C

Convnextv2 Femto.fcmae

Developed by timm
A self-supervised feature representation model based on ConvNeXt-V2, pre-trained using the Fully Convolutional Masked Autoencoder (FCMAE) framework.
Downloads 166
Release Time : 1/5/2023

Model Overview

This model is an image classification/feature backbone network suitable for fine-tuning or feature extraction tasks, and does not include a pre-trained head.

Model Features

Self-supervised pre-training
Pre-trained using the Fully Convolutional Masked Autoencoder (FCMAE) framework, learning effective feature representations without labeled data.
Lightweight design
Only 4.8 million parameters and 0.8 GMACs computational load, suitable for resource-constrained environments.
Multi-task support
Supports various computer vision tasks such as image classification, feature map extraction, and image embedding.

Model Capabilities

Image feature extraction
Image classification
Generating image embeddings

Use Cases

Computer vision
Image classification
Classifies input images and outputs class probability distributions.
Performs well on the ImageNet-1k dataset
Feature extraction
Extracts multi-level feature maps from images, useful for downstream tasks like object detection or segmentation.
Outputs feature maps at different scales
Image retrieval
Enables similar image retrieval through image embeddings.
Generates compact image representation vectors
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