2023
DOI: 10.1002/srin.202200836
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Identification of Martensite Bands in Dual‐Phase Steels: A Deep Learning Object Detection Approach Using Faster Region‐Based‐Convolutional Neural Network

Abstract: The drive for evermore efficient construction, design and layout of components, buildings, and vehicles also affects materials science to a large extent. For some time now, research has focused on the adjustment and tailoring of microstructure in the emerging research field of process-(micro)structureproperty-performance relations. Increasingly, machine learning methods are also being used here, for example, to accelerate material design, [1] to link grain sizes and mechanical properties, [2] or to describe di… Show more

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Cited by 3 publications
(2 citation statements)
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“…However, the variations and combinations of these factors result in a vast search space, making it impractical to study them individually through manual analysis. Machine learning, on the other hand, explores the hidden relationships between features and target variables, establishes quantitative models between them, and identifies the influence of features on the target variables, thereby accelerating the efficiency of materials' research and development [11][12][13][14]. In this study, a prediction model for FS is established considering the factors of composition, processing, and microstructure.…”
Section: Methodsmentioning
confidence: 99%
“…However, the variations and combinations of these factors result in a vast search space, making it impractical to study them individually through manual analysis. Machine learning, on the other hand, explores the hidden relationships between features and target variables, establishes quantitative models between them, and identifies the influence of features on the target variables, thereby accelerating the efficiency of materials' research and development [11][12][13][14]. In this study, a prediction model for FS is established considering the factors of composition, processing, and microstructure.…”
Section: Methodsmentioning
confidence: 99%
“…Multi-Task Learning (MTL) refers to the use of a single network model to simultaneously perform two or more detection tasks [5] , sharing parameters and features between different tasks can reduce computational complexity [6] . Traditional object detection algorithms can only perform defect detection at the box level, marking the position and type of defects [7] . In this experiment, in addition to detecting the types of lemon defects, it is also necessary to judge the quality level of the lemon at the image level.…”
Section: Multi-task Learning Algorithm For Image-level and Box-level ...mentioning
confidence: 99%