Open Access
ARTICLE
A Multi Moving Target Recognition Algorithm Based on Remote Sensing Video
Huanhuan Zheng1,*, Yuxiu Bai1, Yurun Tian2
1
School of Information Engineering, Yulin University, Yulin, China
2
ZTE Communication Co., Ltd., Xi’an, China
* Corresponding Author: Huanhuan Zheng. Email:
(This article belongs to this Special Issue: Enabled and Human-centric Computational Intelligence Solutions for Visual Understanding and Application)
Computer Modeling in Engineering & Sciences 2023, 134(1), 585-597. https://doi.org/10.32604/cmes.2022.020995
Received 11 December 2021; Accepted 11 February 2022; Issue published 24 August 2022
Abstract
The Earth observation remote sensing images can display ground activities and status intuitively, which plays an
important role in civil and military fields. However, the information obtained from the research only from the
perspective of images is limited, so in this paper we conduct research from the perspective of video. At present, the
main problems faced when using a computer to identify remote sensing images are: They are difficult to build a
fixed regular model of the target due to their weak moving regularity. Additionally, the number of pixels occupied
by the target is not enough for accurate detection. However, the number of moving targets is large at the same time.
In this case, the main targets cannot be recognized completely. This paper studies from the perspective of Gestalt
vision, transforms the problem of moving target detection into the problem of salient region probability, and forms
a Saliency map algorithm to extract moving targets. On this basis, a convolutional neural network with global
information is constructed to identify and label the target. And the experimental results show that the algorithm
can extract moving targets and realize moving target recognition under many complex conditions such as target’s
long-term stay and small-amplitude movement.
Keywords
Cite This Article
Zheng, H., Bai, Y., Tian, Y. (2023). A Multi Moving Target Recognition Algorithm Based on Remote Sensing Video.
CMES-Computer Modeling in Engineering & Sciences, 134(1), 585–597.