Deep learning approach for segmentation of plain carbon steel microstructure images

被引:19
作者
Panda, Aditi [1 ]
Naskar, Ruchira [1 ]
Pal, Snehanshu [2 ]
机构
[1] Natl Inst Technol, Dept Comp Sci & Engn, Rourkela 769008, Odisha, India
[2] Natl Inst Technol, Dept Met & Mat Sci, Rourkela 769008, Odisha, India
关键词
neural nets; carbon steel; construction industry; learning (artificial intelligence); metallurgy; steel; image segmentation; deep learning approach; plain carbon steel microstructure images; grade; quality customised; transportation; quality; specific heat treatment procedures; specific desired properties; computer-based simulations; metallurgy industry; manual experimentation errors; metal heat treatment processes; digital microstructure images; suitable forms; optimal digital forms; simulation models; raw metal microstructure image; Generative Adversarial Network architecture; steel microstructure image segmentation; authors; GAN model; conventional deep learning models; annotated ground truth segmentation masks; sufficient segmented steel microstructure images; sufficient ground truths generation; segmentation network training; related metal microstructure image processing researches; experiments; NUMERICAL-SIMULATION; PHASE-TRANSFORMATION; CELLULAR-AUTOMATA; MODEL; EVOLUTION; KINETICS; RECRYSTALLIZATION; CLASSIFICATION; ALLOY;
D O I
10.1049/iet-ipr.2019.0404
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
To bring about variation in the physical and structural properties or grade of a metal, it is made to undergo specific heat treatment procedures; which can be customized to make the metal microstructure evolve desirably, to obtain specific targeted properties. Recently, computer-based simulations of such heat treatment procedures have become popular, however, such simulations are feasible only if the digital microstructure images are available in suitable forms (optimal digital forms of the microstructure images means the distinct grains identified and the grain boundaries demarcated, i.e., segmentation of microstructure images). To this end, the authors propose a deep learning based Generative Adversarial Network (GAN) architecture for steel microstructure image segmentation. The authors' experimental results prove the performance efficiency of the proposed GAN model, as compared to the state-of-the-art. However, the proposed network architecture requires large volumes of training data, in the form of annotated ground truth segmentation masks. The current literature lacks sufficient segmented steel microstructure images for this training, to the best of their knowledge. Hence, their second contribution in this study is the development of a Convolutional Neural Network-based framework for sufficient ground truths generation, to aid in the proposed segmentation network training.
引用
收藏
页码:1516 / 1524
页数:9
相关论文
共 45 条
[21]  
Gulrajani I, 2017, ADV NEUR IN, V30
[22]   Image-to-Image Translation with Conditional Adversarial Networks [J].
Isola, Phillip ;
Zhu, Jun-Yan ;
Zhou, Tinghui ;
Efros, Alexei A. .
30TH IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR 2017), 2017, :5967-5976
[23]  
Johnson WA, 1939, T AM I MIN MET ENG, V135, P416
[24]   A Microstructure Evolution Model for Intercritical Annealing of a Low-carbon Dual-phase Steel [J].
Kulakov, Mykola ;
Poole, Warren J. ;
Militzer, Matthias .
ISIJ INTERNATIONAL, 2014, 54 (11) :2627-2636
[25]  
Lee Kisuk, 2015, NIPS, P3573
[26]   Non-isothermal phase-transformation kinetics model for evaluating the austenization of 55CrMo steel based on Johnson-Mehl-Avrami equation [J].
Li, Huiping ;
Gai, Kang ;
He, Lianfang ;
Zhang, Chunzhi ;
Cui, Hongzhi ;
Li, Musen .
MATERIALS & DESIGN, 2016, 92 :731-741
[27]   Inferring low-dimensional microstructure representations using convolutional neural networks [J].
Lubbers, Nicholas ;
Lookman, Turab ;
Barros, Kipton .
PHYSICAL REVIEW E, 2017, 96 (05)
[28]   Multi scale cellular automata and finite element based model for cold deformation and annealing of a ferritic-pearlitic microstructure [J].
Madej, L. ;
Sieradzki, L. ;
Sitko, M. ;
Perzynski, K. ;
Radwanski, K. ;
Kuziak, R. .
COMPUTATIONAL MATERIALS SCIENCE, 2013, 77 :172-181
[29]   Numerical Simulation of Pearlitic Transformation in Steel 45Kh5MF [J].
Maisuradze, M. V. ;
Yudin, Yu V. ;
Ryzhkov, M. A. .
METAL SCIENCE AND HEAT TREATMENT, 2015, 56 (9-10) :512-516
[30]   3D cellular automata modelling of solid-state transformations relevant in low-alloy steel production [J].
Mecozzi, M. G. ;
Bos, C. ;
Sietsma, J. .
SOLID-SOLID PHASE TRANSFORMATIONS IN INORGANIC MATERIALS, PTS 1-2, 2011, 172-174 :1140-+