Data Augmentation for Image Analysis

Closed
Main contact
LUCENTARA / Dinosty Fossils
Lethbridge, Alberta, Canada
Caitlin Furby
CEO
(26)
5
Project
60 hours per student
Student
Anywhere
Intermediate level

Project scope

Categories
Data analysis Databases Data modelling Data science Data visualization
Skills
quality control python (programming language) machine learning opencv computer vision
Details

In this project, students will collaborate to enhance the quality and diversity of the image dataset for material identification. They will apply data augmentation techniques to create variations of the existing images. These augmented images will be crucial for training robust machine learning models capable of accurate visual material classification.

Deliverables

Project Description:


In this project, students will work together to improve the image dataset's quality and diversity by applying data augmentation techniques. The project consists of the following key tasks:


Image Dataset Review:


  • Students will review the existing image dataset containing photographs of different materials (resin, dyed materials, natural minerals, and rocks).

Gain an understanding of the current dataset's strengths and areas where it can be improved.


Data Augmentation Techniques:


  • Students will learn about various data augmentation techniques commonly used in computer vision, such as rotation, scaling, flipping, cropping, brightness adjustment, and noise addition.
  • Understand how each technique can create variations of the original images.


Data Augmentation Implementation:


  • Apply data augmentation techniques to the existing images to create augmented versions.
  • Use relevant image processing libraries or tools (e.g., Python's OpenCV) to implement these techniques effectively.


Quality Control:


  • Ensure that the augmented images maintain their accuracy and represent the original materials faithfully.
  • Review the augmented dataset to identify any anomalies or issues.


Project Deliverables

Upon completion of the project, students will deliver the following:


  • Augmented Image Dataset: A dataset containing the original images along with their augmented versions, effectively increasing the dataset's size and diversity.
  • Documentation: A report summarizing the applied data augmentation techniques, any challenges encountered, and how quality control was maintained.


Mentorship

Support for Learners:


To ensure that learners successfully complete this project and achieve the desired learning outcomes, the following support mechanisms will be provided:


  1. Guidance and Training: Students will receive guidance on image augmentation techniques, and resources such as tutorials and documentation will be made available.
  2. Regular Check-Ins: Periodic check-in sessions with project mentors or instructors will allow students to seek guidance and feedback.
  3. Access to Software: Access to relevant software tools and libraries for image manipulation will be provided.
  4. Quality Control Guidelines: Clear guidelines on maintaining image quality during augmentation will be shared with students.
  5. Collaborative Environment: Students will have the opportunity to collaborate with peers, share insights, and discuss challenges related to image augmentation.


By offering these forms of support, learners will be well-equipped to complete the project successfully, enhancing their data manipulation skills and contributing to the development of a robust material identification system.

About the company

Company
Lethbridge, Alberta, Canada
2 - 10 employees
Retail, Sales, Science, Trade & international business
Representation
Family-Owned Indigenous-Owned Neurodivergent-Owned Small Business Women-Owned

Lucentara

Science | Technology | Innovation

Lucentara is a Canadian science and innovation company dedicated to advancing the study and application of ammolite and other natural materials. Founded by Caitlin Furby and Mark Turner, Lucentara operates at the intersection of geology, materials science, and design — exploring how nature’s rarest formations can inspire modern advancements in technology and sustainability.

Through ongoing research partnerships and applied experimentation, Lucentara develops cutting-edge methods for fossil preservation, laser restoration, and structural color analysis. Every discovery contributes to the deeper understanding of ammolite’s optical and geological properties, positioning Lucentara as a pioneer in natural photonics and gemstone science.

Lucentara represents the future of Canadian innovation — where art, science, and nature converge.

Dinosty Fossils

Mining | Restoration | Heritage

Dinosty Fossils is the foundation of Alberta’s ammolite industry — a mining and restoration company co-founded by Mark Turner and Caitlin Furby, specializing in the ethical extraction and preparation of ammonite fossils and gem-grade ammolite from the Bearpaw Formation.

Operating across more than 1,200 hectares of mineable land in Southern Alberta, Dinosty Fossils combines traditional field expertise with modern restoration technology to bring prehistoric treasures back to life. Every specimen is meticulously excavated, stabilized, and restored by hand, honoring both its geological origin and its natural artistry.

Through Dinosty Fossils, Furby and Turner have built one of Canada’s most respected fossil operations — supplying collectors, museums, and jewelers worldwide while preserving the integrity and story of each discovery.