Research on Methods of Micro-target Detection in Various Application Scenarios
DOI:
https://doi.org/10.54097/vc5hsv26Keywords:
Small target detection; deep learning algorithm; remote sensing imagery.Abstract
This paper provides a comprehensive introduction and comparison of the research on small target detection algorithms in different application scenarios and systematically explores the application of deep learning algorithms for small target detection in remote sensing imagery, visible imagery, and infrared imagery. In remote sensing images, the Deconvolution R-CNN algorithm is used to improve the accuracy of small target detection by adding a deconvolution layer. In the field of visible images, a Gaussian Mixture Model (GMM)-based approach is introduced to achieve fast detection of small targets with SIFT features and a GMM target detector. In infrared images, a comprehensive algorithm adapted to low signal-to-noise ratio and complex background is proposed to automatically detect tiny targets through background suppression and threshold selection optimization. In this paper, we compare and analyze the performance of these methods in different scenarios, and propose directions for future research, including expanding the training dataset, applying super-resolution methods to improve the image resolution, and enhancing the universality of the algorithms. This paper provides a comprehensive overview of research in the field of small target detection, as well as an outlook on future research directions, which provides a useful reference for the further development of the field.
Downloads
References
YU Ye, AI Hua, HE Xiaojun, et al. Attention-based feature pyramid networks for ship detection of optical remote sensing image[J].Journal of Remote Sensing, 2020, 24(02):107- 115.
LIU L, OUYANG W, WANG X, et al. Deep learning for generic object detection: a survey[J]. International Journal of Computer Vision, 2020, 128: 261-318.
LIU Y, SUN P, WERGELES N, et al. A survey and performance evaluation of deep learning methods for small object detection[J]. Expert Systems with Applications, 2021, 172: 114602.
Du,Peng,Chen,Ming,Su,Tonghua.Deep Learning and Target Detection.Publishing House of Electronics and Industry,Beijing,pp:8-9,2020.
W. Zhang, S. Wang, S. Thachan, J. Chen and Y. Qian, "Deconv R-CNN for Small Object Detection on Remote Sensing Images," IGARSS 2018 - 2018 IEEE International Geoscience and Remote Sensing Symposium, Valencia, Spain,pp. 2483-2486,2018.
Dumoulin V, Visin F. A guide to convolution arithmetic for deep learning[J]. arXiv preprint arXiv:1603.07285, 2016.
Sun,C.,Li,J and Xu,G. "Improved YOLOv3 algorithm for small object detection in remote sensing images," 2023 IEEE 7th Information Technology and Mechatronics Engineering Conference (ITOEC), Chongqing, China, pp. 1752-1756, 2023
Qian,X, Liu,X and Ye,C, "A Gaussian-mixture-model-based visual feature matching scheme for small-object detection from RGB-D data," 2017 IEEE International Conference on Real-time Computing and Robotics (RCAR), Okinawa, Japan, pp. 91-96,2017.
Liu,Jinhua, Convolutional neural network based tiny target detection method for fuzzy images, Information recording material,2022
Gerald,C.,Holst.Testing and Evaluation of Infrared Imaging Systems.National Defense and Industry Press,pp:25-26,2023.
M. Özbay and M. C. Şahingil, "A fast and robust automatic object detection algorithm to detect small objects in infrared images," 2017 25th Signal Processing and Communications Applications Conference (SIU), Antalya, Turkey, pp. 1-4,2017.
Downloads
Published
Issue
Section
License
Copyright (c) 2024 Highlights in Science, Engineering and Technology

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.







