It is shown that preconditioning of experimental X-ray computed tomography (XCT) data is critical to achieve high-precision segmentation scores. The challenging experimental XCT datasets and deep convolutional neural networks (DCNNs) are used that are trained with low-resemblance synthetic XCT data. The material used is a 6-phase Al–Si metal matrix composite-reinforced with ceramic fibers and particles. To achieve generalization, in our past studies, specific data augmentation techniques were proposed for the synthetic XCT training data. In addition, two toolsets are devised: (1) special 3D DCNN architecture (3D Triple_UNet), slicing the experimental XCT data from multiple views (MultiView Forwarding), the i.S.Sy.Da.T.A. iterative segmentation algorithm, and (2) nonlocal means (NLM) conditioning (filtering) for the experimental XCT data. This results in good segmentation Dice scores across all phases compared to more standard approaches (i.e., standard UNet architecture, single view slicing, standard single training, and NLM conditioning). Herein, the NLM filter is replaced with the deep conditioning framework BAM SynthCOND introduced in a previous publication, which can be trained with synthetic XCT data. This leads to a significant segmentation precision increase for all phases. The proposed methods are potentially applicable to other materials and imaging techniques.

A Complete Strategy to Achieve High Precision Automatic Segmentation of Challenging Experimental X-Ray Computed Tomography Data Using Low-Resemblance Synthetic Training Data / Tsamos, A.; Evsevleev, S.; Fioresi, R.; Faglioni, F.; Bruno, G.. - In: ADVANCED ENGINEERING MATERIALS. - ISSN 1527-2648. - 26:2(2024), pp. 23010301-23010309. [10.1002/adem.202301030]

A Complete Strategy to Achieve High Precision Automatic Segmentation of Challenging Experimental X-Ray Computed Tomography Data Using Low-Resemblance Synthetic Training Data

Faglioni F.
Methodology
;
2024

Abstract

It is shown that preconditioning of experimental X-ray computed tomography (XCT) data is critical to achieve high-precision segmentation scores. The challenging experimental XCT datasets and deep convolutional neural networks (DCNNs) are used that are trained with low-resemblance synthetic XCT data. The material used is a 6-phase Al–Si metal matrix composite-reinforced with ceramic fibers and particles. To achieve generalization, in our past studies, specific data augmentation techniques were proposed for the synthetic XCT training data. In addition, two toolsets are devised: (1) special 3D DCNN architecture (3D Triple_UNet), slicing the experimental XCT data from multiple views (MultiView Forwarding), the i.S.Sy.Da.T.A. iterative segmentation algorithm, and (2) nonlocal means (NLM) conditioning (filtering) for the experimental XCT data. This results in good segmentation Dice scores across all phases compared to more standard approaches (i.e., standard UNet architecture, single view slicing, standard single training, and NLM conditioning). Herein, the NLM filter is replaced with the deep conditioning framework BAM SynthCOND introduced in a previous publication, which can be trained with synthetic XCT data. This leads to a significant segmentation precision increase for all phases. The proposed methods are potentially applicable to other materials and imaging techniques.
2024
26
2
23010301
23010309
A Complete Strategy to Achieve High Precision Automatic Segmentation of Challenging Experimental X-Ray Computed Tomography Data Using Low-Resemblance Synthetic Training Data / Tsamos, A.; Evsevleev, S.; Fioresi, R.; Faglioni, F.; Bruno, G.. - In: ADVANCED ENGINEERING MATERIALS. - ISSN 1527-2648. - 26:2(2024), pp. 23010301-23010309. [10.1002/adem.202301030]
Tsamos, A.; Evsevleev, S.; Fioresi, R.; Faglioni, F.; Bruno, G.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1372433
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