recognition

Hyderabad Airport wins global recognition for digital innovations




recognition

Smart Glasses Bring Facial Recognition Concerns

Harvard students have demonstrated that "smart glasses" can be used to look at somebody in public and reveal their identities and personal information. Meta, which made the glasses used in the demonstration, say they have adequate security safeguards in place. The Ray-Ban smart glasses, produced by Facebook owner Meta, connect wirelessly to a smartphone. They include a camera, speaker and microphone and allows a range of hands-free actions such as filming, taking photos and making calls. (Source: meta.com ) Facial Recognition Abused AnhPhu Nguyen and Caine Ardayfio of Harvard University ... (view more)




recognition

Materna IPS deploys Biometric Face Recognition at Tokyo Haneda Airport

Tokyo International Airport (HANEDA), the 4th largest airport in the world, chose the German SBD provider to equip their self-service installation with the Materna IPS One ID journey.




recognition

Meta is testing face recognition to battle scams impersonating celebs

Celebrity impersonation became one of the more serious threats on social media to users Meta, the parent company of Facebook and Instagram, is testing out facial recognition tools to combat a rising problem: fake ads featuring celebrities. These are popularly referred to as “celeb-bait” scams, where scammers use images of popular public figures to dupe […]




recognition

RecordForAll Wins Industry Recognition

RecordForAll, audio recording and editing software for podcasters, took home top honors at the recent 2007 Shareware Industry Awards ceremony, by recieiving the award for the Best Sound Program. The Shareware Industry Awards are the Oscars of the software industry, recognizing outstanding software programs sold utilizing a marketing method that allows users to try the software prior to making a purchase decision.






recognition

Fusion of Complementary Online and Offline Strategies for Recognition of Handwritten Kannada Characters

This work describes an online handwritten character recognition system working in combination with an offline recognition system. The online input data is also converted into an offline image, and in parallel recognized by both online and offline strategies. Features are proposed for offline recognition and a disambiguation step is employed in the offline system for the samples for which the confidence level of the classier is low. The outputs are then combined probabilistically resulting in a classier out-performing both individual systems. Experiments are performed for Kannada, a South Indian Language, over a database of 295 classes. The accuracy of the online recognizer improves by 11% when the combination with offline system is used.




recognition

Choice of Classifiers in Hierarchical Recognition of Online Handwritten Kannada and Tamil Aksharas

In this paper, we propose a novel dexterous technique for fast and accurate recognition of online handwritten Kannada and Tamil characters. Based on the primary classifier output and prior knowledge, the best classifier is chosen from set of three classifiers for second stage classification. Prior knowledge is obtained through analysis of the confusion matrix of primary classifier which helped in identifying the multiple sets of confused characters. Further, studies were carried out to check the performance of secondary classifiers in disambiguating among the confusion sets. Using this technique we have achieved an average accuracy of 92.6% for Kannada characters on the MILE lab dataset and 90.2% for Tamil characters on the HP Labs dataset.




recognition

Emotion recognition method for multimedia teaching classroom based on convolutional neural network

In order to further improve the teaching quality of multimedia teaching in school daily teaching, a classroom facial expression emotion recognition model is proposed based on convolutional neural network. VGGNet and CliqueNet are used as the basic expression emotion recognition methods, and the two recognition models are fused while the attention module CBAM is added. Simulation results show that the designed classroom face expression emotion recognition model based on V-CNet has high recognition accuracy, and the recognition accuracy on the test set reaches 93.11%, which can be applied to actual teaching scenarios and improve the quality of classroom teaching.




recognition

Application of integrated image processing technology based on PCNN in online music symbol recognition training

To improve the effectiveness of online training for music education, it was investigated how to improve the pulse-coupled neural network in image processing for spectral image segmentation. The study proposes a two-scale descent method to achieve oblique spectral correction. Subsequently, a convolutional neural network was optimised using a two-channel feature fusion recognition network for music theory notation recognition. The results showed that this image segmentation method had the highest accuracy, close to 98%, and the accuracy of spectral tilt correction was also as high as 98.4%, which provided good image pre-processing results. When combined with the improved convolutional neural network, the average accuracy of music theory symbol recognition was about 97% and the highest score of music majors was improved by 16 points. This shows that the method can effectively improve the teaching effect of online training in music education and has certain practical value.




