An Algorithm for Learning Shape and Appearance Models without Annotations
John Ashburner, Mikael Brudfors, Kevin Bronik, Yael Balbastre

TL;DR
This paper introduces an iterative, probabilistic framework for learning shape and appearance models from images without manual annotations, enabling privacy-preserving, distributed analysis and effective feature extraction for classification tasks.
Contribution
It presents a novel EM-like algorithm that learns shape and appearance models without annotations, suitable for privacy-sensitive, distributed medical image analysis.
Findings
Successfully aligned face images without manual landmarks
Demonstrated potential for machine learning with limited data
Handled missing data effectively for cross-validation
Abstract
This paper presents a framework for automatically learning shape and appearance models for medical (and certain other) images. It is based on the idea that having a more accurate shape and appearance model leads to more accurate image registration, which in turn leads to a more accurate shape and appearance model. This leads naturally to an iterative scheme, which is based on a probabilistic generative model that is fit using Gauss-Newton updates within an EM-like framework. It was developed with the aim of enabling distributed privacy-preserving analysis of brain image data, such that shared information (shape and appearance basis functions) may be passed across sites, whereas latent variables that encode individual images remain secure within each site. These latent variables are proposed as features for privacy-preserving data mining applications. The approach is demonstrated…
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