Manifold-Preserving Superpixel Hierarchies and Embeddings for the Exploration of High-Dimensional Images

AI in healthcare
Published: arXiv: 2602.24160v1
Authors

Alexander Vieth Boudewijn Lelieveldt Elmar Eisemann Anna Vilanova Thomas Höllt

Abstract

High-dimensional images, or images with a high-dimensional attribute vector per pixel, are commonly explored with coordinated views of a low-dimensional embedding of the attribute space and a conventional image representation. Nowadays, such images can easily contain several million pixels. For such large datasets, hierarchical embedding techniques are better suited to represent the high-dimensional attribute space than flat dimensionality reduction methods. However, available hierarchical dimensionality reduction methods construct the hierarchy purely based on the attribute information and ignore the spatial layout of pixels in the images. This impedes the exploration of regions of interest in the image space, since there is no congruence between a region of interest in image space and the associated attribute abstractions in the hierarchy. In this paper, we present a superpixel hierarchy for high-dimensional images that takes the high-dimensional attribute manifold into account during construction. Through this, our method enables consistent exploration of high-dimensional images in both image and attribute space. We show the effectiveness of this new image-guided hierarchy in the context of embedding exploration by comparing it with classical hierarchical embedding-based image exploration in two use cases.

Paper Summary

Problem
Exploring high-dimensional images, which contain a large amount of data about each pixel, is a challenging task. These images are used in various fields such as geoscience, cultural heritage analysis, and system biology. The main problem is that current methods for exploring these images do not take into account the spatial layout of the pixels, making it difficult to identify regions of interest in the image space.
Key Innovation
The researchers propose a new method for exploring high-dimensional images called a "superpixel hierarchy." This method takes into account both the spatial layout of the pixels and the high-dimensional attribute space. The superpixel hierarchy is a sequence of superpixel segmentations with increasingly large and fewer superpixels. This allows for a consistent exploration of high-dimensional images in both image and attribute space.
Practical Impact
The superpixel hierarchy method has several practical applications. It can be used in various fields such as geoscience, cultural heritage analysis, and system biology to explore high-dimensional images. The method can also be used to improve the segmentation and exploration steps in image analysis. Additionally, the superpixel cell structures can be used in subsequent cell-neighborhood analysis steps, making it a useful tool for researchers and analysts.
Analogy / Intuitive Explanation
Imagine you are trying to explore a large city. You can use a map to get a general idea of the city's layout, but you also need to consider the specific neighborhoods and streets to understand the city's nuances. The superpixel hierarchy method is like using a map that takes into account both the overall city layout and the specific neighborhoods, allowing you to explore the city in a more detailed and meaningful way. Similarly, the superpixel hierarchy method allows for a consistent exploration of high-dimensional images in both image and attribute space.
Paper Information
Categories:
cs.CV
Published Date:

arXiv ID:

2602.24160v1

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