2022
Autores
Brömme A.; Damer N.; Gomez-Barrero M.; Raja K.; Rathgeb C.; Sequeira A.F.; Todisco M.; Uhl A.;
Publicação
BIOSIG 2022 - Proceedings of the 21st International Conference of the Biometrics Special Interest Group
Abstract
2025
Autores
Caldeira, E; Neto, PC; Huber, M; Damer, N; Sequeira, AF;
Publicação
INFORMATION FUSION
Abstract
The development of deep learning algorithms has extensively empowered humanity's task automatization capacity. However, the huge improvement in the performance of these models is highly correlated with their increasing level of complexity, limiting their usefulness in human-oriented applications, which are usually deployed in resource-constrained devices. This led to the development of compression techniques that drastically reduce the computational and memory costs of deep learning models without significant performance degradation. These compressed models are especially essential when implementing multi-model fusion solutions where multiple models are required to operate simultaneously. This paper aims to systematize the current literature on this topic by presenting a comprehensive survey of model compression techniques in biometrics applications, namely quantization, knowledge distillation and pruning. We conduct a critical analysis of the comparative value of these techniques, focusing on their advantages and disadvantages and presenting suggestions for future work directions that can potentially improve the current methods. Additionally, we discuss and analyze the link between model bias and model compression, highlighting the need to direct compression research toward model fairness in future works.
2024
Autores
Neto, PC; Mamede, RM; Albuquerque, C; Gonçalves, T; Sequeira, AF;
Publicação
2024 IEEE 18TH INTERNATIONAL CONFERENCE ON AUTOMATIC FACE AND GESTURE RECOGNITION, FG 2024
Abstract
Face recognition applications have grown in parallel with the size of datasets, complexity of deep learning models and computational power. However, while deep learning models evolve to become more capable and computational power keeps increasing, the datasets available are being retracted and removed from public access. Privacy and ethical concerns are relevant topics within these domains. Through generative artificial intelligence, researchers have put efforts into the development of completely synthetic datasets that can be used to train face recognition systems. Nonetheless, the recent advances have not been sufficient to achieve performance comparable to the state-of-the-art models trained on real data. To study the drift between the performance of models trained on real and synthetic datasets, we leverage a massive attribute classifier (MAC) to create annotations for four datasets: two real and two synthetic. From these annotations, we conduct studies on the distribution of each attribute within all four datasets. Additionally, we further inspect the differences between real and synthetic datasets on the attribute set. When comparing through the Kullback-Leibler divergence we have found differences between real and synthetic samples. Interestingly enough, we have verified that while real samples suffice to explain the synthetic distribution, the opposite could not be further from being true.
2024
Autores
Caldeira, E; Cardoso, JS; Sequeira, AF; Neto, PC;
Publicação
CoRR
Abstract
2015
Autores
Ana Filipa Pinheiro Sequeira;
Publicação
Abstract
2024
Autores
Mamede, RM; Neto, PC; Sequeira, AF;
Publicação
CoRR
Abstract
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