About this Abstract |
Meeting |
TMS Specialty Congress 2025
|
Symposium
|
3rd World Congress on Artificial Intelligence in Materials & Manufacturing (AIM 2025)
|
Presentation Title |
Transfer Learning for Nanomaterial Classification |
Author(s) |
Lavanya M, Baishali Garai, Yashmeet Baid, Shabbeer Basha, Sristi L |
On-Site Speaker (Planned) |
Baishali Garai |
Abstract Scope |
Nanomaterials play crucial role in manufacturing by enhancing product properties and enabling new functionalities in industries like aerospace and automotive. They create stronger, lighter materials and improve surface properties such as scratch resistance, waterproofing, and anti-corrosion. Nanomaterials can be classified into various categories, each with unique properties suited to specific industries. There is vast amount of unstructured data available in scientific literature about properties of nanomaterials but extracting meaningful data from them is challenging for researchers. Images, particularly from scanning electron microscopes (SEM), are critical in identifying nanomaterials. This work employs transfer learning to classify nanomaterials using SEM image dataset and does a comparative study among two pretrained models: ResNet50, and VGG16. Each model was trained on SEM images, and their performance was evaluated for nanomaterial classification. Among them, VGG16 demonstrated best performance, highlighting its effectiveness in accurately identifying nanomaterials from SEM images. |
Proceedings Inclusion? |
Undecided |