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Rdnet Tiny.nv In1k

Developed by naver-ai
A lightweight RDNet image classification model trained on the ImageNet-1k dataset, with 24M parameters and 82.8% top-1 accuracy.
Downloads 1,942
Release Time : 4/25/2025

Model Overview

RDNet is an image classification model improved based on the DenseNet architecture, featuring efficient parameter utilization and good classification performance.

Model Features

Efficient Parameter Utilization
Achieves 82.8% ImageNet top-1 accuracy with only 24M parameters.
Multi-Scale Feature Extraction
Supports output of feature maps at different scales, suitable for various computer vision tasks.
Lightweight Design
Computational cost of only 5.0 GMACs, ideal for deployment in resource-constrained environments.

Model Capabilities

Image Classification
Feature Extraction
Image Embedding

Use Cases

Computer Vision
General Image Classification
Classifies natural images and recognizes 1000 ImageNet categories.
82.8% top-1 accuracy
Feature Extraction
Serves as a backbone network to provide features for other vision tasks.
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