recognition

Combination of Lv-3DCNN algorithm in random noise environment and its application in aerobic gymnastics action recognition

Action recognition plays a vital role in analysing human body behaviour and has significant implications for research and education. However, traditional recognition methods often suffer from issues such as inaccurate time and spatial feature vectors. Therefore, this study addresses the problem of inaccurate recognition of aerobic gymnastics action image data and proposes a visualised three-dimensional convolutional neural network algorithm-based action recognition model. This model incorporates unsupervised visualisation methods into the traditional network and enhances data recognition capabilities through the introduction of a random noise perturbation enhancement algorithm. The research results indicate that the data augmented with noise perturbation achieves the lowest mean square error, reducing the error value from 0.3352 to 0.3095. The use of unsupervised visualisation analysis enables clearer recognition of human actions, and the algorithm model is capable of accurately recognising aerobic movements. Compared to traditional algorithms, the new algorithm exhibits higher recognition accuracy and superior performance.




recognition

Learning behaviour recognition method of English online course based on multimodal data fusion

The conventional methods for identifying English online course learning behaviours have the problems of low recognition accuracy and high time cost. Therefore, a multimodal data fusion-based method for identifying English online course learning behaviours is proposed. Firstly, the analytic hierarchy process is used for decision fusion of multimodal data of learning behaviour. Secondly, based on the fusion results of multimodal data, weight coefficients are set to minimise losses and extract learning behaviour features. Finally, based on the extracted learning behaviour characteristics, the optimal classification function is constructed to classify the learning behaviour of English online courses. Based on the transfer information of learning behaviour status, the identification of online course learning behaviour is completed. The experimental results show that the recognition accuracy of the proposed method is above 90%, and its recognition accuracy is and can shorten the recognition time of learning behaviour, with high practical application reliability.




recognition

Student's classroom behaviour recognition method based on abstract hidden Markov model

In order to improve the standardisation of mutual information index, accuracy rate and recall rate of student classroom behaviour recognition method, this paper proposes a student's classroom behaviour recognition method based on abstract hidden Markov model (HMM). After cleaning the students' classroom behaviour data, improve the data quality through interpolation and standardisation, and then divide the types of students' classroom behaviour. Then, in support vector machine, abstract HMM is used to calculate the output probability density of support vector machine. Finally, according to the characteristic interval of classroom behaviour, we can judge the category of behaviour characteristics. The experiment shows that normalised mutual information (NMI) index of this method is closer to one, and the maximum AUC-PR index can reach 0.82, which shows that this method can identify students' classroom behaviour more effectively and reliably.




recognition

Online Handwritten Character Recognition Using an Optical Backpropagation Neural Network




recognition

Improving the Accuracy of Facial Micro-Expression Recognition: Spatio-Temporal Deep Learning with Enhanced Data Augmentation and Class Balancing

Aim/Purpose: This study presents a novel deep learning-based framework designed to enhance spontaneous micro-expression recognition by effectively increasing the amount and variety of data and balancing the class distribution to improve recognition accuracy. Background: Micro-expression recognition using deep learning requires large amounts of data. Micro-expression datasets are relatively small, and their class distribution is not balanced. Methodology: This study developed a framework using a deep learning-based model to recognize spontaneous micro-expressions on a person’s face. The framework also includes several technical stages, including image and data preprocessing. In data preprocessing, data augmentation is carried out to increase the amount and variety of data and class balancing to balance the distribution of sample classes in the dataset. Contribution: This study’s essential contribution lies in enhancing the accuracy of micro-expression recognition and overcoming the limited amount of data and imbalanced class distribution that typically leads to overfitting. Findings: The results indicate that the proposed framework, with its data preprocessing stages and deep learning model, significantly increases the accuracy of micro-expression recognition by overcoming dataset limitations and producing a balanced class distribution. This leads to improved micro-expression recognition accuracy using deep learning techniques. Recommendations for Practitioners: Practitioners can utilize the model produced by the proposed framework, which was developed to recognize spontaneous micro-expressions on a person’s face, by implementing it as an emotional analysis application based on facial micro-expressions. Recommendation for Researchers: Researchers involved in the development of a spontaneous micro-expression recognition framework for analyzing hidden emotions from a person’s face are playing an essential role in advancing this field and continue to search for more innovative deep learning-based solutions that continue to explore techniques to increase the amount and variety of data and find solutions to balancing the number of sample classes in various micro-expression datasets. They can further improvise to develop deep learning model architectures that are more suitable and relevant according to the needs of recognition tasks and the various characteristics of different datasets. Impact on Society: The proposed framework could significantly impact society by providing a reliable model for recognizing spontaneous micro-expressions in real-world applications, ranging from security systems and criminal investigations to healthcare and emotional analysis. Future Research: Developing a spontaneous micro-expression recognition framework based on spatial and temporal flow requires the learning model to classify optimal features. Our future work will focus more on exploring micro-expression features by developing various alternative learning models and increasing the weights of spatial and temporal features.




