Cookies Policy
The website need some cookies and similar means to function. If you permit us, we will use those means to collect data on your visits for aggregated statistics to improve our service. Find out More
Accept Reject
  • Menu
Publications

Publications by CTM

2025

HER2match dataset

Authors
Klöckner, P; Teixeira, J; Montezuma, D; Cardoso, JS; Horlings, HM; de Oliveira, SP;

Publication

Abstract

2025

BreLoAI - A Scalable Web Application for Breast Cancer Locoregional Treatment Approaches

Authors
Miguel M Romariz; Tiago F Gonçalves; Eduard Bonci; Hélder Oliveira; Carlos Mavioso; Maria J Cardoso; Jaime Cardoso;

Publication
Cureus Journal of Computer Science.

Abstract

2025

End-to-End Occluded Person Re-Identification With Artificial Occlusion Generation

Authors
Capozzi, L; Cardoso, JS; Rebelo, A;

Publication
IEEE ACCESS

Abstract
In recent years, the task of person re-identification (Re-ID) has improved considerably with the advances in deep learning methodologies. However, occluded person Re-ID remains a challenging task, as parts of the body of the individual are frequently hidden by various objects, obstacles, or other people, making the identification process more difficult. To address these issues, we introduce a novel data augmentation strategy using artificial occlusions, consisting of random shapes and objects from a small image dataset that was created. We also propose an end-to-end methodology for occluded person Re-ID, which consists of three branches: a global branch, a feature dropping branch, and an occlusion detection branch. Experimental results show that the use of random shape occlusions is superior to random erasing using our architecture. Results on six datasets consisting of three tasks (holistic, partial and occluded person Re-ID) demonstrate that our method performs favourably against state-of-the-art methodologies.

2025

Leveraging Cold Diffusion for the Decomposition of Identically Distributed Superimposed Images

Authors
Montenegro, H; Cardoso, JS;

Publication
IEEE OPEN JOURNAL OF SIGNAL PROCESSING

Abstract
With the growing adoption of Deep Learning for imaging tasks in biometrics and healthcare, it becomes increasingly important to ensure privacy when using and sharing images of people. Several works enable privacy-preserving image sharing by anonymizing the images so that the corresponding individuals are no longer recognizable. Most works average images or their embeddings as an anonymization technique, relying on the assumption that the average operation is irreversible. Recently, cold diffusion models, based on the popular denoising diffusion probabilistic models, have succeeded in reversing deterministic transformations on images. In this work, we leverage cold diffusion to decompose superimposed images, empirically demonstrating that it is possible to obtain two or more identically-distributed images given their average. We propose novel sampling strategies for this task and show their efficacy on three datasets. Our findings highlight the risks of averaging images as an anonymization technique and argue for the use of alternative anonymization strategies.

2025

Balancing Beyond Discrete Categories: Continuous Demographic Labels for Fair Face Recognition

Authors
Neto, PC; Damer, N; Cardoso, JS; Sequeira, AF;

Publication
CoRR

Abstract

2025

A Disentangled Approach to Predict the Aesthetic Outcomes of Breast Cancer Treatment

Authors
Montenegro, H; Cardoso, MJ; Cardoso, JS;

Publication
COMPUTER VISION-ECCV 2024 WORKSHOPS, PT IX

Abstract
Breast cancer locoregional treatment can cause significant and long-lasting alterations to a patient's body. As various surgical options may be available to a patient and considering the impact that the aesthetic outcome may have on the patient's self-esteem, it is critical for the patient to be adequately informed of the possible outcomes of each treatment when deciding on the treatment plan. With the purpose of simulating how a patient may look like after treatment, we propose a deep generative model to transfer asymmetries caused by treatment from post-operative breast patients into pre-operative images, taking advantage of the inherent symmetry of breast images. Furthermore, we disentangle asymmetries related with the breast shape from the nipple within the latent space of the network, enabling higher control over the alterations to the breasts. Finally, we show the proposed model's wide applicability in medical imaging, by applying it to generate counterfactual explanations for cardiomegaly and pleural effusion prediction in chest radiographs.

  • 13
  • 408