2DeteCT - A large 2D expandable, trainable, experimental Computed Tomography dataset for machine learning.
Maximilian B KissSophia B CobanK Joost BatenburgTristan van LeeuwenFelix LuckaPublished in: Scientific data (2023)
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.
Keyphrases
- dual energy
- computed tomography
- image quality
- deep learning
- machine learning
- big data
- positron emission tomography
- electronic health record
- low dose
- contrast enhanced
- high resolution
- electron microscopy
- minimally invasive
- magnetic resonance imaging
- convolutional neural network
- working memory
- rna seq
- magnetic resonance
- monte carlo