400 @default.
- W3101766778 hasConceptScore W3101766778C153180895 @default.
- W3101766778 hasConceptScore W3101766778C154945302 @default.