91ÊÓÆµ¹ÙÍø

Facing the Digital Age, Facial Recognition Technology Has Improved
Trend

Facing the Digital Age, Facial Recognition Technology Has Improved

Artificial Intelligence, Machine Learning, Deep Learning, and Big Data are topics that have been frequently discussed recently. These technologies are used in many fields, including the financial industry, logistics industry, business analysis, unmanned vehicles, computer vision, natural language processing, etc., and have spread in every corner of life.
Published: Aug 11, 2021
Facing the Digital Age, Facial Recognition Technology Has Improved

In the application of technology-related industries, the concept of the Internet of Things (IoT) has gradually taken shape, and it has been connected with hot trends such as big data and artificial intelligence (AI) to form the emerging development of AIoT (AI+IoT), which is detected by sensors. After environmental information is collected, the data is transmitted to the cloud server, and various "smart" applications, formed through the big data database and AI deep learning, provide users with more efficient and fast services. With the introduction of face recognition and AI technology solutions in mobile phones, various industries have renewed attention to facial recognition technology. In addition, facial recognition technology is gradually being widely used in access control, surveillance, finance, and retail industries.

What Is the Facial Recognition?

A facial recognition system uses biometrics to map facial features from a photograph or video and matching with database. Facial recognition technology is a way of recognizing a human

Embrace the Era of Digital Imaging with Face Recognition

When introducing smart identification technology, in addition to the cost of the equipment initially built, it is also necessary to consider the practicality and public acceptance of the technology, as well as the benefits that can be brought by the conversion of the new technologies. As far as identity recognition technology is concerned, the accuracy of recognition is a prerequisite for interlocking various applications, especially in the fields of access control, finance, or information technology that pursue high security, and any factors that may cause danger must be eliminated. The advantage of biometric identification is that its unique personal physiological characteristics will not be lost or forgotten, and it does not require additional carrying. Compared with other identification methods (such as passwords or identification cards), it is more convenient to obtain, and it also has a higher strength of security protection.

Among the many biometrics reading methods, face recognition is unique in that it is a non-contact technology because it uses a camera as the medium. Compared with recognition methods such as fingerprints or iris reading, it does not require close and direct contact and can recognize the target on the move. Applications can be extended for multi-person reading, regional monitoring, and identification.

With the continuous improvement of cameras and back-end processing computer equipment, high-resolution cameras have gradually become popular. High-quality images and hardware processing performance are no longer difficult to obtain and no longer require high-end equipment. Therefore, for users, threshold of necessary equipment to implement a face recognition system is also lowered.

As a result of the long-term efforts of the research and development industry, the accuracy and speed of facial recognition technology have been greatly improved, and the early recognition errors that were easy to occur it the past no longer exist.

In the financial industry, for example, a camera is used to confirm the user's identity and further provide in-depth professional services in response to user needs. In the retail industry, facial recognition can be used to analyze customer groups, stay time, and products of interest to form a more accurate commercial marketing model. Among them, the unmanned store also completes the checkout and payment processes through product image recognition and face recognition.

Combining AI image recognition and analysis, data transmission, and big data, facial recognition technology has gradually been widely used. Fundamentals of Facial recognition technology:

Regarding the core and functions of facial recognition technology, the simplest and most important concept of face recognition is a way of verifying identity. Based on "identity? recognition" and images as the analysis material, through AI deep learning training, the special algorithm of the software recognition engine is sorted out, and the correlation (similarity) between the images is found, and the recognition result is finally obtained.

The facial recognition technology is limited by the analysis material it obtains, that is, the clarity of the facial image. In terms of access control, when setting the passable list, an image feature database must be built first and then compared with each other based on the image features captured by the on-site camera. Therefore, the image quality of the photo, the shooting angle of the face, and the light, and factors such as the range of the face being captured will affect the final recognition result. Only when the materials and suitable environmental conditions are met, will the face recognition system exert its maximum effect.

A new generation of R&D technology: Face map

It is the key to facial recognition technology to extract features that can be analyzed and identified in facial images. A computer needs to perform image recognition through a multi-layer chip network operation to obtain an established standardization. For example, the first layer extracts the partial graphics in the frame to recognize various shapes, which may be eyes, nose, mouth, and other facial features, and then combine these shapes to form a complete value. This recognition system treats a human face like a map. There are objects of different shapes on the map. Each small object has a specific coordinate in the map to indicate the location and distance of the object, so it is not just collecting a few specific objects. The feature points are calculated through the area and relative position of the entire face. Since the whole face is used as the recognition area, even if some parts of the face are slightly occluded, the recognition can still be completed by comparing other areas.

AI deep learning: The regional experience of facial recognition technology. The core of the face recognition system is AI technology, which requires continuous input of image data. Correct/wrong adjustments through data collection, will improve the analysis capabilities of the system. The more data input and number of times of analysis, the more precise will be the results.