recognition

An Introduction to Face Recognition Technology




recognition

Analysis of Machine-Based Learning Algorithm Used in Named Entity Recognition

Aim/Purpose: The amount of information published has increased dramatically due to the information explosion. The issue of managing information as it expands at this rate lies in the development of information extraction technology that can turn unstructured data into organized data that is understandable and controllable by computers Background: The primary goal of named entity recognition (NER) is to extract named entities from amorphous materials and place them in pre-defined semantic classes. Methodology: In our work, we analyze various machine learning algorithms and implement K-NN which has been widely used in machine learning and remains one of the most popular methods to classify data. Contribution: To the researchers’ best knowledge, no published study has presented Named entity recognition for the Kikuyu language using a machine learning algorithm. This research will fill this gap by recognizing entities in the Kikuyu language. Findings: An evaluation was done by testing precision, recall, and F-measure. The experiment results demonstrate that using K-NN is effective in classification performance. Recommendation for Researchers: With enough training data, researchers could perform an experiment and check the learning curve with accuracy that compares to state of art NER. Future Research: Future studies may be done using unsupervised and semi-supervised learning algorithms for other resource-scarce languages.




recognition

Multimodal Speech Emotion Recognition Based on Large Language Model

Congcong FANG,Yun JIN,Guanlin CHEN,Yunfan ZHANG,Shidang LI,Yong MA,Yue XIE, Vol.E107-D, No.11, pp.1463-1467
Currently, an increasing number of tasks in speech emotion recognition rely on the analysis of both speech and text features. However, there remains a paucity of research exploring the potential of leveraging large language models like GPT-3 to enhance emotion recognition. In this investigation, we harness the power of the GPT-3 model to extract semantic information from transcribed texts, generating text modal features with a dimensionality of 1536. Subsequently, we perform feature fusion, combining the 1536-dimensional text features with 1188-dimensional acoustic features to yield comprehensive multi-modal recognition outcomes. Our findings reveal that the proposed method achieves a weighted accuracy of 79.62% across the four emotion categories in IEMOCAP, underscoring the considerable enhancement in emotion recognition accuracy facilitated by integrating large language models.
Publication Date: 2024/11/01




recognition

Two Harvard students created face recognition glasses. It wasn’t hard.

The technology to put a name to a face is now free or cheap to use, so it is mostly a matter of ethics and propriety about whether to exercise the ability or not.

The post Two Harvard students created face recognition glasses. It wasn’t hard. appeared first on Boston.com.




recognition

All Eyes on Iris Recognition

Iris recognition technology is quickly emerging as the preeminent biometric solution for PIAM — here’s why.




recognition

New NIOSH training tool: mine hazard recognition software

Washington — NIOSH has unveiled a beta version of an interactive, PC-based simulation software tool aimed at improving hazard recognition in mines.




recognition

What's Driving Trends & Innovations in License Plate Recognition?

