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Rock Challenge DeiT Solo 2

Developed by dimbyTa
This is an image classification model based on the DeiT architecture, specifically designed for rock particle classification tasks, automatically generated by HuggingPics.
Downloads 31
Release Time : 4/23/2022

Model Overview

This model is an image classifier capable of identifying and classifying different types of rock particles, including fine-grained, coarse-grained, medium-grained, and granular categories.

Model Features

Efficient Image Classification
Based on the DeiT architecture, it achieves efficient image classification performance with limited data.
Multi-category Recognition
Accurately identifies four types of rock particles: fine-grained, coarse-grained, medium-grained, and granular.
Automated Training
Automatically generated and trained using HuggingPics tools, simplifying the model development process.

Model Capabilities

Rock Particle Image Classification
Multi-category Image Recognition

Use Cases

Geological Research
Rock Sample Analysis
Automatically classifies particle sizes in rock samples to assist geological research.
Accuracy rate of 81%
Industrial Applications
Mineral Processing Quality Control
Used for automatic detection and quality control of particle sizes during mineral processing.
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