Person Identification
Person identification encompasses a broad range of techniques aimed at recognizing and classifying individuals from various data sources, including images, videos, audio, and even physiological signals. Current research emphasizes robust methods for handling noisy or incomplete data, focusing on deep learning architectures like convolutional neural networks, recurrent neural networks, and graph neural networks, as well as optimization algorithms such as Bayesian optimization and projected gradient descent. These advancements have significant implications for applications such as security, healthcare, and human-computer interaction, improving accuracy and efficiency in tasks ranging from biometric authentication to personalized medicine.
Papers
Automated Image-Based Identification and Consistent Classification of Fire Patterns with Quantitative Shape Analysis and Spatial Location Identification
Pengkun Liu, Shuna Ni, Stanislav I. Stoliarov, Pingbo Tang
MassSpecGym: A benchmark for the discovery and identification of molecules
Roman Bushuiev, Anton Bushuiev, Niek F. de Jonge, Adamo Young, Fleming Kretschmer, Raman Samusevich, Janne Heirman, Fei Wang, Luke Zhang, Kai Dührkop, Marcus Ludwig, Nils A. Haupt, Apurva Kalia, Corinna Brungs, Robin Schmid, Russell Greiner, Bo Wang, David S. Wishart, Li-Ping Liu, Juho Rousu, Wout Bittremieux, Hannes Rost, Tytus D. Mak, Soha Hassoun, Florian Huber, Justin J.J. van der Hooft, Michael A. Stravs, Sebastian Böcker, Josef Sivic, Tomáš Pluskal
AUGUR, A flexible and efficient optimization algorithm for identification of optimal adsorption sites
Ioannis Kouroudis, Poonam, Neel Misciaci, Felix Mayr, Leon Müller, Zhaosu Gu, Alessio Gagliardi
Identification For Control Based on Neural Networks: Approximately Linearizable Models
Maxime Thieffry, Alexandre Hache, Mohamed Yagoubi, Philippe Chevrel