Synthetical application of multi-feature map detection and multi-branch convolution

Abstract Two methods for improving the detection performance of neural networks are introduced in this paper, multi-feature map detection and multi-branch convolution structure. The former is to analyze the features of each convolution layer in the network separately, because these features have dif...

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Main Authors: Jin Chen, Rong Liu, Ying Tong, Hanling Wu
Format: Article
Language:English
Published: SpringerOpen 2019-05-01
Series:EURASIP Journal on Wireless Communications and Networking
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13638-019-1444-y
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spelling doaj-2fe19133dd674444a2b567f81980c4d82020-11-25T02:49:00ZengSpringerOpenEURASIP Journal on Wireless Communications and Networking1687-14992019-05-01201911810.1186/s13638-019-1444-ySynthetical application of multi-feature map detection and multi-branch convolutionJin Chen0Rong Liu1Ying Tong2Hanling Wu3Tianjin Key laboratory of Wireless Mobile Communications and Power Transmission, Tianjin Normal UniversityTianjin Key laboratory of Wireless Mobile Communications and Power Transmission, Tianjin Normal UniversityTianjin Key laboratory of Wireless Mobile Communications and Power Transmission, Tianjin Normal UniversityBeijing Institute of Astronautical Systems EngineeringAbstract Two methods for improving the detection performance of neural networks are introduced in this paper, multi-feature map detection and multi-branch convolution structure. The former is to analyze the features of each convolution layer in the network separately, because these features have different resolutions and correspond to objects of different sizes. Finally, the comprehensive judgment of the analysis results can give better consideration to the overall situation and improve the accuracy of detection. The multi-branch convolution structure uses convolutions of different sizes on multiple branches to process input in parallel, and these branches are independent of each other. Finally, the feature maps corresponding to different receptive fields from each branch are combined and analyzed comprehensively. In this paper, the application process of the above two methods is described in combination with classical neural networks, such as the single shot multibox detector (SSD) and receptive field block (RFB) net.http://link.springer.com/article/10.1186/s13638-019-1444-yMulti-branch convolutionMulti-feature map detectionReceptive field block (RFB) netSingle shot multibox detector (SSD)
collection DOAJ
language English
format Article
sources DOAJ
author Jin Chen
Rong Liu
Ying Tong
Hanling Wu
spellingShingle Jin Chen
Rong Liu
Ying Tong
Hanling Wu
Synthetical application of multi-feature map detection and multi-branch convolution
EURASIP Journal on Wireless Communications and Networking
Multi-branch convolution
Multi-feature map detection
Receptive field block (RFB) net
Single shot multibox detector (SSD)
author_facet Jin Chen
Rong Liu
Ying Tong
Hanling Wu
author_sort Jin Chen
title Synthetical application of multi-feature map detection and multi-branch convolution
title_short Synthetical application of multi-feature map detection and multi-branch convolution
title_full Synthetical application of multi-feature map detection and multi-branch convolution
title_fullStr Synthetical application of multi-feature map detection and multi-branch convolution
title_full_unstemmed Synthetical application of multi-feature map detection and multi-branch convolution
title_sort synthetical application of multi-feature map detection and multi-branch convolution
publisher SpringerOpen
series EURASIP Journal on Wireless Communications and Networking
issn 1687-1499
publishDate 2019-05-01
description Abstract Two methods for improving the detection performance of neural networks are introduced in this paper, multi-feature map detection and multi-branch convolution structure. The former is to analyze the features of each convolution layer in the network separately, because these features have different resolutions and correspond to objects of different sizes. Finally, the comprehensive judgment of the analysis results can give better consideration to the overall situation and improve the accuracy of detection. The multi-branch convolution structure uses convolutions of different sizes on multiple branches to process input in parallel, and these branches are independent of each other. Finally, the feature maps corresponding to different receptive fields from each branch are combined and analyzed comprehensively. In this paper, the application process of the above two methods is described in combination with classical neural networks, such as the single shot multibox detector (SSD) and receptive field block (RFB) net.
topic Multi-branch convolution
Multi-feature map detection
Receptive field block (RFB) net
Single shot multibox detector (SSD)
url http://link.springer.com/article/10.1186/s13638-019-1444-y
work_keys_str_mv AT jinchen syntheticalapplicationofmultifeaturemapdetectionandmultibranchconvolution
AT rongliu syntheticalapplicationofmultifeaturemapdetectionandmultibranchconvolution
AT yingtong syntheticalapplicationofmultifeaturemapdetectionandmultibranchconvolution
AT hanlingwu syntheticalapplicationofmultifeaturemapdetectionandmultibranchconvolution
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