Traditional facial recognition is realized by facial recognition algorithms based on 2D or 3D digital images and has been well developed and has found wide applications in areas related to identification verification. In this work, we propose a novel live face detection (LFD) method by utilizing snapshot spectral imaging technology, which takes advantage of the distinctive reflected spectra from human faces. By employing a computational spectral reconstruction algorithm based on Tikhonov regularization, a rapid and precise spectral reconstruction with a fidelity of over 99% for the color checkers and various types of "face" samples has been achieved. The flat face areas were extracted exactly from the "face" images with Dlib face detection and Euclidean distance selection algorithms. A large quantity of spectra were rapidly reconstructed from the selected areas and compiled into an extensive database. The convolutional neural network model trained on this database demonstrates an excellent capability for predicting different types of "faces" with an accuracy exceeding 98%, and, according to a series of evaluations, the system's detection time consistently remained under one second, much faster than other spectral imaging LFD methods. Moreover, a pixel-level liveness detection test system is developed and a LFD experiment shows good agreement with theoretical results, which demonstrates the potential of our method to be applied in other recognition fields. The superior performance and compatibility of our method provide an alternative solution for accurate, highly integrated video LFD applications.
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http://dx.doi.org/10.3390/s25030952 | DOI Listing |
Rev Bras Enferm
March 2025
Universidade Federal do Rio de Janeiro. Rio de Janeiro, Rio de Janeiro, Brazil.
Objectives: to understand nurse participation in the process of early detection of warning signs of autism spectrum disorders (ASD) in childcare consultations.
Methods: qualitative, exploratory research, conducted through semi-structured interviews conducted between August and November 2022 with 27 nurses from family clinics in the city of Rio de Janeiro. The IRaMuTeQ® software was used for data treatment.
Background: Acquired brain injury (ABI), including traumatic brain injury and hypoxic/anoxic injury, presents significant public health concerns; however, existing literature has focused primarily on male populations, such as military personnel and contact sports participants. Sex-related differences in ABI outcomes necessitate focused research due to potential heightened risk and distinct physiological responses among females.
Objectives: This pilot study aims to explore fluid-based biomarkers for neurological injury and inflammation in females experiencing intimate partner violence (IPV)-related assaults to the head, neck, or face.
ACS Appl Mater Interfaces
March 2025
School of Mechanical Engineering, Southwest Jiaotong University, Chengdu 610031, P. R. China.
With the increasing development of metaverse and human-computer interaction (HMI) technologies, artificial intelligence (AI) applications in virtual reality (VR) environments are receiving significant attention. This study presents a self-sensing facial recognition mask (FRM) utilizing triboelectric nanogenerators (TENG) and machine learning algorithms to enhance user immersion and interaction. Various TENG negative electrode materials are evaluated to improve sensor performance, and the efficacy of a single sensor is confirmed.
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March 2025
Laboratório de Síntese e Análise de Biomoléculas - LSAB, Instituto de Química, Universidade de Brasília, Brazil.
Membrane-active peptides are useful tools in the design of multifunctional molecules. For example, peptide chimeras may release, after proteolysis of membrane-adsorbed molecules, pharmacologically active fragments. In previous work, Chim2, an antimicrobial peptide composed of a membrane-active module, an enzymatic hydrolysis site, and an agonist moiety for type 2 formyl peptide receptors (FPR2), was conceptualized.
View Article and Find Full Text PDFCurr Drug Targets
March 2025
Hubei Key Laboratory of Tumor Microenvironment and Immunotherapy, China Three Gorges University, Yichang, 443002, China.
Background: Diseases triggered by glucose and lipid metabolic disorders, such as hyperglycemia and hyperlipidemia, have become a global health threat. According to statistics, diabetic patients have exceeded 463 million worldwide, and the prevalence of hyperlipidemia is also continuously rising. These glycolipid metabolic diseases not only significantly increase the risk of complications such as cardiovascular disease, stroke, and kidney disease but also impose a huge economic burden on the global healthcare system.
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