Convnext Base 224 22k 1k
ConvNeXT is a pure convolutional model inspired by vision Transformer designs, pre-trained on ImageNet-22k and fine-tuned on ImageNet-1k, outperforming traditional Transformers.
Downloads 1,879
Release Time : 3/2/2022
Model Overview
ConvNeXT is a modern convolutional neural network designed for image classification tasks, combining the strengths of traditional ConvNets and Transformers.
Model Features
Modern ConvNet Design
Starting from ResNet and inspired by Swin Transformer, it modernizes the design of traditional convolutional networks.
High-Performance Image Classification
Excels on the ImageNet-22k and ImageNet-1k datasets, outperforming traditional Transformer models.
Pure Convolutional Architecture
Fully based on convolutional operations without using self-attention mechanisms from Transformers.
Model Capabilities
Image Classification
Visual Feature Extraction
Use Cases
Computer Vision
Animal Recognition
Identify animal species in images, such as tigers.
Accurately classifies 1,000 categories in ImageNet-1k.
Object Recognition
Identify everyday objects, such as teapots.
Accurately classifies 1,000 categories in ImageNet-1k.
Scene Recognition
Identify buildings and scenes, such as palaces.
Accurately classifies 1,000 categories in ImageNet-1k.
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