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Statistical analysis of multivariate planar curves and applications to X-ray classification

Published: August 15, 2025 | arXiv ID: 2508.11780v2

By: Issam-Ali Moindjié, Marie-Hélène Descary, Cédric Beaulac

Potential Business Impact:

Finds heart problems from X-ray shapes.

Recent developments in computer vision have enabled the availability of segmented images across various domains, such as medicine, where segmented radiography images play an important role in diagnosis-making. As prediction problems are common in medical image analysis, this work explores the use of segmented images (through the associated contours they highlight) as predictors in a supervised classification context. Consequently, we develop a new approach for image analysis that takes into account the shape of objects within images. For this aim, we introduce a new formalism that extends the study of single random planar curves to the joint analysis of multiple planar curves-referred to here as multivariate planar curves. In this framework, we propose a solution to the alignment issue in statistical shape analysis. The obtained multivariate shape variables are then used in functional classification methods through tangent projections. Detection of cardiomegaly in segmented X-rays and numerical experiments on synthetic data demonstrate the appeal and robustness of the proposed method.

Country of Origin
🇫🇷 France

Page Count
25 pages

Category
Statistics:
Methodology