Convnext Large 384
ConvNeXT is a pure convolutional model (ConvNet) inspired by Vision Transformer designs, claiming to outperform Transformers. This model was trained on the ImageNet-1k dataset at a resolution of 384x384.
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Release Time : 3/2/2022
Model Overview
ConvNeXT is a pure convolutional model for image classification tasks, trained on the ImageNet-1k dataset and supports classification of 1000 categories.
Model Features
Modern Convolutional Design
Inspired by Vision Transformer designs, it modernizes convolutional network architecture, claiming to outperform Transformers.
High-Resolution Training
The model was trained at 384x384 resolution, making it suitable for high-resolution image classification tasks.
Pure Convolutional Architecture
Employs a pure convolutional architecture, avoiding the computational complexity of Transformers while maintaining high performance.
Model Capabilities
Image classification
High-resolution image processing
Use Cases
Image recognition
Animal classification
Identify animal categories in images, such as tigers, cats, etc.
Accurately classified into one of the 1000 ImageNet categories.
Object recognition
Identify everyday objects, such as teapots, furniture, etc.
Accurately classified into one of the 1000 ImageNet categories.
Scene recognition
Identify natural or architectural scenes, such as palaces, forests, etc.
Accurately classified into one of the 1000 ImageNet categories.
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