Hyperspectral concealed target detection based on ACE algorithmACE algorithm; concealed targets;
Keywords:
ACE algorithm, concealed targetsAbstract
The detection of concealed targets has always been a focus of military research. With the development of hyperspectral imaging technology, a new solution was provided for this field. By using the high spectral resolution of hyperspectral data, the spectral discrimination of concealed targets and backgrounds could be realized in some wavebands. A hyperspectral concealed target detection technology based on ACE algorithm was proposed, which made full use of the different characteristics of backgrounds and concealed targets in different bands. The spectral rearrangement technology and first-order differential technology were introduced to make the background spectrum oscillate and extract the targets. Compared with other algorithms, the proposed algorithm has higher extraction accuracy and lower false alarm rate, which achieves better detection effect of concealed targets. © 2023 Editorial office of Journal of Applied Optics. All rights reserved.
References
HE Zijian, SHI Jiaming, WANG Jiachun, Et al., Research on recognition of camouflage target by AOTF hyperspectral detection system[J], Laser and Infrared, 44, 7, pp. 796-800, (2014); LIU Yao, Research on hyperspectral band selection algorithm based on neighborhood rough set, (2017); CHAVEZ P S., Digital processing techniques for images mapping with Landsat TM and SPOT simulator data[J], Eighteenth Tnternational Symposium on Remote Sensing of Environment, 1, pp. 101-106, (1984); LOCKWOOD R B, COOLEY T, JACOBSON J, Et al., Is there a best hyperspectral detection algorithm?[J], Proceedings of SPIE the International Society for Optical Engineering, 7334, (2009); RENZA D, MARTINEZ E, MOLINA I, Unsupervised change detection in a particular vegetation land cover type using spectral angle mapper[J], Advances in Space Research, 59, 8, pp. 2019-2031, (2017); VAN D M F, BAKKER W., CCSM: cross correlogram spectral matching[J], International Journal of Remote Sensing, 18, 5, pp. 1197-1201, (1997); CHANG C I, Spectral information divergence for hyperspectral image analysis, IGARSS '99 Proceedings on Geoscience and Remote Sensing Symposium, pp. 509-511, (1999); LIU C, LI J, WANG G, Et al., Hyperspectral feature mapping classification based on mathematical morphology, (2016); MANOLAKIS D, PIEPER M, TRUSLOW E, Et al., The remarkable success of adaptive cosine estimator in hyperspectral target detection, Proceedings of SPIE on Defense, Security & Sensing, (2013); WANG Y T, HUANG S Q, LIU Z G, Et al., Target detection for hyperspectral image based on multi-scale analysis[J], Journal of Optics, 46, 1, pp. 75-82, (2017); HE Yuanlei, WANG Jingli, JIA Junbo, Et al., An improved ace target detection algorithm for hyperspectral remote sensing images[J], Journal of Shandong University of Science and Technology, 34, 3, pp. 62-67, (2015); WANG Hanyu, YANG Mingyu, WANG Hao, Et al., Fast hyperspectral target detection based on differential rearrangement and matching[J], LCD and Display, 34, 8, pp. 793-802, (2019); MA Shixin, LIU Chuntong, LI Hongcai, Et al., Camouflage effect evaluation method based on hyperspectral image detection and perception[J], Acta Armamentarii, 40, 7, pp. 1485-1494, (2019); XIA Rudi, NI Chenyin, Abnormal target recognition scheme for hyperspectral detection[J], Electronic Technology and Software Engineering, 4, pp. 95-98, (2020); LEI J, XIE W, YANG J, Et al., Spectral-spatial feature extraction for hyperspectral anomaly detection[J], IEEE Transactions on Geoscience and Remote Sensing, 99, pp. 1-13, (2019); WU Z Y, SU H J, ZHENG P., Hyperspectral anomaly detection using collaborative representation with PCA remove outlier, 2018 9th Workshop on Hyperspectral Image and Signal Processing: Evolution in Remote Sensing (WHISPERS), (2018); MA Shaobin, ZHANG Chengwen, Salient target detection algorithm based on dual-channel multi-scale pyramid pooling model[J], Journal of Applied Optics, 42, 6, pp. 1056-1061, (2021); WANG Lin, ZHANG Haiyang, HUANG Jiahao, Et al., Tiny camera detection technology based on hyper-spectral imaging technology[J], Journal of Applied Optics, 42, 6, pp. 1107-1114, (2021)
Published
How to Cite
Issue
Section
License
Copyright (c) 2023 Journal of Applied Optics
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.
The CC Attribution-NonCommercial 4.0 License allows sharing and adapting the work, provided the creator is credited and the work is not used commercially. Modifications must be indicated, and derivative works under the same license are allowed.