Form multiple applications based on identity recognition

Facial recognition technology is now widely used in many different fields. In the field of security surveillance, facial recognition technology can effectively prevent crimes. Through surveillance and identification analysis, it can even assist in the pursuit of criminals. After the data of a specific person¡¯s photo is stored in the database, the specific location of the person can be found through the camera and recognition system. In medical, retail, financial, and other fields, special technology applications can also be formed according to their own needs. In architectural buildings, facial recognition technology can be applied to more than just access control. If the face image is recognized, various intelligent settings related to personal identity can also be formed. Because the camera is the medium, it can quickly complete identity verification without the user's awareness, and integrate other device functions to provide a more relaxed and considerate living space.

Advantages of Face Recognition

  • Wide range of applications
    The application of facial recognition technology has flooded daily life, greatly improving the efficiency and quality of life, including for airport entry and exit, smartphone unlocking, check-in and getting off work, smart ATM, and smart community housing, etc.
  • Non-contact
    Among the many biometric technologies, face recognition is non-contact. For iris and fingerprint recognition, direct contact is required at close range, but face recognition can achieve body recognition without contact.
  • Uniqueness
    After scientific research, it has been calculated that the probability of having eight identical facial features between two people is less than one in a trillion. 91ÊÓÆµ¹ÙÍøever, the world has a total population of 7.4 billion. Based on this data, it can be determined that the probability of finding two identical faces is almost impossible So the face has unique characteristics of recognition.
  • Lower cost
    The most basic of face recognition requires only the image of the face, and the pixels of modern cameras and video cameras are getting higher and higher. With the popularization of smartphones, it is relatively easy to obtain high-quality images, which greatly reduces the threshold of identification technology needed for face recognition.

Disadvantages of Face Recognition

  • Unstable facial condition
    Facial features are not immutable like fingerprints. With time and age, the features in the face will slightly change. Lighting, facial expressions, and plastic surgery, etc., may also affect recognition results.
  • Fear of infringement of privacy
    ? Since face information can be obtained from just a photo, unlike fingerprint recognition, the person being identified does not need to volunteer the information. Face data is also personal information. You can obtain a person's identity, name, age, background, and phone number from a single photo, which raises doubts about personal privacy protection. Although facial recognition technology brings countless conveniences, the issue of privacy will be a major challenge facing facial recognition technology in the future.
  • 91ÊÓÆµ¹ÙÍø to distinguish between a photo and a real person
    In the past, 2D technology was the focus, and it may be difficult to distinguish the true from the false. To improve safety and accuracy, 3D technology, eye pattern technology, blink detection, or multiple identity verification must be combined to overcome this problem.

Technology it has evolved to the point where almost everything can be done with technology. Emerging face recognition has replaced traditional sign-in, punch-in, cash payment, and unlocking procedures. Nowadays, face recognition applications can be seen everywhere in life. Facial recognition technology not only improves efficiency, but also greatly improves the quality of human life. The combination of face recognition with various industries and fields can bring a lot of economic value. But every time a new technology appears, problems will inevitably follow. Technologies are still not developed that can completely distinguish between photos and real people. The problem of privacy is also a major challenge in the field of face recognition. A future prospect to achieve higher recognition accuracy will be to strengthen algorithms which can reduce the number of photo samples required for positive recognition. With improved recognition accuracy, information security can be further strengthened, and people can be more at ease to trust facial recognition technology.

Published by Aug 11, 2021 Source :, Source :

Further reading

You might also be interested in ...

