Affiliation:
1. School of Optoelectronic Engineering, Changchun University of Science and Technology, Changchun 130022, China
2. Jilin Provincial Key Laboratory of Space Optoelectronics Technology, Changchun 130022, China
Abstract
In this article, we design a new lightweight infrared optical system that fully meets airborne settings and greatly reduces the collection of invalid information. This new system targets the technical problems of stray light, strong invalid information, weak texture information of small targets, and low intensity of valid information under a complex background, which lead to difficult identification of small targets. Image enhancement of weak, small targets against complex backgrounds has been the key to improving small-target search and tracking technology. For the complex information that is still collected, an improved two-channel image enhancement processing algorithm is proposed: the A-channel adopts an improved nonlinear diffusion method and improved curvature filtering, and the B-channel adopts bootstrap filtering and a local contrast enhancement algorithm. The weak target is then extracted by the algorithm of weighted superposition. The false alarm rate is effectively weakened, and robustness is improved. As a result of the experimental data analysis, the method can effectively extract the weak targets in complex backgrounds, such as artificial backgrounds, surface vegetation, etc., enlarge the target gray value, and reduce Fa by 56%, compared with other advanced methods, while increasing Pd by 17%. The algorithm proposed in this paper is of great significance and value for weak target identification and tracking, and it has been successfully applied to industrial detection, medical detection, and in the military field.
Funder
Jilin Province Science and Technology Development Plan
National Natural Science Foundation of China
Changchun Science and Technology Development Plan
Subject
Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering
Reference26 articles.
1. Review on recent development in infrared small target detection algorithms;Rawat;Procedia Comput. Sci.,2020
2. Yang, J., Cui, Y., Song, F., and Lei, T. (2020). Infrared Small Target Detection Based on Non-Overlapping Patch Model via l0-l1 Norm. Electronics, 9.
3. Developing and studying the algorithm for segmentation of simple images using detectors based on doubly stochastic random fields;Andriyanov;Pattern Recognit. Image Anal.,2019
4. Mammadov, R., Lena, R., and Mammadov, G. (2020, January 24–28). Invariant Image Recognition of Objects Using the Radon Transform. Proceedings of the International Conference on Software Testing, Validation and Verification (ICST), Available online: https://ceur-ws.org/Vol-2711/paper39.pdf.
5. Detection of objects in the images: From likelihood relationships towards scalable and efficient neural networks;Andriyanov;Comput. Opt.,2022