Search Results for author: Johanna P. Müller

Found 6 papers, 5 papers with code

Whole Slide Multiple Instance Learning for Predicting Axillary Lymph Node Metastasis

1 code implementation6 Oct 2023 Glejdis Shkëmbi, Johanna P. Müller, Zhe Li, Katharina Breininger, Peter Schüffler, Bernhard Kainz

Breast cancer is a major concern for women's health globally, with axillary lymph node (ALN) metastasis identification being critical for prognosis evaluation and treatment guidance.

Data Augmentation Multiple Instance Learning +1

Many tasks make light work: Learning to localise medical anomalies from multiple synthetic tasks

1 code implementation3 Jul 2023 Matthew Baugh, Jeremy Tan, Johanna P. Müller, Mischa Dombrowski, James Batten, Bernhard Kainz

There is a growing interest in single-class modelling and out-of-distribution detection as fully supervised machine learning models cannot reliably identify classes not included in their training.

Out-of-Distribution Detection Self-Supervised Learning

Zero-Shot Anomaly Detection with Pre-trained Segmentation Models

no code implementations15 Jun 2023 Matthew Baugh, James Batten, Johanna P. Müller, Bernhard Kainz

This technical report outlines our submission to the zero-shot track of the Visual Anomaly and Novelty Detection (VAND) 2023 Challenge.

Anomaly Detection Instance Segmentation +5

Trade-offs in Fine-tuned Diffusion Models Between Accuracy and Interpretability

1 code implementation31 Mar 2023 Mischa Dombrowski, Hadrien Reynaud, Johanna P. Müller, Matthew Baugh, Bernhard Kainz

Recent advancements in diffusion models have significantly impacted the trajectory of generative machine learning research, with many adopting the strategy of fine-tuning pre-trained models using domain-specific text-to-image datasets.

Conditional Image Generation Object Localization +1

nnOOD: A Framework for Benchmarking Self-supervised Anomaly Localisation Methods

1 code implementation2 Sep 2022 Matthew Baugh, Jeremy Tan, Athanasios Vlontzos, Johanna P. Müller, Bernhard Kainz

It is also difficult to assess whether a task generalises well for universal anomaly detection, as they are often only tested on a limited range of anomalies.

Anomaly Detection Benchmarking

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