Identification and characterization of fracture in metals using machine learning based texture recognition algorithms
•Methodology for automatic identification of fracture type in steels is provided.•Extraction of the textural features of brittle and ductile fracture using LBP is described.•LDA machine learning classifier is employed and its performance is assessed.•Trained LDA classifier is deployed and the type o...
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Veröffentlicht in: | Engineering fracture mechanics 2019-10, Vol.219, p.106618, Article 106618 |
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description | •Methodology for automatic identification of fracture type in steels is provided.•Extraction of the textural features of brittle and ductile fracture using LBP is described.•LDA machine learning classifier is employed and its performance is assessed.•Trained LDA classifier is deployed and the type of fracture in test images is identified.
Manual identification of brittle and ductile fracture regions in fractographic images of metals is cumbersome, time-consuming, and can be a subjective process. A supervised machine learning classifier in conjunction with a texture recognition algorithm is employed in this study to automatically identify the fracture type and evaluate their area fractions in fractographic images. The texture is a unique visual characteristic possessed by an object in an image that distinguishes it from the other objects. In the context of this study, both brittle and ductile fracture is assumed to possess unique textures. To quantify texture, Local Binary Pattern (LBP) texture quantification algorithm is employed in this study and the corresponding set of statistical metrics referred to as textural features are evaluated from both ductile and brittle fracture training images. These textural features are then used to train Linear Discriminant Analysis machine learning classifier whose performance is assessed using cross-validation technique. The trained algorithm is then deployed to identify the brittle and ductile fracture regions in fractographic images that are not used for training purposes. In this study, five different fractographic images of structural steels are used for validation purposes, and the fracture type is successfully identified. |
doi_str_mv | 10.1016/j.engfracmech.2019.106618 |
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Manual identification of brittle and ductile fracture regions in fractographic images of metals is cumbersome, time-consuming, and can be a subjective process. A supervised machine learning classifier in conjunction with a texture recognition algorithm is employed in this study to automatically identify the fracture type and evaluate their area fractions in fractographic images. The texture is a unique visual characteristic possessed by an object in an image that distinguishes it from the other objects. In the context of this study, both brittle and ductile fracture is assumed to possess unique textures. To quantify texture, Local Binary Pattern (LBP) texture quantification algorithm is employed in this study and the corresponding set of statistical metrics referred to as textural features are evaluated from both ductile and brittle fracture training images. These textural features are then used to train Linear Discriminant Analysis machine learning classifier whose performance is assessed using cross-validation technique. The trained algorithm is then deployed to identify the brittle and ductile fracture regions in fractographic images that are not used for training purposes. In this study, five different fractographic images of structural steels are used for validation purposes, and the fracture type is successfully identified.</description><identifier>ISSN: 0013-7944</identifier><identifier>EISSN: 1873-7315</identifier><identifier>DOI: 10.1016/j.engfracmech.2019.106618</identifier><language>eng</language><publisher>New York: Elsevier Ltd</publisher><subject>Algorithms ; Artificial intelligence ; Brittle and ductile fracture characterization ; Brittle fracture ; Classifiers ; Discriminant analysis ; Ductile fracture ; Ductile-brittle transition ; Fractography ; Heat treating ; Linear discriminant analysis (LDA) ; Local binary pattern (LBP) ; Machine learning ; Structural steels ; Supervised machine learning ; Texture ; Texture recognition ; Training</subject><ispartof>Engineering fracture mechanics, 2019-10, Vol.219, p.106618, Article 106618</ispartof><rights>2019 Elsevier Ltd</rights><rights>Copyright Elsevier BV Oct 1, 2019</rights><lds50>peer_reviewed</lds50><woscitedreferencessubscribed>false</woscitedreferencessubscribed><citedby>FETCH-LOGICAL-c415t-ee238a1faac8e79fd6639b5bd9307e2c404b613a1d75272680f333a891fdcb703</citedby><cites>FETCH-LOGICAL-c415t-ee238a1faac8e79fd6639b5bd9307e2c404b613a1d75272680f333a891fdcb703</cites></display><links><openurl>$$Topenurl_article</openurl><openurlfulltext>$$Topenurlfull_article</openurlfulltext><thumbnail>$$Tsyndetics_thumb_exl</thumbnail><linktohtml>$$Uhttps://dx.doi.org/10.1016/j.engfracmech.2019.106618$$EHTML$$P50$$Gelsevier$$H</linktohtml><link.rule.ids>314,780,784,3550,27924,27925,45995</link.rule.ids></links><search><creatorcontrib>Naik, Dayakar L.</creatorcontrib><creatorcontrib>Kiran, Ravi</creatorcontrib><title>Identification and characterization of fracture in metals using machine learning based texture recognition algorithms</title><title>Engineering fracture mechanics</title><description>•Methodology for automatic identification of fracture type in steels is provided.•Extraction of the textural features of brittle and ductile fracture using LBP is described.•LDA machine learning classifier is employed and its performance is assessed.•Trained LDA classifier is deployed and the type of fracture in test images is identified.
