Influence of Geometry, Class Imbalance and Alignment on Reconstruction Accuracy -- A Micro-CT Phantom-Based Evaluation
Avinash Kumar K M, Samarth S. Raut

TL;DR
This study systematically evaluates how geometry, class imbalance, and alignment affect micro-CT reconstruction accuracy, highlighting the importance of proper alignment and metric choice for reliable assessment.
Contribution
It provides a comprehensive analysis of factors influencing reconstruction accuracy and compares voxel and surface-based metrics across different segmentation methods and geometries.
Findings
Otsu segmentation method is most suitable for all geometries.
AAA's small wall thickness causes low overlap scores and misalignment issues.
Surface-based metrics differ from voxel-based trends, emphasizing the need for multiple evaluation approaches.
Abstract
The accuracy of the 3D models created from medical scans depends on imaging hardware, segmentation methods and mesh processing techniques etc. The effects of geometry type, class imbalance, voxel and point cloud alignment on accuracy remain to be thoroughly explored. This work evaluates the errors across the reconstruction pipeline and explores the use of voxel and surface-based accuracy metrics for different segmentation algorithms and geometry types. A sphere, a facemask, and an AAA were printed using the SLA technique and scanned using a micro-CT machine. Segmentation was performed using GMM, Otsu and RG based methods. Segmented and reference models aligned using the KU algorithm, were quantitatively compared to evaluate metrics like Dice and Jaccard scores, precision. Surface meshes were registered with reference meshes using an ICP-based alignment process. Metrics like chamfer…
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Taxonomy
TopicsAnatomy and Medical Technology · Advanced X-ray and CT Imaging · Digital Image Processing Techniques
