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Przestrzenno-czasowe sieci konwolucyjne na grafach×Mamba Wizyjny×Vision Transformer×
DziedzinaUczenie głębokieUczenie głębokieUczenie głębokie
RodzinaMachine learningMachine learningMachine learning
Rok powstania201820242021
TwórcaSijie YanLi ZhuDosovitskiy, A. et al.
TypNeural network architectureNeural network architectureTransformer architecture for images (self-attention over patches)
Źródło pierwotneYan, S., Xiong, Y., & Lin, D. (2018). Spatial temporal graph convolutional networks for skeleton-based action recognition. In Proceedings of the AAAI Conference on Artificial Intelligence (Vol. 32). link ↗Zhu, L., Liao, B., Zhang, Q., Wang, X., Liu, W., & Wang, X. (2024). Vision Mamba: Efficient state space models for image understanding. In International Conference on Machine Learning. link ↗Dosovitskiy, A. et al. (2021). An Image is Worth 16x16 Words: Transformers for Image Recognition at Scale. ICLR. link ↗
Inne nazwyST-GCN, Spatial-Temporal Graph CNNViM, Mamba for VisionGörsel Transformer (ViT), görsel transformer, ViT, patch transformer for images
Pokrewne445
PodsumowanieSpatial-Temporal Graph Convolutional Networks (ST-GCN) is an architecture introduced by Yan et al. in 2018 for skeleton-based action recognition. By modeling human skeletons as graphs where joints are nodes and bones are edges, ST-GCN applies graph convolutions across space and time to recognize actions from skeleton sequences.Vision Mamba is an efficient state space model approach for image understanding introduced in 2024 that adapts Mamba, a linear-complexity sequence model, to computer vision. By reformulating image tokens as sequences and using state space models, Vision Mamba achieves competitive accuracy with transformers while maintaining linear computational complexity.The Vision Transformer (ViT), introduced by Dosovitskiy and colleagues in 2021, splits an image into fixed-size patches, treats those patches as a sequence, and applies the Transformer self-attention mechanism to image classification. Given enough training data, it surpasses convolutional neural networks (CNNs).
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ScholarGatePorównaj metody: Spatial-Temporal GCN · Vision Mamba · Vision Transformer. Pobrano 2026-06-19 z https://scholargate.app/pl/compare