Manual identification of brittle and ductile fracture regions in fractographic images of metals is cumbersome, time-consuming, and can be a subjective process. A supervised machine learning classifier in conjunction with a texture recognition algorithm is employed in this study to automatically identify the fracture type and evaluate their area fractions in fractographic images. The texture is a unique visual characteristic possessed by an object in an image that distinguishes it from the other objects. In the context of this study, both brittle and ductile fracture is assumed to possess unique textures. To quantify texture, Local Binary Pattern (LBP) texture quantification algorithm is employed in this study and the corresponding set of statistical metrics referred to as textural features are evaluated from both ductile and brittle fracture training images. These textural features are then used to train Linear Discriminant Analysis machine learning classifier whose performance is assessed using cross-validation technique. The trained algorithm is then deployed to identify the brittle and ductile fracture regions in fractographic images that are not used for training purposes. In this study, five different fractographic images of structural steels are used for validation purposes, and the fracture type is successfully identified.</description><subject>Algorithms</subject><subject>Artificial intelligence</subject><subject>Brittle and ductile fracture characterization</subject><subject>Brittle fracture</subject><subject>Classifiers</subject><subject>Discriminant analysis</subject><subject>Ductile fracture</subject><subject>Ductile-brittle transition</subject><subject>Fractography</subject><subject>Heat treating</subject><subject>Linear discriminant analysis (LDA)</subject><subject>Local binary pattern (LBP)</subject><subject>Machine learning</subject><subject>Structural steels</subject><subject>Supervised machine learning</subject><subject>Texture</subject><subject>Texture recognition</subject><subject>Training</subject><issn>0013-7944</issn><issn>1873-7315</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2019</creationdate><recordtype>article</recordtype><recordid>eNqNkM1OwzAQhC0EEqXwDkacU-w4jZMjqvipVIkLnC3HXjeOGqfYDgKeHodw4MhpV6PZbzWD0DUlK0poedutwO2Nl6oH1a5yQuuklyWtTtCCVpxlnNH1KVoQQtNeF8U5ugihI4TwsiILNG41uGiNVTLawWHpNFatTMAI3n7N4mDw9CKOHrB1uIcoDwGPwbo97qVqrQN8AOndJDQygMYRPn7sHtSwd3ZmH_aDt7HtwyU6MwkBV79ziV4f7l82T9nu-XG7udtlqqDrmAHkrJLUSKkq4LXRZcnqZt3omhEOuSpI0ZSUSar5Oud5CmQYY7KqqdGq4YQt0c3MPfrhbYQQRTeM3qWXImeE0ZKzgiVXPbuUH0LwYMTR2176T0GJmFoWnfjTsphaFnPL6XYz30KK8W7Bi6AsOAXapuhR6MH-g_INX5COaQ</recordid><startdate>20191001</startdate><enddate>20191001</enddate><creator>Naik, Dayakar L.</creator><creator>Kiran, Ravi</creator><general>Elsevier Ltd</general><general>Elsevier BV</general><scope>AAYXX</scope><scope>CITATION</scope><scope>7SR</scope><scope>7TB</scope><scope>8BQ</scope><scope>8FD</scope><scope>FR3</scope><scope>JG9</scope><scope>KR7</scope></search><sort><creationdate>20191001</creationdate><title>Identification and characterization of fracture in metals using machine learning based texture recognition algorithms</title><author>Naik, Dayakar L. ; Kiran, Ravi</author></sort><facets><frbrtype>5</frbrtype><frbrgroupid>cdi_FETCH-LOGICAL-c415t-ee238a1faac8e79fd6639b5bd9307e2c404b613a1d75272680f333a891fdcb703</frbrgroupid><rsrctype>articles</rsrctype><prefilter>articles</prefilter><language>eng</language><creationdate>2019</creationdate><topic>Algorithms</topic><topic>Artificial intelligence</topic><topic>Brittle and ductile fracture characterization</topic><topic>Brittle fracture</topic><topic>Classifiers</topic><topic>Discriminant analysis</topic><topic>Ductile fracture</topic><topic>Ductile-brittle transition</topic><topic>Fractography</topic><topic>Heat treating</topic><topic>Linear discriminant analysis (LDA)</topic><topic>Local binary pattern (LBP)</topic><topic>Machine learning</topic><topic>Structural steels</topic><topic>Supervised machine learning</topic><topic>Texture</topic><topic>Texture recognition</topic><topic>Training</topic><toplevel>peer_reviewed</toplevel><toplevel>online_resources</toplevel><creatorcontrib>Naik, Dayakar L.