Główne pojęcia
Vision-RWKV is a model adapted from the RWKV model, designed to efficiently handle sparse inputs and demonstrate robust global processing capabilities, offering a more efficient alternative for visual perception tasks.
Statystyki
VRWKV-T achieves 75.1% top-1 accuracy trained only on ImageNet-1K.
VRWKV-L achieves 85.3% top-1 accuracy with large-scale parameters and training data.
Cytaty
"Our evaluations in image classification demonstrate that VRWKV matches ViT’s classification performance with significantly faster speeds and lower memory usage."
"These results highlight VRWKV’s potential as a more efficient alternative for visual perception tasks."