C

Convnextv2 Tiny.fcmae

Developed by timm
A self-supervised feature representation model based on ConvNeXt-V2, pre-trained using the Fully Convolutional Masked Autoencoder (FCMAE) framework, suitable for image feature extraction and fine-tuning tasks.
Downloads 2,463
Release Time : 1/5/2023

Model Overview

This is a ConvNeXt-V2 model without a pre-trained head, specifically designed for image feature extraction and fine-tuning for downstream tasks. The model is pre-trained in a self-supervised manner using a masked autoencoder framework, capable of capturing deep feature representations of images.

Model Features

Self-supervised pre-training
Utilizes the Fully Convolutional Masked Autoencoder (FCMAE) framework for pre-training, enabling effective image feature representation learning without the need for extensive labeled data.
Efficient architecture
Based on the lightweight ConvNeXt-V2 architecture, it maintains high performance while having lower parameter counts and computational requirements.
Multi-task adaptability
Supports various computer vision tasks such as feature extraction, image classification, and transfer learning.

Model Capabilities

Image feature extraction
Image classification
Transfer learning
Computer vision task adaptability

Use Cases

Computer vision
Image classification
Can be used for image classification, supporting fine-tuning for specific classification tasks.
Performs well on benchmarks like ImageNet-1k.
Feature extraction
Extracts high-level feature representations of images for downstream tasks such as object detection and image segmentation.
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