Aircraft Detection for Remote Sensing Image Based on Bidirectional and Dense Feature Fusion

Aircraft, as one of the indispensable transport tools, plays an important role in military activities. Therefore, it is a significant task to locate the aircrafts in the remote sensing images. However, the current object detection methods cause a series of problems when applied to the aircraft detec...

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Main Authors: Liming Zhou, Haoxin Yan, Chang Zheng, Xiaohan Rao, Yahui Li, Wencheng Yang, Junfeng Tian, Minghu Fan, Xianyu Zuo
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Computational Intelligence and Neuroscience
Online Access:http://dx.doi.org/10.1155/2021/7618828
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spelling doaj-b9def617a7e242b08b9047cd0b5d8ab82021-09-27T00:51:50ZengHindawi LimitedComputational Intelligence and Neuroscience1687-52732021-01-01202110.1155/2021/7618828Aircraft Detection for Remote Sensing Image Based on Bidirectional and Dense Feature FusionLiming Zhou0Haoxin Yan1Chang Zheng2Xiaohan Rao3Yahui Li4Wencheng Yang5Junfeng Tian6Minghu Fan7Xianyu Zuo8Henan Key Laboratory of Big Data Analysis and ProcessingHenan Key Laboratory of Big Data Analysis and ProcessingHenan Key Laboratory of Big Data Analysis and ProcessingHenan Key Laboratory of Big Data Analysis and ProcessingHenan Key Laboratory of Big Data Analysis and ProcessingHenan Key Laboratory of Big Data Analysis and ProcessingHenan Key Laboratory of Big Data Analysis and ProcessingHenan Key Laboratory of Big Data Analysis and ProcessingHenan Key Laboratory of Big Data Analysis and ProcessingAircraft, as one of the indispensable transport tools, plays an important role in military activities. Therefore, it is a significant task to locate the aircrafts in the remote sensing images. However, the current object detection methods cause a series of problems when applied to the aircraft detection for the remote sensing image, for instance, the problems of low rate of detection accuracy and high rate of missed detection. To address the problems of low rate of detection accuracy and high rate of missed detection, an object detection method for remote sensing image based on bidirectional and dense feature fusion is proposed to detect aircraft targets in sophisticated environments. On the fundamental of the YOLOv3 detection framework, this method adds a feature fusion module to enrich the details of the feature map by mixing the shallow features with the deep features together. Experimental results on the RSOD-DataSet and NWPU-DataSet indicate that the new method raised in the article is capable of improving the problems of low rate of detection accuracy and high rate of missed detection. Meanwhile, the AP for the aircraft increases by 1.57% compared with YOLOv3.http://dx.doi.org/10.1155/2021/7618828
collection DOAJ
language English
format Article
sources DOAJ
author Liming Zhou
Haoxin Yan
Chang Zheng
Xiaohan Rao
Yahui Li
Wencheng Yang
Junfeng Tian
Minghu Fan
Xianyu Zuo
spellingShingle Liming Zhou
Haoxin Yan
Chang Zheng
Xiaohan Rao
Yahui Li
Wencheng Yang
Junfeng Tian
Minghu Fan
Xianyu Zuo
Aircraft Detection for Remote Sensing Image Based on Bidirectional and Dense Feature Fusion
Computational Intelligence and Neuroscience
author_facet Liming Zhou
Haoxin Yan
Chang Zheng
Xiaohan Rao
Yahui Li
Wencheng Yang
Junfeng Tian
Minghu Fan
Xianyu Zuo
author_sort Liming Zhou
title Aircraft Detection for Remote Sensing Image Based on Bidirectional and Dense Feature Fusion
title_short Aircraft Detection for Remote Sensing Image Based on Bidirectional and Dense Feature Fusion
title_full Aircraft Detection for Remote Sensing Image Based on Bidirectional and Dense Feature Fusion
title_fullStr Aircraft Detection for Remote Sensing Image Based on Bidirectional and Dense Feature Fusion
title_full_unstemmed Aircraft Detection for Remote Sensing Image Based on Bidirectional and Dense Feature Fusion
title_sort aircraft detection for remote sensing image based on bidirectional and dense feature fusion
publisher Hindawi Limited
series Computational Intelligence and Neuroscience
issn 1687-5273
publishDate 2021-01-01
description Aircraft, as one of the indispensable transport tools, plays an important role in military activities. Therefore, it is a significant task to locate the aircrafts in the remote sensing images. However, the current object detection methods cause a series of problems when applied to the aircraft detection for the remote sensing image, for instance, the problems of low rate of detection accuracy and high rate of missed detection. To address the problems of low rate of detection accuracy and high rate of missed detection, an object detection method for remote sensing image based on bidirectional and dense feature fusion is proposed to detect aircraft targets in sophisticated environments. On the fundamental of the YOLOv3 detection framework, this method adds a feature fusion module to enrich the details of the feature map by mixing the shallow features with the deep features together. Experimental results on the RSOD-DataSet and NWPU-DataSet indicate that the new method raised in the article is capable of improving the problems of low rate of detection accuracy and high rate of missed detection. Meanwhile, the AP for the aircraft increases by 1.57% compared with YOLOv3.
url http://dx.doi.org/10.1155/2021/7618828
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