Convnextv2 Pico.fcmae
ConvNeXt-V2 self-supervised feature representation model, pre-trained using the Fully Convolutional Masked Autoencoder (FCMAE) framework, suitable for image classification and feature extraction tasks.
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Release Time : 1/5/2023
Model Overview
A self-supervised learning model based on the ConvNeXt-V2 architecture, pre-trained via the Fully Convolutional Masked Autoencoder (FCMAE) method, primarily used for image feature extraction and fine-tuning tasks.
Model Features
Self-supervised pre-training
Utilizes the FCMAE (Fully Convolutional Masked Autoencoder) framework for self-supervised pre-training, eliminating the need for large amounts of labeled data.
Lightweight design
Only 8.6M parameters and 1.4GMACs 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
Classify images to identify the main objects within them.
Achieves 80.304% top-1 accuracy on ImageNet-1k
Feature extraction
Extract multi-level feature representations from images, which can be used for downstream tasks such as object detection and image segmentation.
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