Rate the Article: Quantum Neural Networks for Enhanced Crater and Boulder Detection Using Hyper Spectral Imaging, IJSR, Call for Papers, Online Journal
International Journal of Science and Research (IJSR)

International Journal of Science and Research (IJSR)
Call for Papers | Fully Refereed | Open Access | Double Blind Peer Reviewed

ISSN: 2319-7064

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Student Project | Earth Science and Engineering | India | Volume 14 Issue 2, February 2025 | Rating: 5.7 / 10


Quantum Neural Networks for Enhanced Crater and Boulder Detection Using Hyper Spectral Imaging

Priyanshu Halder


Abstract: This study presents an advanced approach to detecting and analyzing craters and boulders using quantum neural networks and hyper spectral imaging (HSI). By leveraging pixel-by-pixel classification through semantic segmentation, our method accurately determines the edges and depths of geological features. The use of a custom quantum-based neural network with an n?n architecture enhances edge detection and reduces processing time, achieving an accuracy rate of 80%. The proposed algorithm efficiently converts RGB images into HSI data for in-depth spectral analysis, surpassing traditional Geographic Information Systems (GIS) techniques. Additionally, our approach integrates cognitive neural networks and advanced data servers to optimize location detection within a defined azimuth range. This research highlights the effectiveness of quantum-driven methodologies in improving spatial resolution and analytical precision, paving the way for enhanced geological feature classification in remote sensing applications.


Keywords: QGIS Software, IBM Qiskit, Quantum Circuit, Nanosatellite


Edition: Volume 14 Issue 2, February 2025,


Pages: 176 - 180



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