</creatorcontrib><creatorcontrib>Kiran, Ravi</creatorcontrib><collection>CrossRef</collection><collection>Engineered Materials Abstracts</collection><collection>Mechanical & Transportation Engineering Abstracts</collection><collection>METADEX</collection><collection>Technology Research Database</collection><collection>Engineering Research Database</collection><collection>Materials Research Database</collection><collection>Civil Engineering Abstracts</collection><jtitle>Engineering fracture mechanics</jtitle></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext</fulltext></delivery><addata><au>Naik, Dayakar L.</au><au>Kiran, Ravi</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Identification and characterization of fracture in metals using machine learning based texture recognition algorithms</atitle><jtitle>Engineering fracture mechanics</jtitle><date>2019-10-01</date><risdate>2019</risdate><volume>219</volume><spage>106618</spage><pages>106618-</pages><artnum>106618</artnum><issn>0013-7944</issn><eissn>1873-7315</eissn><abstract>•Methodology for automatic identification of fracture type in steels is provided.•Extraction of the textural features of brittle and ductile fracture using LBP is described.•LDA machine learning classifier is employed and its performance is assessed.•Trained LDA classifier is deployed and the type of fracture in test images is identified.
Manual identification of brittle and ductile fracture regions in fractographic images of metals is cumbersome, time-consuming, and can be a subjective process. A supervised machine learning classifier in conjunction with a texture recognition algorithm is employed in this study to automatically identify the fracture type and evaluate their area fractions in fractographic images. The texture is a unique visual characteristic possessed by an object in an image that distinguishes it from the other objects. In the context of this study, both brittle and ductile fracture is assumed to possess unique textures. To quantify texture, Local Binary Pattern (LBP) texture quantification algorithm is employed in this study and the corresponding set of statistical metrics referred to as textural features are evaluated from both ductile and brittle fracture training images. These textural features are then used to train Linear Discriminant Analysis machine learning classifier whose performance is assessed using cross-validation technique. The trained algorithm is then deployed to identify the brittle and ductile fracture regions in fractographic images that are not used for training purposes. In this study, five different fractographic images of structural steels are used for validation purposes, and the fracture type is successfully identified.</abstract><cop>New York</cop><pub>Elsevier Ltd</pub><doi>10.1016/j.engfracmech.2019.106618</doi></addata></record> |
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subjects | Algorithms Artificial intelligence Brittle and ductile fracture characterization Brittle fracture Classifiers Discriminant analysis Ductile fracture Ductile-brittle transition Fractography Heat treating Linear discriminant analysis (LDA) Local binary pattern (LBP) Machine learning Structural steels Supervised machine learning Texture Texture recognition Training |
title | Identification and characterization of fracture in metals using machine learning based texture recognition algorithms |
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