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arxiv:2407.10696

Deep ContourFlow: Advancing Active Contours with Deep Learning

Published on Jul 15, 2024
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Abstract

A combined unsupervised active contour and deep learning approach enables robust image segmentation with improved performance on histology datasets requiring minimal labeled training data.

This paper introduces a novel approach that combines unsupervised active contour models with deep learning for robust and adaptive image segmentation. Indeed, traditional active contours, provide a flexible framework for contour evolution and learning offers the capacity to learn intricate features and patterns directly from raw data. Our proposed methodology leverages the strengths of both paradigms, presenting a framework for both unsupervised and one-shot approaches for image segmentation. It is capable of capturing complex object boundaries without the need for extensive labeled training data. This is particularly required in histology, a field facing a significant shortage of annotations due to the challenging and time-consuming nature of the annotation process. We illustrate and compare our results to state of the art methods on a histology dataset and show significant improvements.

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