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Rexnet2 0x

Developed by frgfm
ReXNet image classification model pretrained on ImageNette, utilizing improved residual block structures to reduce channel redundancy
Downloads 14
Release Time : 3/2/2022

Model Overview

This model adopts the ReXNet architecture, optimizing residual blocks with customized Squeeze-Excitation layers to enhance image classification performance.

Model Features

Optimized Residual Block Structure
Reduces channel redundancy through customized Squeeze-Excitation layers, improving feature representation efficiency
Lightweight Design
Model parameters are optimized to reduce computational resource requirements while maintaining performance

Model Capabilities

Image Classification
Feature Extraction

Use Cases

Computer Vision
General Image Classification
Classifies common objects and scenes
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