End-Face Localization and Segmentation of Steel Bar Based on Convolution Neural Network

Both number manually-counting method and traditional Machine-Vision (MV) number counting strategy are laborious and very time-consuming (sometimes several hours). Thus a new deep learning (DL) fusion model is proposed, which includes object detection and semantic segmentation. It can solve the probl...

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Main Authors: Yongjian Zhu, Chuliu Tang, Hao Liu, Pengchi Huang
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9075243/
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spelling doaj-80d17be9655f4e5fb8a32048ae8ea0f12021-03-30T01:43:56ZengIEEEIEEE Access2169-35362020-01-018746797469010.1109/ACCESS.2020.29893009075243End-Face Localization and Segmentation of Steel Bar Based on Convolution Neural NetworkYongjian Zhu0https://orcid.org/0000-0002-9845-630XChuliu Tang1https://orcid.org/0000-0003-1904-4057Hao Liu2https://orcid.org/0000-0003-0860-0396Pengchi Huang3https://orcid.org/0000-0002-8673-4974College of Electronic Engineering, Guangxi Normal University, Guangxi, ChinaCollege of Electronic Engineering, Guangxi Normal University, Guangxi, ChinaCollege of Electronic Engineering, Guangxi Normal University, Guangxi, ChinaCollege of Electronic Engineering, Guangxi Normal University, Guangxi, ChinaBoth number manually-counting method and traditional Machine-Vision (MV) number counting strategy are laborious and very time-consuming (sometimes several hours). Thus a new deep learning (DL) fusion model is proposed, which includes object detection and semantic segmentation. It can solve the problems of end-face localization and segmentation of steel bars at the same time. In this fusion model, firstly, an improved data augmentation method namely, Sliding Window Data Augmentation (SWDA) is adopted to compensate less training data concerning object detection, based on which a new object-detection architecture, Inception-RFB-FPN is presented to improve the accuracy and inference time. Secondly, a novel AI labeling method, Fibonacci-incremental mask labeling method (FIMLM) is introduced to accelerate the generation of annotation mask. Furthermore, by contrast, three FCN (Fully Convolutional Networks) architectures of data segmentation, namely, VGG16-FCN, ResNet18-FCN, and ResNet34-FCN are used to conduct the end-face segmentations of steel bars separately. Finally, a series of experiments show that the proposed Inception-RFB-FPN model can reach 98.17% in F1 score (harmonic mean value of precision and recall) with respect to object detection, and its inference time only needs 0.0306 seconds, much faster than some related reports. In addition, the FIMLM-based ResNet34-FCN model can reach 97.47% in mean Intersection-Over-Union (mIOU) with respect to semantic segmentation, higher than both VGG16-FCN and ResNet18-FCN.https://ieeexplore.ieee.org/document/9075243/Steel bardata augmentationobject detectionsemantic segmentation
collection DOAJ
language English
format Article
sources DOAJ
author Yongjian Zhu
Chuliu Tang
Hao Liu
Pengchi Huang
spellingShingle Yongjian Zhu
Chuliu Tang
Hao Liu
Pengchi Huang
End-Face Localization and Segmentation of Steel Bar Based on Convolution Neural Network
IEEE Access
Steel bar
data augmentation
object detection
semantic segmentation
author_facet Yongjian Zhu
Chuliu Tang
Hao Liu
Pengchi Huang
author_sort Yongjian Zhu
title End-Face Localization and Segmentation of Steel Bar Based on Convolution Neural Network
title_short End-Face Localization and Segmentation of Steel Bar Based on Convolution Neural Network
title_full End-Face Localization and Segmentation of Steel Bar Based on Convolution Neural Network
title_fullStr End-Face Localization and Segmentation of Steel Bar Based on Convolution Neural Network
title_full_unstemmed End-Face Localization and Segmentation of Steel Bar Based on Convolution Neural Network
title_sort end-face localization and segmentation of steel bar based on convolution neural network
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Both number manually-counting method and traditional Machine-Vision (MV) number counting strategy are laborious and very time-consuming (sometimes several hours). Thus a new deep learning (DL) fusion model is proposed, which includes object detection and semantic segmentation. It can solve the problems of end-face localization and segmentation of steel bars at the same time. In this fusion model, firstly, an improved data augmentation method namely, Sliding Window Data Augmentation (SWDA) is adopted to compensate less training data concerning object detection, based on which a new object-detection architecture, Inception-RFB-FPN is presented to improve the accuracy and inference time. Secondly, a novel AI labeling method, Fibonacci-incremental mask labeling method (FIMLM) is introduced to accelerate the generation of annotation mask. Furthermore, by contrast, three FCN (Fully Convolutional Networks) architectures of data segmentation, namely, VGG16-FCN, ResNet18-FCN, and ResNet34-FCN are used to conduct the end-face segmentations of steel bars separately. Finally, a series of experiments show that the proposed Inception-RFB-FPN model can reach 98.17% in F1 score (harmonic mean value of precision and recall) with respect to object detection, and its inference time only needs 0.0306 seconds, much faster than some related reports. In addition, the FIMLM-based ResNet34-FCN model can reach 97.47% in mean Intersection-Over-Union (mIOU) with respect to semantic segmentation, higher than both VGG16-FCN and ResNet18-FCN.
topic Steel bar
data augmentation
object detection
semantic segmentation
url https://ieeexplore.ieee.org/document/9075243/
work_keys_str_mv AT yongjianzhu endfacelocalizationandsegmentationofsteelbarbasedonconvolutionneuralnetwork
AT chuliutang endfacelocalizationandsegmentationofsteelbarbasedonconvolutionneuralnetwork
AT haoliu endfacelocalizationandsegmentationofsteelbarbasedonconvolutionneuralnetwork
AT pengchihuang endfacelocalizationandsegmentationofsteelbarbasedonconvolutionneuralnetwork
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