Juan Camilo Vásquez-Correa

Also published as: Juan Camilo Vasquez-Correa, Juan Camilo Vásquez Correa


2025

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A Multilingual Speech-Based Driver Assistant for Basque and English
Antonio Aparicio Akcharov | Asier López Zorrilla | Juan Camilo Vásquez Correa | Oscar Montserrat | José Maria Echevarría | Begoña Arrate | Joxean Zapirain | Mikel deVelasco Vázquez | Santiago Andrés Moreno-Acevedo | Ander González-Docasal | Maria Ines Torres | Aitor Álvarez
Proceedings of the 15th International Workshop on Spoken Dialogue Systems Technology

This demo paper presents a prototype of a multilingual, speech-based driver assistant, designed to support both English and Basque languages. The inclusion of Basque—a low-resource language with limited domain-specific training data—marks a significant contribution, as publicly available AI models, including Large Language Models, often underperform for such languages compared to high-resource languages like English. Despite these challenges, our system demonstrates robust performance, successfully understanding user queries and delivering rapid responses in a demanding environment: a car simulator. Notably, the system achieves comparable performance in both English and Basque, showcasing its effectiveness in addressing linguistic disparities in AI-driven applications. A demo of our prototype will be available in the workshop.

2024

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Real-Time Speech-Driven Avatar Animation by Predicting Facial landmarks and Deformation Blendshapes
Juan Camilo Vasquez-Correa | Santiago Moreno-Acevedo | Ander Gonzalez-Docasal | Aritz Lasarguren | Jone Lòpez | Egoitz Rodriguez | Aitor Álvarez
Proceedings of the 7th International Conference on Natural Language and Speech Processing (ICNLSP 2024)

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Speech Emotion Recognition for Call Centers using Self-supervised Models: A Complete Pipeline for Industrial Applications
Juan M. Martín-Doñas | Asier López Zorrilla | Mikel deVelasco | Juan Camilo Vasquez-Correa | Aitor Álvarez | Maria Inés Torres | Paz Delgado | Ane Lazpiur | Blanca Romero | Irati Alkorta
Proceedings of the 7th International Conference on Natural Language and Speech Processing (ICNLSP 2024)

2019

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Automated Cross-language Intelligibility Analysis of Parkinson’s Disease Patients Using Speech Recognition Technologies
Nina Hosseini-Kivanani | Juan Camilo Vásquez-Correa | Manfred Stede | Elmar Nöth
Proceedings of the 57th Annual Meeting of the Association for Computational Linguistics: Student Research Workshop

Speech deficits are common symptoms amongParkinson’s Disease (PD) patients. The automatic assessment of speech signals is promising for the evaluation of the neurological state and the speech quality of the patients. Recently, progress has been made in applying machine learning and computational methods to automatically evaluate the speech of PD patients. In the present study, we plan to analyze the speech signals of PD patients and healthy control (HC) subjects in three different languages: German, Spanish, and Czech, with the aim to identify biomarkers to discriminate between PD patients and HC subjects and to evaluate the neurological state of the patients. Therefore, the main contribution of this study is the automatic classification of PD patients and HC subjects in different languages with focusing on phonation, articulation, and prosody. We will focus on an intelligibility analysis based on automatic speech recognition systems trained on these three languages. This is one of the first studies done that considers the evaluation of the speech of PD patients in different languages. The purpose of this research proposal is to build a model that can discriminate PD and HC subjects even when the language used for train and test is different.