Headline
Trend
The Path to Upgrading Metal Fabrication: Digital Transformation, Low-Carbon Challenges, and Global Opportunities
Facing resource- and energy-intensive production processes, the metal fabrication industry must harness smart manufacturing and automation¡ªdeploying CNC machining, robotic arms, and AI monitoring¡ªto cut costs and errors while enhancing precision and delivery reliability. Integration of ERP, MES, and APS platforms increases process transparency and enables real-time scheduling adjustments, forming a seamless data and management loop. It¡¯s recommended to support this with global market size data and figures on rising automation investments to boost credibility.
Headline
Trend
Urgent Need for Low-Carbon Transformation in the Metal Fabrication Industry
The urgent need for low-carbon transformation is especially pronounced in the metal fabrication industry, which has long been resource- and energy-intensive with high carbon emissions, making it a key sector for addressing climate change and global carbon neutrality goals.
Headline
Trend
The Multifaceted Innovative Impact of Microfactories on the Manufacturing Industry
Compared to traditional large factories, microfactories have lower investment costs and modular design advantages. Equipment and production units can be quickly replicated and replaced, reducing downtime and maintenance costs, enabling companies to respond more flexibly to market changes and product adjustments. Moreover, microfactories can shorten time-to-market by quickly responding to market demands and technological innovations. Through modular design and digitized production processes, new product development and market introduction speed up significantly, offering a clear advantage in competitive markets.
Headline
Trend
Trends in Advanced Material Processing Technologies and High-Precision Machine Tool Development
In aerospace, automotive, and high-performance manufacturing industries, advanced alloys (such as titanium alloys and nickel-based superalloys) and composites (such as thermoplastic carbon fiber composites) are becoming mainstream due to their lightweight, high strength, and high-temperature resistance. By 2025, the global aerospace composite market is expected to expand rapidly with an annual compound growth rate of about 13.9%, driven by the demand for environmental protection and net-zero emissions, which will further innovate and apply thermoplastic composite technologies. These new materials present challenges such as high hardness, tool wear, heat management, and processing deformation control, requiring processing equipment to have higher rigidity, precision, and thermal stability. Additionally, the production process's demand for rapid prototyping, modular assembly, and recycling drives the simultaneous upgrading of materials and equipment.
Headline
Trend
Intelligent Oil Mist Purification Technology for Machine Tools: From Air Cleaning to Smart Factory Accelerator
As CNC machining and precision metal processing continue to grow, machine tools release large amounts of oil mist, atomized coolant droplets, smoke, and fine oil particles during operation. Prolonged exposure to such environments not only endangers operator health but also affects machine accuracy and maintenance costs. Therefore, highly efficient oil mist filtration equipment has become an essential asset in modern machining facilities.
Headline
Trend
Oil Mist Filtration: Creating Safer Workplaces
In industrial machining processes, the generation of oil smoke and fine oil mist is unavoidable. Without effective collection and filtration, these airborne contaminants pose serious health risks to workers, increasing the likelihood of respiratory diseases and occupational illnesses. At the same time, accumulated oil smoke not only pollutes the work environment and degrades air quality but also accelerates wear and malfunction of machinery, resulting in higher maintenance costs. Furthermore, the presence of flammable oil mist increases the risk of fire hazards, endangering factory safety. To ensure stable, safe production that complies with regulations, oil smoke collection systems have become an essential protective measure in modern smart manufacturing¡ªsafeguarding employee health while enhancing equipment efficiency and environmental quality.
Headline
Trend
EU Rules and Taiwan¡¯s Textile Sustainability Shift
In recent years, the European Union has introduced a series of new regulations on sustainability and the circular economy, with the textile industry being one of the key areas under scrutiny. These regulations not only change how products are designed and manufactured, but also reshape collaboration models across global supply chains. For Taiwan¡¯s export-oriented textile sector, this means accelerating the pace of sustainable transformation in order to remain competitive in the European market¡ªwhile turning challenges into opportunities for brand and technological upgrades.
Headline
Trend
New Landscape in Precision Machining: Five Key Evolution Trends in CNC Toolroom Lathes
As global manufacturing competition intensifies, the precision machining industry is facing unprecedented challenges: parts are becoming smaller and more geometrically complex, machining accuracy requirements are rising, and delivery deadlines are increasingly compressed. As a core piece of equipment in this field, the CNC toolroom lathe is undergoing a profound transformation driven by both technological breakthroughs and evolving market demands.
Headline
Trend
Digital Transformation and Smart Manufacturing Trends in Machining Industry: Applications of Industry 4.0, IoT, and AI
The global manufacturing sector is undergoing an unprecedented wave of digital revolution. This trend brings technological advancement but also intensifies international market competition. The processing industry, a critical part of the manufacturing supply chain, faces multiple challenges including raw material price fluctuations, rising labor costs, and stricter environmental regulations. As consumer demands become more diverse and customized, the processing sector must swiftly adjust production methods. By embracing digital transformation, companies can enhance production efficiency and product quality, securing their competitive edge and market position. Digital transformation is no longer optional but an essential path for sustainable development in manufacturing¡¯s future.
Headline
Trend
Multi-Model Comparison: The Full Evolution from Manual to CNC Toolroom Lathes
High-precision lathes and toolroom lathes specialize in producing small, high-accuracy components, often used in prototype development and sample manufacturing. As CNC toolroom lathes become increasingly widespread, the industry is moving toward digital and automated control to shorten production cycles and improve machining quality and consistency.
Headline
Trend
CNC Market in India Exhibits CAGR Significantly Higher Than Global Average: Market Outlook
India¡¯s manufacturing sector is undergoing a critical transformation phase, with the rapid rise of industrial automation propelling the CNC machine tool market into a global growth hotspot. According to the latest research report by Technavio, the overall machine tool market in India is expected to increase by approximately USD 3.08 billion from 2024 to 2029, with a compound annual growth rate (CAGR) of 11.6%. In contrast, the global machine tool market CAGR is only about 5.07% (2023¨C2029), and the global CNC machine tool market CAGR is around 5.4% (2025¨C2029). India¡¯s market growth rate is nearly twice the global average. Furthermore, supported by its large industrial base and favorable policies, India has strong potential to become a key strategic region in the global CNC machine tool market.
Headline
Trend
Global Competitiveness of Taiwan¡¯s Lathe Industry
As global manufacturing moves toward high-precision and high-efficiency machining, lathe equipment remains an indispensable core tool in aerospace, automotive, energy, and medical sectors. Leveraging a solid manufacturing foundation and flexible customization capabilities, Taiwan has steadily expanded in the international lathe market, becoming a key supplier to both Europe, the United States, and emerging markets. To address diverse machining needs, Taiwanese manufacturers deploy both manual and CNC lathes, covering educational training, basic machining, and large-scale automated production¡ªdemonstrating high adaptability to market demands.
Agree