Airborne Object Detection Using Hyperspectral Imaging: Deep Learning Review

被引:14
作者
Pham, T. T. [1 ,4 ]
Takalkar, M. A. [1 ,4 ]
Xu, M. [1 ,4 ]
Hoang, D. T. [2 ]
Truong, H. A. [3 ]
Dutkiewicz, E. [1 ]
Perry, S. [1 ,4 ]
机构
[1] Univ Technol Sydney, Fac Engn & IT, Ultimo, Australia
[2] Hanoi Univ Sci & Technol, Hanoi, Vietnam
[3] Vietnam Natl Univ, Hanoi, Vietnam
[4] DMTC, Hawthorn, Vic, Australia
来源
COMPUTATIONAL SCIENCE AND ITS APPLICATIONS - ICCSA 2019, PT I: 19TH INTERNATIONAL CONFERENCE, SAINT PETERSBURG, RUSSIA, JULY 1-4, 2019, PROCEEDINGS, PT I | 2019年 / 11619卷
关键词
Hyperspectral imaging; Classification; Remote sensing; Deep learning; FEATURE-SELECTION; NEURAL-NETWORKS; CLASSIFICATION; IMAGES; GEOMETRY; BAND;
D O I
10.1007/978-3-030-24289-3_23
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
Hyperspectral images have been increasingly important in object detection applications especially in remote sensing scenarios. Machine learning algorithms have become emerging tools for hyperspectral image analysis. The high dimensionality of hyperspectral images and the availability of simulated spectral sample libraries make deep learning an appealing approach. This report reviews recent data processing and object detection methods in the area including hand-crafted and automated feature extraction based on deep learning neural networks. The accuracy performances were compared according to existing reports as well as our own experiments (i.e., re-implementing and testing on new datasets). CNN models provided reliable performance of over 97% detection accuracy across a large set of HSI collections. A wide range of data were used: a rural area (Indian Pines data), an urban area (Pavia University), a wetland region (Botswana), an industrial field (Kennedy Space Center), to a farm site (Salinas). Note that, the Botswana set was not reviewed in recent works, thus high accuracy selected methods were newly compared in this work. A plain CNN model was also found to be able to perform comparably to its more complex variants in target detection applications.
引用
收藏
页码:306 / 321
页数:16
相关论文
共 50 条
  • [21] Identification of Defective Maize Seeds Using Hyperspectral Imaging Combined with Deep Learning
    Xu, Peng
    Sun, Wenbin
    Xu, Kang
    Zhang, Yunpeng
    Tan, Qian
    Qing, Yiren
    Yang, Ranbing
    FOODS, 2023, 12 (01)
  • [22] A systematic review on hyperspectral imaging technology with a machine and deep learning methodology for agricultural applications
    Khan, Atiya
    Vibhute, Amol D.
    Mali, Shankar
    Patil, C. H.
    ECOLOGICAL INFORMATICS, 2022, 69
  • [23] Detection of the moldy status of the stored maize kernels using hyperspectral imaging and deep learning algorithms
    Yang, Dong
    Jiang, Junyi
    Jie, Yu
    Li, Qianqian
    Shi, Tianyu
    INTERNATIONAL JOURNAL OF FOOD PROPERTIES, 2022, 25 (01) : 170 - 186
  • [24] Hyperspectral Imaging Combined With Deep Transfer Learning for Rice Disease Detection
    Feng, Lei
    Wu, Baohua
    He, Yong
    Zhang, Chu
    FRONTIERS IN PLANT SCIENCE, 2021, 12
  • [25] Automated peanut defect detection using hyperspectral imaging and deep learning: A real-time approach for smart agriculture
    Chen, Shih-Yu
    Wu, Yu-Cheng
    Kuo, Yung-Ming
    Zhang, Rui-Hong
    Cheng, Tsai-Yi
    Chen, Yu-Chien
    Chu, Po-Yu
    Kang, Li-Wei
    Lin, Chinsu
    SMART AGRICULTURAL TECHNOLOGY, 2025, 11
  • [26] Adaptive deep learning for head and neck cancer detection using hyperspectral imaging
    Ma, Ling
    Lu, Guolan
    Wang, Dongsheng
    Qin, Xulei
    Chen, Zhuo Georgia
    Fei, Baowei
    VISUAL COMPUTING FOR INDUSTRY BIOMEDICINE AND ART, 2019, 2 (01)
  • [27] Adaptive deep learning for head and neck cancer detection using hyperspectral imaging
    Ling Ma
    Guolan Lu
    Dongsheng Wang
    Xulei Qin
    Zhuo Georgia Chen
    Baowei Fei
    Visual Computing for Industry, Biomedicine, and Art, 2
  • [28] Hyperspectral imaging technology combined with deep learning for hybrid okra seed identification
    Yu, Zeyu
    Fang, Hui
    Zhangjin, Qiannan
    Mi, Chunxiao
    Feng, Xuping
    He, Yong
    BIOSYSTEMS ENGINEERING, 2021, 212 : 46 - 61
  • [29] A review of object detection based on deep learning
    Xiao, Youzi
    Tian, Zhiqiang
    Yu, Jiachen
    Zhang, Yinshu
    Liu, Shuai
    Du, Shaoyi
    Lan, Xuguang
    MULTIMEDIA TOOLS AND APPLICATIONS, 2020, 79 (33-34) : 23729 - 23791
  • [30] Deep Learning for Generic Object Detection: A Survey
    Liu, Li
    Ouyang, Wanli
    Wang, Xiaogang
    Fieguth, Paul
    Chen, Jie
    Liu, Xinwang
    Pietikainen, Matti
    INTERNATIONAL JOURNAL OF COMPUTER VISION, 2020, 128 (02) : 261 - 318