Automated defect recognition on X-ray radiographs of solid propellant using deep learning based on convolutional neural networks

Gamdha, Dhruv ; Unnikrishnakurup, Sreedhar ; Rose, K. J. Jyothir ; Surekha, M. ; Purushothaman, Padma ; Ghose, Bikash ; Balasubramanian, Krishnan (2021) Automated defect recognition on X-ray radiographs of solid propellant using deep learning based on convolutional neural networks Journal of Nondestructive Evaluation, 40 (1). ISSN 0195-9298

Full text not available from this repository.

Official URL: https://doi.org/10.1007/s10921-021-00750-4

Related URL: http://dx.doi.org/10.1007/s10921-021-00750-4

Abstract

For defense applications, rapid X-ray inspection of propellant samples is essential for the identification and assessment of defects. Automation of this process using artificial intelligence is possible by properly training a neural network model. Convolution Neural Networks (CNNs) have recently demonstrated excellent success in both the tasks of image recognition and localisation using an adequate amount of data. In real-world, it’s not an easy task to produce the correct amount of experimental data required for the deep neural network to operate. In this work, we propose a method for producing synthetic radiographic data that is supported by ray tracing based radiographic simulations for the deep learning algorithms to automatically detect anomaly in X-ray images. The simulation results, which are then supplemented by noise extracted from the experimental data, show a good comparison with the measurements. This Simulation assisted Automatic Defect Recognition (Sim-ADR) system simultaneously perform defect detection and defect instance segmentation. The accuracy of the defect detection system is more than 87% on a testing set included 416 images.

Item Type:Article
Source:Copyright of this article belongs to Springer-Verlag.
ID Code:140944
Deposited On:24 Nov 2025 05:26
Last Modified:24 Nov 2025 05:26

Repository Staff Only: item control page