Explore the technological and use case dynamics that are reshaping the LPR landscape, and opening new revenue opportunities for security integrators.




recognition

Nedap and Tuxen & Associates Offering Free Webinar to Introduce New License Plate Recognition Technology

Nedap and Tuxen & Associates will offer a free webinar introducing ANPR Lumo on May 7 at 3 p.m. CT. 




recognition

Freight-carrier alliance pushes for federal recognition of hair-sample drug testing

Washington — The Federal Motor Carrier Safety Administration is seeking public comment on a freight-carrier alliance petition regarding the use of hair samples as a drug-testing method for commercial motor vehicle drivers.




recognition

FMCSA denies petition for federal recognition of hair-sample drug testing

Washington — The Federal Motor Carrier Safety Administration has denied a petition calling on the agency to recognize hair samples as an alternative drug-testing method for truckers, reasserting a long-standing position that it lacks the statutory authority to do so.




recognition

Hazard recognition

Hazards are all around us. Although some are easy to see, many are not. The trick is learning to spot the hidden hazards.




recognition

Professional drivers receive recognition for being safe

Orlando, FL — The National Safety Council, during the 2024 NSC Safety Congress & Expo, honored 14 professional drivers who have helped make roads and communities safer.





recognition

BRICS Summit brings Russia recognition as established world leader

The BRICS summit in Kazan has formalized Russia's leadership in real decolonization and creation of developed economies based on its own strength. First steps have been named and are clear to everyone. Russia accepted as a new leader in the world The fact that 32 heads of state and UN Secretary General Antonio Guterres gathered in Kazan, Russia, during the times of the special military operation has demonstrated the decline of US influence in the world and the emergence of Russia as its leader. A country with 3.5 percent of global GDP in purchasing power parity was able to withstand harsh sanctions and three years of war with NATO at the hands of Ukrainians. The West that dominates the world economy with 40 percent is clearly losing the game to Russia on all fronts. It is about the ability, desire and readiness to defend one's national interests on the battlefield and mobilize one's economy. This is valued and respected in the world, and no one saw this in the Western camp.




recognition

Retailers and malls embrace facial recognition and video analytics for enhanced security and footfall analysis

In the recent 2-3 years, an increasing number of malls and retail chains have adopted real-time video analytics and facial recognition to enhance security, customer experience and footfall analysis.

Some of these technologies are showcased this week at the NRF Protect Conference in Long Beach, California.



  • Data Capture
  • Exhibitions and Events
  • Surveillance and Security

recognition

Crystal structure of the RNA-recognition motif of Drosophila melanogaster tRNA (uracil-5-)-methyltransferase homolog A

Human tRNA (uracil-5-)-methyltransferase 2 homolog A (TRMT2A) is the dedicated enzyme for the methylation of uridine 54 in transfer RNA (tRNA). Human TRMT2A has also been described as a modifier of polyglutamine (polyQ)-derived neuronal toxicity. The corresponding human polyQ pathologies include Huntington's disease and constitute a family of devastating neuro­degenerative diseases. A polyQ tract in the corresponding disease-linked protein causes neuronal death and symptoms such as impaired motor function, as well as cognitive impairment. In polyQ disease models, silencing of TRMT2A reduced polyQ-associated cell death and polyQ protein aggregation, suggesting this protein as a valid drug target against this class of disorders. In this paper, the 1.6 Å resolution crystal structure of the RNA-recognition motif (RRM) from Drosophila melanogaster, which is a homolog of human TRMT2A, is described and analysed.




recognition

Facial recognition technique could improve hail forecasts

Full Text:

The same artificial intelligence technique typically used in facial recognition systems could help improve prediction of hailstorms and their severity, according to a new, National Science Foundation-funded study. Instead of zeroing in on the features of an individual face, scientists trained a deep learning model called a convolutional neural network to recognize features of individual storms that affect the formation of hail and how large the hailstones will be, both of which are notoriously difficult to predict. The promising results highlight the importance of taking into account a storm's entire structure, something that's been challenging to do with existing hail-forecasting techniques.

