D

Dino Resnet 50

Developed by Ramos-Ramos
A ResNet-50 model pre-trained using the DINO self-supervised learning method, suitable for visual feature extraction tasks
Downloads 106
Release Time : 11/23/2022

Model Overview

A ResNet-50 model pre-trained based on the DINO self-supervised learning framework, capable of extracting high-quality image feature representations for various computer vision tasks

Model Features

Self-supervised Pre-training
Pre-trained using the DINO self-supervised learning method, capable of learning high-quality visual representations without extensive labeled data
Residual Network Architecture
Based on the ResNet-50 architecture, featuring excellent feature extraction capabilities and training stability
General Visual Features
Learned feature representations can be transferred to various downstream visual tasks

Model Capabilities

Image Feature Extraction
Visual Representation Learning
Image Classification
Object Detection
Image Similarity Calculation

Use Cases

Computer Vision
Image Classification
Used as a feature extractor for image classification tasks
Object Detection
Used as a backbone network for object detection systems
Image Retrieval
Utilizes extracted features for image similarity matching
Featured Recommended AI Models
AIbase
Empowering the Future, Your AI Solution Knowledge Base
© 2025AIbase