Work place: University of Kalyani, Kalyani, West Bengal, India
E-mail: priya@klyuniv.ac.in
Website: https://orcid.org/0000-0002-6943-3934
Research Interests:
Biography
Priya Ranjan Sinha Mahapatra has done his PhD work at Advanced Computing and Microelectronics Unit of Indian Statistical Institute, Kolkata, and received his PhD degree from University of Kalyani. He is now a Professor at the Department of Computer Science and Engineering, University of Kalyani, India.
He has numerous international and national publications in reputed journals and conferences. He has also worked as reviewer of various international journals and conferences. His research interests include Computational geometry, Graph labelling, Facility location and Image processing for facility placement.
By Sudipta Pal Triparna Sarkar Sourav Saha Priya Ranjan Sinha Mahapatra
DOI: https://doi.org/10.5815/ijigsp.2025.01.04, Pub. Date: 8 Feb. 2025
Fracture surface analysis is crucial in investigating manufacturing failures and material characterization. Traditional manual inspection methods are slow and subjective, prompting the need for efficient automated tools using advanced computer vision techniques. Recent machine learning models for classifying surface fractures show potentials but struggle due to the lack of large, labeled datasets. This study explores the potential application of autoencoders, a self-supervised neural network, to identify unintended fracture surfaces from anomalous manufacturing of tungsten-heavy alloys. The proposed autoencoder-based model achieves 97% accuracy in distinguishing undesirable fracture patterns by analyzing the reconstruction loss of the images, surpassing existing methods. This high accuracy highlights the autoencoder's ability to automatically extract and reduce dimensional features from fracture surfaces effectively. The experimental result obtained on tungsten-heavy alloys demonstrate the model's potential towards developing autoencoder-based automated tools for fractographic analyses across various materials and operational scenarios.
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