• Business
  • Markets
  • Politics
  • Crypto
  • Finance
  • Intelligence
    • Policy Intelligence
    • Security Intelligence
    • Economic Intelligence
    • Fashion Intelligence
  • Energy
  • Technology
  • Taxes
  • Creator Economy
  • Wealth Management
  • LBNN Blueprints
  • Business
  • Markets
  • Politics
  • Crypto
  • Finance
  • Intelligence
    • Policy Intelligence
    • Security Intelligence
    • Economic Intelligence
    • Fashion Intelligence
  • Energy
  • Technology
  • Taxes
  • Creator Economy
  • Wealth Management
  • LBNN Blueprints

Mineralogy meets zero-shot computer vision

Simon Osuji by Simon Osuji
August 25, 2023
in Artificial Intelligence
0
Mineralogy meets zero-shot computer vision
0
SHARES
0
VIEWS
Share on FacebookShare on Twitter


Mineralogy meets zero-shot computer vision
Examples of mineral photos from different datasets. Credit: Artur Kadurin

Identifying minerals is a complex and time-consuming problem for geologists, often taking anywhere from 30 minutes to several days per sample. Further complicating the situation is the fact that a sufficient portion of minerals remain inadequately researched, leaving us with just a few hundred comprehensively characterized out of the 6,000 currently identified minerals.

Related posts

AI, Fancy Footwear, and All the Other Gear Powering Olympic Bobsledding

AI, Fancy Footwear, and All the Other Gear Powering Olympic Bobsledding

February 15, 2026
CurrentBody LED Hair Growth Helmet Review: Baby Hairs Abound (2026)

CurrentBody LED Hair Growth Helmet Review: Baby Hairs Abound (2026)

February 15, 2026

Visual diagnostics of minerals and rocks is a widespread practice in geology, because it is much cheaper and faster than other methods, such as spectroscopy and chemical analysis. However, it is time-consuming and less accurate compared to more expensive methods. Even experienced mineralogists can make mistakes when working with a rare material or low-quality sample. Incorporating machine intelligence into this process can help with error identification and reduce the time spent on routine tasks by experts.

Despite ongoing research in this area, there is a lack of clear benchmarking for mineral image analysis in the scientific literature. To address this gap, the Artificial Intelligence Research Institute, in collaboration with Sber AI and Lomonosov Moscow State University, has created a benchmark dataset for computer vision models focused on mineral recognition.

We called the dataset MineralImage5k. It is based on the Fersman mineralogical museum’s collection and contains 44 thousand samples. While smaller than the Mindat dataset, MineralImage5k offers greater homogeneity of photo conditions and consists of unprocessed samples that closely resemble natural minerals.

The MineralImage5k dataset is divided into three subsets of varying complexity, challenging researchers in mineral classification, segmentation, and size estimation. The simplest classification task presented in the benchmark contains ten mineral species with at least 462 examples per specie. The most tricky problem is to classify minerals to 5K classes with only one image per class available.

One problem that AI may face when working with photos of a mineral is which part of the presented rock is an actual mineral of interest. To address this problem, we share a separate set of about 100 images with additional labels and the segmentation task in addition to the classification. Integrating the segmentation task into the classification pipeline may provide additional insights in cases when the model makes mistakes and reduce the number of such situations.

Beyond the classification and segmentation, we study zero-shot mineral size estimation. Automatic specimen size estimation could be very useful for museum specimen storage procedures. Having these data for all samples, we can plan the optimal storage system and purchase or manufacture boxes of the right size in the correct quantity. Therefore, we provide more than 18K labeled samples for the regression task in our benchmark.

To demonstrate the effectiveness of the benchmark, we evaluated a vision-language model pre-trained on general domain data. We found that fine-tuning the model on the domain-specific dataset such as MineralImage5k may significantly improve its accuracy. We also highlight the promising potential of cross-dataset evaluation for assessing mineral recognition models.

Our research is published in the journal Computers & Geosciences. We are happy to help with the usage of the dataset and benchmark, and we invite all interested researchers to share their ideas on making it more useful for the community.

This story is part of Science X Dialog, where researchers can report findings from their published research articles. Visit this page for information about ScienceX Dialog and how to participate.

More information:
Sergey Nesteruk et al, MineralImage5k: A benchmark for zero-shot raw mineral visual recognition and description, Computers & Geosciences (2023). DOI: 10.1016/j.cageo.2023.105414

Artur Kadurin is the former Chief AI Officer at Insilico Medicine, a company utilizing Deep Learning techniques for drug discovery and aging research. He is now leading the “DL in Life Sciences” research group at Artificial Intelligence Research Institute, AIRI. He and his colleague Denis Dimitrov can be contacted via email (kadurin@airi.net, dimitrov@airi.net) if you need any help running your experiments on their data.

Citation:
Mineralogy meets zero-shot computer vision (2023, August 25)
retrieved 25 August 2023
from https://techxplore.com/news/2023-08-mineralogy-zero-shot-vision.html

This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no
part may be reproduced without the written permission. The content is provided for information purposes only.





Source link

Previous Post

$1.9 Billion Worth of Bitcoin Options to Expire Today

Next Post

Unveiled: Africa Tech Festival Awards 2023 – IT News Africa

Next Post
Unveiled: Africa Tech Festival Awards 2023 – IT News Africa

Unveiled: Africa Tech Festival Awards 2023 - IT News Africa

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

RECOMMENDED NEWS

Jomo Tariku ‘Juxtaposed: A Portal to African Design’ at Philadelphia’s Wexler Gallery

Jomo Tariku ‘Juxtaposed: A Portal to African Design’ at Philadelphia’s Wexler Gallery

1 year ago
Protons set to power next-generation memory devices

Protons set to power next-generation memory devices

3 years ago
Ukraine presses Russia for proof over POW deaths

Ukraine presses Russia for proof over POW deaths

2 years ago
Turkish Ambassador, officials inaugurate Cairo Fashion & Tex with 750 brands

Turkish Ambassador, officials inaugurate Cairo Fashion & Tex with 750 brands

1 year ago

POPULAR NEWS

  • Ghana to build three oil refineries, five petrochemical plants in energy sector overhaul

    Ghana to build three oil refineries, five petrochemical plants in energy sector overhaul

    0 shares
    Share 0 Tweet 0
  • The world’s top 10 most valuable car brands in 2025

    0 shares
    Share 0 Tweet 0
  • Top 10 African countries with the highest GDP per capita in 2025

    0 shares
    Share 0 Tweet 0
  • Global ranking of Top 5 smartphone brands in Q3, 2024

    0 shares
    Share 0 Tweet 0
  • When Will SHIB Reach $1? Here’s What ChatGPT Says

    0 shares
    Share 0 Tweet 0

Get strategic intelligence you won’t find anywhere else. Subscribe to the Limitless Beliefs Newsletter for monthly insights on overlooked business opportunities across Africa.

Subscription Form

© 2026 LBNN – All rights reserved.

Privacy Policy | About Us | Contact

Tiktok Youtube Telegram Instagram Linkedin X-twitter
No Result
View All Result
  • Home
  • Business
  • Politics
  • Markets
  • Crypto
  • Economics
    • Manufacturing
    • Real Estate
    • Infrastructure
  • Finance
  • Energy
  • Creator Economy
  • Wealth Management
  • Taxes
  • Telecoms
  • Military & Defense
  • Careers
  • Technology
  • Artificial Intelligence
  • Investigative journalism
  • Art & Culture
  • LBNN Blueprints
  • Quizzes
    • Enneagram quiz
  • Fashion Intelligence

© 2023 LBNN - All rights reserved.