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Main Authors: Brandstätter, Stefan, Köller, Maximilian, Seeböck, Philipp, Blessing, Alissa, Oberndorfer, Felicitas, Pochepnia, Svitlana, Prosch, Helmut, Langs, Georg
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.03524
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author Brandstätter, Stefan
Köller, Maximilian
Seeböck, Philipp
Blessing, Alissa
Oberndorfer, Felicitas
Pochepnia, Svitlana
Prosch, Helmut
Langs, Georg
author_facet Brandstätter, Stefan
Köller, Maximilian
Seeböck, Philipp
Blessing, Alissa
Oberndorfer, Felicitas
Pochepnia, Svitlana
Prosch, Helmut
Langs, Georg
contents In histopathology, tissue samples are often larger than a standard microscope slide, making stitching of multiple fragments necessary to process entire structures such as tumors. Automated stitching is a prerequisite for scaling analysis, but is challenging due to possible tissue loss during preparation, inhomogeneous morphological distortion, staining inconsistencies, missing regions due to misalignment on the slide, or frayed tissue edges. This limits state-of-the-art stitching methods using boundary shape matching algorithms to reconstruct artificial whole mount slides (WMS). Here, we introduce SemanticStitcher using latent feature representations derived from a visual histopathology foundation model to identify neighboring areas in different fragments. Robust pose estimation based on a large number of semantic matching candidates derives a mosaic of multiple fragments to form the WMS. Experiments on three different histopathology datasets demonstrate that SemanticStitcher yields robust WMS mosaicing and consistently outperforms the state of the art in correct boundary matches.
format Preprint
id arxiv_https___arxiv_org_abs_2508_03524
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Semantic Mosaicing of Histo-Pathology Image Fragments using Visual Foundation Models
Brandstätter, Stefan
Köller, Maximilian
Seeböck, Philipp
Blessing, Alissa
Oberndorfer, Felicitas
Pochepnia, Svitlana
Prosch, Helmut
Langs, Georg
Computer Vision and Pattern Recognition
Machine Learning
In histopathology, tissue samples are often larger than a standard microscope slide, making stitching of multiple fragments necessary to process entire structures such as tumors. Automated stitching is a prerequisite for scaling analysis, but is challenging due to possible tissue loss during preparation, inhomogeneous morphological distortion, staining inconsistencies, missing regions due to misalignment on the slide, or frayed tissue edges. This limits state-of-the-art stitching methods using boundary shape matching algorithms to reconstruct artificial whole mount slides (WMS). Here, we introduce SemanticStitcher using latent feature representations derived from a visual histopathology foundation model to identify neighboring areas in different fragments. Robust pose estimation based on a large number of semantic matching candidates derives a mosaic of multiple fragments to form the WMS. Experiments on three different histopathology datasets demonstrate that SemanticStitcher yields robust WMS mosaicing and consistently outperforms the state of the art in correct boundary matches.
title Semantic Mosaicing of Histo-Pathology Image Fragments using Visual Foundation Models
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2508.03524