Please use this identifier to cite or link to this item: https://www.um.edu.mt/library/oar/handle/123456789/125217
Title: Deep learning-based man-made object detection from hyperspectral data
Other Titles: Advances in visual computing. ISVC 2015. Lecture notes in computer science vol. 9474
Authors: Makantasis, Konstantinos
Karantzalos, Konstantinos
Doulamis, Anastasios
Loupos, Konstantinos
Keywords: Hyperspectral imaging -- Data processing
Spectral imaging -- Data processing
Imaging systems -- Remote sensing
Neural networks (Computer science)
Image processing -- Digital techniques
Issue Date: 2015
Publisher: Springer
Citation: Makantasis, K., Karantzalos, K., Doulamis, A., & Loupos, K. (2015). Deep learning-based man-made object detection from hyperspectral data. In G. Bebis, R. Boyle, B. Parvin, D. Koracin, I. Pavlidis, R. Feris.,…G. Weber (Eds.), Advances in Visual Computing. ISVC 2015. Lecture Notes in Computer Science, vol. 9474 (pp. 717-727). Springer International Publishing.
Abstract: Hyperspectral sensing, due to its intrinsic ability to capture the spectral responses of depicted materials, provides unique capabilities towards object detection and identification. In this paper, we tackle the problem of man-made object detection from hyperspectral data through a deep learning classification framework. By the effective exploitation of a Convolutional Neural Network we encode pixels’ spectral and spatial information and employ a Multi-Layer Perceptron to conduct the classification task. Experimental results and the performed quantitative validation on widely used hyperspectral datasets demonstrating the great potentials of the developed approach towards accurate and automated man-made object detection.
URI: https://www.um.edu.mt/library/oar/handle/123456789/125217
Appears in Collections:Scholarly Works - FacICTAI

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