Matches in SemOpenAlex for { <https://semopenalex.org/work/W4312604822> ?p ?o ?g. }
- W4312604822 endingPage "124" @default.
- W4312604822 startingPage "107" @default.
- W4312604822 abstract "In this paper, we investigate the application of Vehicle-to-Everything (V2X) communication to improve the perception performance of autonomous vehicles. We present a robust cooperative perception framework with V2X communication using a novel vision Transformer. Specifically, we build a holistic attention model, namely V2X-ViT, to effectively fuse information across on-road agents (i.e., vehicles and infrastructure). V2X-ViT consists of alternating layers of heterogeneous multi-agent self-attention and multi-scale window self-attention, which captures inter-agent interaction and per-agent spatial relationships. These key modules are designed in a unified Transformer architecture to handle common V2X challenges, including asynchronous information sharing, pose errors, and heterogeneity of V2X components. To validate our approach, we create a large-scale V2X perception dataset using CARLA and OpenCDA. Extensive experimental results demonstrate that V2X-ViT sets new state-of-the-art performance for 3D object detection and achieves robust performance even under harsh, noisy environments. The code is available at https://github.com/DerrickXuNu/v2x-vit ." @default.
- W4312604822 created "2023-01-05" @default.
- W4312604822 creator A5015173810 @default.
- W4312604822 creator A5057442830 @default.
- W4312604822 creator A5063179713 @default.
- W4312604822 creator A5067076283 @default.
- W4312604822 creator A5068374815 @default.
- W4312604822 creator A5090517503 @default.
- W4312604822 date "2022-01-01" @default.
- W4312604822 modified "2023-10-14" @default.
- W4312604822 title "V2X-ViT: Vehicle-to-Everything Cooperative Perception with Vision Transformer" @default.
- W4312604822 cites W2023835067 @default.
- W4312604822 cites W2103779757 @default.
- W4312604822 cites W2150595850 @default.
- W4312604822 cites W2598277073 @default.
- W4312604822 cites W2798965597 @default.
- W4312604822 cites W2897529137 @default.
- W4312604822 cites W2904551995 @default.
- W4312604822 cites W2913786719 @default.
- W4312604822 cites W2949708697 @default.
- W4312604822 cites W2963351448 @default.
- W4312604822 cites W2963727135 @default.
- W4312604822 cites W2968296999 @default.
- W4312604822 cites W2981949127 @default.
- W4312604822 cites W2982681137 @default.
- W4312604822 cites W2983446232 @default.
- W4312604822 cites W2985739927 @default.
- W4312604822 cites W2990479855 @default.
- W4312604822 cites W3012871709 @default.
- W4312604822 cites W3034314779 @default.
- W4312604822 cites W3091245962 @default.
- W4312604822 cites W3109991383 @default.
- W4312604822 cites W3117804044 @default.
- W4312604822 cites W3123450871 @default.
- W4312604822 cites W3126714978 @default.
- W4312604822 cites W3138516171 @default.
- W4312604822 cites W3163081386 @default.
- W4312604822 cites W3168292752 @default.
- W4312604822 cites W3168807411 @default.
- W4312604822 cites W3170667140 @default.
- W4312604822 cites W3179869055 @default.
- W4312604822 cites W3201193904 @default.
- W4312604822 cites W3204559841 @default.
- W4312604822 cites W3210076120 @default.
- W4312604822 cites W4285061034 @default.
- W4312604822 cites W4312678820 @default.
- W4312604822 cites W4312812783 @default.
- W4312604822 cites W4312847199 @default.
- W4312604822 cites W4313007769 @default.
- W4312604822 doi "https://doi.org/10.1007/978-3-031-19842-7_7" @default.
- W4312604822 hasPublicationYear "2022" @default.
- W4312604822 type Work @default.
- W4312604822 citedByCount "33" @default.
- W4312604822 countsByYear W43126048222022 @default.
- W4312604822 countsByYear W43126048222023 @default.
- W4312604822 crossrefType "book-chapter" @default.
- W4312604822 hasAuthorship W4312604822A5015173810 @default.
- W4312604822 hasAuthorship W4312604822A5057442830 @default.
- W4312604822 hasAuthorship W4312604822A5063179713 @default.
- W4312604822 hasAuthorship W4312604822A5067076283 @default.
- W4312604822 hasAuthorship W4312604822A5068374815 @default.
- W4312604822 hasAuthorship W4312604822A5090517503 @default.
- W4312604822 hasBestOaLocation W43126048222 @default.
- W4312604822 hasConcept C107457646 @default.
- W4312604822 hasConcept C119857082 @default.
- W4312604822 hasConcept C120314980 @default.
- W4312604822 hasConcept C121332964 @default.
- W4312604822 hasConcept C151319957 @default.
- W4312604822 hasConcept C154945302 @default.
- W4312604822 hasConcept C165801399 @default.
- W4312604822 hasConcept C169760540 @default.
- W4312604822 hasConcept C26760741 @default.
- W4312604822 hasConcept C31258907 @default.
- W4312604822 hasConcept C31972630 @default.
- W4312604822 hasConcept C41008148 @default.
- W4312604822 hasConcept C62520636 @default.
- W4312604822 hasConcept C66322947 @default.
- W4312604822 hasConcept C79403827 @default.
- W4312604822 hasConcept C86803240 @default.
- W4312604822 hasConceptScore W4312604822C107457646 @default.
- W4312604822 hasConceptScore W4312604822C119857082 @default.
- W4312604822 hasConceptScore W4312604822C120314980 @default.
- W4312604822 hasConceptScore W4312604822C121332964 @default.
- W4312604822 hasConceptScore W4312604822C151319957 @default.
- W4312604822 hasConceptScore W4312604822C154945302 @default.
- W4312604822 hasConceptScore W4312604822C165801399 @default.
- W4312604822 hasConceptScore W4312604822C169760540 @default.
- W4312604822 hasConceptScore W4312604822C26760741 @default.
- W4312604822 hasConceptScore W4312604822C31258907 @default.
- W4312604822 hasConceptScore W4312604822C31972630 @default.
- W4312604822 hasConceptScore W4312604822C41008148 @default.
- W4312604822 hasConceptScore W4312604822C62520636 @default.
- W4312604822 hasConceptScore W4312604822C66322947 @default.
- W4312604822 hasConceptScore W4312604822C79403827 @default.
- W4312604822 hasConceptScore W4312604822C86803240 @default.
- W4312604822 hasLocation W43126048221 @default.
- W4312604822 hasLocation W43126048222 @default.
- W4312604822 hasOpenAccess W4312604822 @default.