Vehicle Detection in Remote Sensing Image Based on Machine Vision

Target detection in remote sensing images is very challenging research. Followed by the recent development of deep learning, the target detection algorithm has obtained large and fast growth. However, in the application of remote sensing images, due to the small target, wide range, small texture, an...

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Main Authors: Liming Zhou, Chang Zheng, Haoxin Yan, Xianyu Zuo, Baojun Qiao, Bing Zhou, Minghu Fan, Yang Liu
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Computational Intelligence and Neuroscience
Online Access:http://dx.doi.org/10.1155/2021/8683226
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spelling doaj-54be2745464b43ffa9c6f456484268c92021-08-23T01:33:01ZengHindawi LimitedComputational Intelligence and Neuroscience1687-52732021-01-01202110.1155/2021/8683226Vehicle Detection in Remote Sensing Image Based on Machine VisionLiming Zhou0Chang Zheng1Haoxin Yan2Xianyu Zuo3Baojun Qiao4Bing Zhou5Minghu Fan6Yang Liu7Henan 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 ProcessingTarget detection in remote sensing images is very challenging research. Followed by the recent development of deep learning, the target detection algorithm has obtained large and fast growth. However, in the application of remote sensing images, due to the small target, wide range, small texture, and complex background, the existing target detection methods cannot achieve people’s hope. In this paper, a target detection algorithm named IR-PANet for remote sensing images of an automobile is proposed. In the backbone network CSPDarknet53, SPP is used to strengthen the learning content. Then, IR-PANet is used as the neck network. After the upper sampling, depthwise separable convolution is used to greatly avoid the lack of small target feature information in the convolution of the shallow network and increase the semantic information in the high-level network. Finally, Gamma correction is used to preprocess the image before image training, which effectively reduces the interference of shadow and other factors on training. The experiment proves that the method has a better effect on small targets obscured by shadows and under the color similar to the background of the picture, and the accuracy is significantly improved based on the original algorithm.http://dx.doi.org/10.1155/2021/8683226
collection DOAJ
language English
format Article
sources DOAJ
author Liming Zhou
Chang Zheng
Haoxin Yan
Xianyu Zuo
Baojun Qiao
Bing Zhou
Minghu Fan
Yang Liu
spellingShingle Liming Zhou
Chang Zheng
Haoxin Yan
Xianyu Zuo
Baojun Qiao
Bing Zhou
Minghu Fan
Yang Liu
Vehicle Detection in Remote Sensing Image Based on Machine Vision
Computational Intelligence and Neuroscience
author_facet Liming Zhou
Chang Zheng
Haoxin Yan
Xianyu Zuo
Baojun Qiao
Bing Zhou
Minghu Fan
Yang Liu
author_sort Liming Zhou
title Vehicle Detection in Remote Sensing Image Based on Machine Vision
title_short Vehicle Detection in Remote Sensing Image Based on Machine Vision
title_full Vehicle Detection in Remote Sensing Image Based on Machine Vision
title_fullStr Vehicle Detection in Remote Sensing Image Based on Machine Vision
title_full_unstemmed Vehicle Detection in Remote Sensing Image Based on Machine Vision
title_sort vehicle detection in remote sensing image based on machine vision
publisher Hindawi Limited
series Computational Intelligence and Neuroscience
issn 1687-5273
publishDate 2021-01-01
description Target detection in remote sensing images is very challenging research. Followed by the recent development of deep learning, the target detection algorithm has obtained large and fast growth. However, in the application of remote sensing images, due to the small target, wide range, small texture, and complex background, the existing target detection methods cannot achieve people’s hope. In this paper, a target detection algorithm named IR-PANet for remote sensing images of an automobile is proposed. In the backbone network CSPDarknet53, SPP is used to strengthen the learning content. Then, IR-PANet is used as the neck network. After the upper sampling, depthwise separable convolution is used to greatly avoid the lack of small target feature information in the convolution of the shallow network and increase the semantic information in the high-level network. Finally, Gamma correction is used to preprocess the image before image training, which effectively reduces the interference of shadow and other factors on training. The experiment proves that the method has a better effect on small targets obscured by shadows and under the color similar to the background of the picture, and the accuracy is significantly improved based on the original algorithm.
url http://dx.doi.org/10.1155/2021/8683226
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AT changzheng vehicledetectioninremotesensingimagebasedonmachinevision
AT haoxinyan vehicledetectioninremotesensingimagebasedonmachinevision
AT xianyuzuo vehicledetectioninremotesensingimagebasedonmachinevision
AT baojunqiao vehicledetectioninremotesensingimagebasedonmachinevision
AT bingzhou vehicledetectioninremotesensingimagebasedonmachinevision
AT minghufan vehicledetectioninremotesensingimagebasedonmachinevision
AT yangliu vehicledetectioninremotesensingimagebasedonmachinevision
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