Image credit: Carlye Calvin




recognition

What happens when facial recognition gets it wrong – Week in security with Tony Anscombe

A facial recognition system misidentifies a woman in London as a shoplifter, igniting fresh concerns over the technology's accuracy and reliability




recognition

'Materials that compute' advances as Pitt engineers demonstrate pattern recognition

PITTSBURGH (September 2, 2016) ... The potential to develop "materials that compute" has taken another leap at the University of Pittsburgh's Swanson School of Engineering, where researchers for the first time have demonstrated that the material can be designed to recognize simple patterns. This responsive, hybrid material, powered by its own chemical reactions, could one day be integrated into clothing and used to monitor the human body, or developed as a skin for "squishy" robots.

read more



  • Physics & Chemistry

recognition

China drafts rules for using facial recognition technology

The use of the technology will also require individual's consent, the CAC said in a statement. It added that non-biometric identification solutions should be favored over facial recognition in cases where such methods are equally effective.




recognition

ABA opens 2024 Safety Recognition Program applications

The American Bakers Association program salutes safety practices and awareness.




recognition

Grupo Bimbo receives recognition for its sustainability actions

For the second consecutive year, Grupo Bimbo received recognition for its actions to mitigate the effects of climate change at a global level.




recognition

Changing safety culture via VPP: How one roofing company achieved OSHA recognition

Evans Roofing Company, Inc., with its subsidiaries Charles F. Evans (union) and CFE, Inc. (non-union), is a building envelope contractor licensed in 46 states. Charles F. Evans and CFE, Inc. are the only commercial roofing and wall panel contractors to hold the VPP STAR mobile work force designation.




recognition

Nerds Support Achieves Prestigious Pioneer Recognition on CRN's MSP 500 List for 2024

Awarded a Spot in the Pioneer 250 Category, this Compliance-Certified Managed IT Services Provider Continues to Lead with Exceptional IT Services, Support and Cloud Security Solutions




recognition

Weeldi Recognition ETMA Innovation of the Year Award

Weeldi's Automation Studio enables non-developers to maintain stable automated interfaces with vendor web portals, SaaS applications and websites globally automating invoice and report downloads, MACD ordering and PCI compliant payments.




recognition

LogicalDOC Wraps Up Q1 2024 With Multiple Recognitions from Gartner Digital Markets

LogicalDOC is proud to wrap up Q1 2024 with huge success and accolades from the Gartner Digital Markets brands - Software Advice, and GetApp. Our product was recognized in various flagship reports in Q1




recognition

ARGOS Identity Provides Identity Verification and Facial Recognition Technology to Sports Betting Platform Stadiobet

The Need for Identity Verification in Sports Betting Platforms




recognition

Local Doctors Receive Recognition for Helping Victims of Violence and Crimes

And They Are Using Their Moment As A Call to Action




recognition

BT Partners Achieves Global Recognition as SYSPRO's Top Partner

With a consultative sales approach, BT Partners sets a benchmark for success, focusing on understanding client needs and delivering tailored solutions.




recognition

The American Health Council has honored Dr. Dan Andreae, as " Best in Medicine" in recognition of his outstanding dedication and leadership in the field of medical advancement & Neurology

The American Health Council is proud to Honor Dr. Dan Andreae to the Board of "Best in Medicine" for his compassion, and willingness to make a difference in the world of medical advancement




recognition

DR. ANA MAFÉ RECEIVES RECOGNITION FOR SCIENTIFICALLY DEMONSTRATING THE AUTHENTICITY OF VALENCIA'S HOLY CHALICE AS THE AUTHENTIC HOLY GRAIL

Dr. Ana Mafé was honoured in a ceremony held on Thursday, October 17, in Valencia (Spain) for her outstanding scientific and academic contributions to the study of the Holy Chalice at Valencia Cathedral.




recognition

J2C's Safe, Accurate and Cost-Effective — Iris Recognition Solution

J2C's Iris Recognition Solution — Accurate, Affordable, Cost-effective and named one of the K-Global 300 Companies by the Korean Ministry of Science, ICT and Future Planning in 2017




recognition

J2C's Iris Recognition Devices — Unique, Most Accurate, Safe And Hygienic

Best Form of Biometric Identification — J2C's Iris Recognition Devices




recognition

THE "EVERYTHING BLUE" HOLLYWOOD INDEPENDENT MUSIC AWARDS TO BE HELD IN OWENSBORO, KY WHERE LOCAL AND REGIONAL NOMINEES TOPPED THE CHARTS IN RECOGNITION

Four Days of Entertainment and Activities will take place Along the Riverfront with Todd Tilghman, winner of Season 18 of The Voice Hosting the Main Event