Regnet Y 1280 Seer In1k
RegNet image classification model trained on ImageNet-1k using self-supervised pretraining and fine-tuning methods
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Release Time : 3/18/2022
Model Overview
RegNet is an efficient convolutional neural network architecture. This model was pretrained in a self-supervised manner on a large number of random images and then fine-tuned on the ImageNet dataset, suitable for image classification tasks
Model Features
Self-supervised pretraining
The model was first pretrained in a self-supervised manner on billions of random images, enhancing its generalization capability
Efficient architecture
Utilizes the RegNet architecture design, achieving a good balance between computational efficiency and accuracy
ImageNet fine-tuning
After pretraining, the model was fine-tuned on the ImageNet-1k dataset to optimize image classification performance
Model Capabilities
Image classification
Visual feature extraction
Use Cases
General image recognition
Animal recognition
Identify animal species in images
Successfully recognized a tiger image in the example
Object recognition
Identify everyday objects
Successfully recognized a teapot in the example
Scene recognition
Identify building and scene types
Successfully recognized a palace in the example
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