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摘要:
Object detection models based on convolutional neural networks (CNN) have achieved state-of-the-art performance by heavily rely on large-scale training samples.They are insufficient when used in specific applications,such as the detection of military objects,as in these instances,a large number of samples is hard to obtain.In order to solve this problem,this paper proposes the use of Gabor-CNN for object detection based on a small number of samples.First of all,a feature extraction convolution kernel library composed of multi-shape Gabor and color Gabor is constructed,and the optimal Gabor convolution kernel group is obtained by means of training and screening,which is convolved with the input image to obtain feature information of objects with strong auxiliary function.Then,the k-means clustering algorithm is adopted to construct several different sizes of anchor boxes,which improves the quality of the regional proposals.We call this regional proposal process the Gabor-assisted Region Proposal Network (Gabor-assisted RPN).Finally,the Deeply-Utilized Feature Pyramid Network (DU-FPN) method is proposed to strengthen the feature expression of objects in the image.A bottom-up and a topdown feature pyramid is constructed in ResNet-50 and feature information of objects is deeply utilized through the transverse connection and integration of features at various scales.Experimental results show that the method proposed in this paper achieves better results than the state-of-art contrast models on data sets with small samples in terms of accuracy and recall rate,and thus has a strong application prospect.
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篇名 Gabor-CNN for object detection based on small samples
来源期刊 防务技术 学科
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年,卷(期) 2020,(6) 所属期刊栏目
研究方向 页码范围 1116-1129
页数 14页 分类号
字数 语种 英文
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引文网络交叉学科
相关学者/机构
期刊影响力
防务技术
双月刊
2214-9147
10-1165/TJ
北京市海淀区车道沟10号(北京2431信箱)
eng
出版文献量(篇)
1138
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总被引数(次)
1442
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