Target Detection of High-Resolution Remote Sensing Images Based on Convolutional Neural Network with Salient Features

被引:0
作者
Chen Yang [1 ]
Zhang Xiuying [2 ]
Zhao Qiulan [3 ]
Bao Bowen [4 ]
Yang Jing [5 ]
Li Bin [5 ]
Ruiyi Zhou [6 ]
机构
[1] Changchun University of Technology,School of Computer Science and Engineering
[2] Oil Production Plant 3 of PetroChina Qinghai Oilfield Branch Qinghai Province,undefined
[3] Oil Production Plant 1 of PetroChina Qinghai Oilfield Branch Qinghai Province,undefined
[4] Third Gas Production Plant of Changqing Oilfield Branch of China National Petroleum Corporation,undefined
[5] Infrastructure Project Center of PetroChina Qinghai Oilfield Gas Production Plant,undefined
[6] Daqing Oilfield Co.,undefined
[7] Ltd. No.8 Oil Production Plant,undefined
关键词
remote sensing images; convolutional neural networks; deep features; convolutional feature fusion; object detection; leakage monitoring; pipeline corrosion; remote pressure and flow monitoring; geological disaster warning;
D O I
10.1007/s10553-025-01825-y
中图分类号
学科分类号
摘要
The processing technology of remote sensing images has attracted more and more attention. Since remote sensing image target detection technology has a wide range of applications in, terrain exploration and post-disaster reconstruction, etc. Remote sensing image target detection refers to finding the target of interest in the remote sensing image and giving the specific location, while remote sensing image target recognition is the further classification of a certain target, which is a long-term concern in the field of remote sensing image processing. Convolutional Neural Network CNN (Convolutional Neural Network) has achieved great success in the field of computer vision with its deep semantic features, and in recent years, it has been increasingly applied to remote sensing image target detection and recognition tasks. Aiming at the task of remote sensing image target detection, this paper proposes a new deep feature-based remote sensing image target detection method. The depth feature extracted by CNN is used to extract the region of interest, and the target confirmation of the region of interest is carried out through multiple scales of CNN. This method does not require bounding box data for training, and improves the detection accuracy and reduces the false alarm rate.
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页码:1627 / 1638
页数:11
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