Procrustes registration of two-dimensional statistical shape models without correspondences
Alma Eguizabal, Peter J. Schreier, J\"urgen Schmidt

TL;DR
This paper introduces a novel Dynamic Time Warping-based method for Procrustes registration of 2D statistical shape models that does not require known correspondences, outperforming traditional ICP-based techniques.
Contribution
It presents a new strategy for shape registration that eliminates the need for manual landmarks or initial alignment, improving robustness and efficiency.
Findings
Outperforms ICP-based registration methods
Effective on various shape datasets
Handles lack of correspondence in shape contours
Abstract
Statistical shape models are a useful tool in image processing and computer vision. A Procrustres registration of the contours of the same shape is typically perform to align the training samples to learn the statistical shape model. A Procrustes registration between two contours with known correspondences is straightforward. However, these correspondences are not generally available. Manually placed landmarks are often used for correspondence in the design of statistical shape models. However, determining manual landmarks on the contours is time-consuming and often error-prone. One solution to simultaneously find correspondence and registration is the Iterative Closest Point (ICP) algorithm. However, ICP requires an initial position of the contours that is close to registration, and it is not robust against outliers. We propose a new strategy, based on Dynamic Time Warping, that…
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Taxonomy
TopicsMorphological variations and asymmetry · Time Series Analysis and Forecasting · Image Retrieval and Classification Techniques
MethodsProcrustes
