Litcius/Paper detail

2DeteCT - A large 2D expandable, trainable, experimental Computed Tomography dataset for machine learning

Maximilian B. Kiss, Sophia Bethany Coban, K. Joost Batenburg, Tristan van Leeuwen, Felix Lucka

2023Scientific Data16 citationsDOIOpen Access PDF

Abstract

Recent research in computational imaging largely focuses on developing machine learning (ML) techniques for image reconstruction, which requires large-scale training datasets consisting of measurement data and ground-truth images. However, suitable experimental datasets for X-ray Computed Tomography (CT) are scarce, and methods are often developed and evaluated only on simulated data. We fill this gap by providing the community with a versatile, open 2D fan-beam CT dataset suitable for developing ML techniques for a range of image reconstruction tasks. To acquire it, we designed a sophisticated, semi-automatic scan procedure that utilizes a highly-flexible laboratory X-ray CT setup. A diverse mix of samples with high natural variability in shape and density was scanned slice-by-slice (5,000 slices in total) with high angular and spatial resolution and three different beam characteristics: A high-fidelity, a low-dose and a beam-hardening-inflicted mode. In addition, 750 out-of-distribution slices were scanned with sample and beam variations to accommodate robustness and segmentation tasks. We provide raw projection data, reference reconstructions and segmentations based on an open-source data processing pipeline.

Topics & Concepts

Computer scienceGround truthArtificial intelligenceRobustness (evolution)Bridging (networking)Computer visionPipeline (software)SegmentationTomographyProjection (relational algebra)Iterative reconstructionImage resolutionOpticsAlgorithmProgramming languagePhysicsGeneBiochemistryChemistryComputer networkMedical Imaging Techniques and ApplicationsAdvanced X-ray and CT ImagingAdvanced X-ray Imaging Techniques