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Regnet X 006

Developed by facebook
RegNet model trained on ImageNet-1k, an efficient vision model designed through Neural Architecture Search (NAS)
Downloads 18
Release Time : 3/15/2022

Model Overview

RegNet is an image classification model obtained through neural architecture search by designing search spaces, proposed by Facebook Research. The model optimizes architecture by progressively constraining the search space and is trained on the ImageNet-1k dataset.

Model Features

Neural Architecture Search Design
Optimizes model architecture through systematic search space design and constraints
Efficient Image Classification
Excellent classification performance on the ImageNet-1k dataset
Modular Design
Adopts a staged structural design for easy adjustment and optimization

Model Capabilities

Image Classification
Visual Feature Extraction

Use Cases

Computer Vision
Object Recognition
Identify common object categories in images
Can accurately classify 1000 ImageNet categories
Visual Content Analysis
Analyze image content and extract features
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