Isabel Rio-TortoInstitute for Systems and Computer Engineering, Technology and Science (INESC TEC) | INESC TEC · CTM – Centre for Telecommunications and Multimedia
Isabel Rio-Torto
Master of Electrical and Computers Engineering
About
13
Publications
1,816
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83
Citations
Introduction
Isabel Rio-Torto received the master's degree in Electrical and Computers Engineering in 2019 from FEUP. Isabel is currently a research assistant at INESC TEC, associated with the VCMI group, and a Ph.D. student in Computer Science from FCUP. Isabel is also an Invited Teaching Assistant at FEUP, teaching programming courses. Her work is currently focused on "Self-explanatory computer-aided diagnosis with limited supervision".
Additional affiliations
October 2019 - October 2020
Position
- Researcher
Description
- Researcher in the INDTECH4.0 project - New Technologies for Intelligent Manufacturing (Industry 4.0/Factories of the Future) - development and implementation of innovative solutions for a Portuguese car manufacturer (PSA Mangualde). Focused on automating the quality inspection process of the mounted vehicle on the shop floor through deep learning-based object detection, semantic segmentation and content-based image retrieval.
Education
October 2020 - October 2024
September 2014 - September 2019
Publications
Publications (13)
Post-hoc explanation methods have often been criticised for abstracting away the decision-making process of deep neural networks. In this work, we would like to provide natural language descriptions for what different layers of a vision backbone have learned. Our DeViL method generates textual descriptions of visual features at different layers of...
Post-hoc explanation methods have often been criticised for abstracting away the decision-making process of deep neural networks. In this work, we would like to provide natural language descriptions for what different layers of a vision backbone have learned. Our DeViL method decodes vision features into language, not only highlighting the attribut...
In everyday conversations, humans can take on different roles and adapt their vocabulary to their chosen roles. We explore whether LLMs can take on, that is impersonate, different roles when they generate text in-context. We ask LLMs to assume different personas before solving vision and language tasks. We do this by prefixing the prompt with a per...
Every year, the VISion Understanding and Machine intelligence (VISUM) summer school runs a competition where participants can learn and share knowledge about Computer Vision and Machine Learning in a vibrant environment. 2021 VISUM’s focused on applying those methodologies in fashion. Recently, there has been an increase of interest within the scie...
The still prevalent use of paper conformity lists in the automotive industry has a serious negative impact on the performance of quality control inspectors. We propose instead a hybrid quality inspection system, where we combine automated detection with human feedback, to increase worker performance by reducing mental and physical fatigue, and the...
The growing importance of the Explainable Artificial Intelligence (XAI) field has led to the proposal of several methods for producing visual heatmaps of the classification decisions of deep learning models. However, visual explanations are not sufficient because different end-users have different backgrounds and preferences. Natural language expla...
The increasing popularity of attention mechanisms in deep learning algorithms for computer vision and natural language processing made these models attractive to other research domains. In healthcare, there is a strong need for tools that may improve the routines of the clinicians and the patients. Naturally, the use of attention-based algorithms f...
The increasing popularity of attention mechanisms in deep learning algorithms for computer vision and natural language processing made these models attractive to other research domains. In healthcare, there is a strong need for tools that may improve the routines of the clinicians and the patients. Naturally, the use of attention-based algorithms f...
Considerable amounts of data are required for a deep learning model to generalize to unseen cases successfully. Furthermore, such data is often manually labeled, making its annotation process costly and time-consuming. We propose using unlabeled real-world data in conjunction with automatically labeled synthetic data, obtained from simulators, to s...
With the outstanding predictive performance of Convolutional Neural Networks on different tasks and their widespread use in real-world scenarios, it is essential to understand and trust these black-box models. While most of the literature focuses on post-model methods, we propose a novel in-model joint architecture, composed by an explainer and a c...
Convolutional Neural Networks, as well as other deep learning methods, have shown remarkable performance on tasks like classification and detection. However, these models largely remain black-boxes. With the widespread use of such networks in real-world scenarios and with the growing demand of the right to explanation, especially in highly-regulate...