Four major facial recognition applications based on AI
About thirty years ago, the concept of facial recognition apps seemed like a fantasy. But now, these applications perform many tasks such as controlling false arrests, reducing cybercrime rates, diagnosing patients with genetic diseases, and combating malware attacks.
The global facial profile analyzer market was valued at USD 3.2 billion in 2019 and is expected to grow at a CAGR of 16.6% by the end of 2024. There is a growing trend in facial recognition software and this area will enhance the entire digital and technology landscape. If you are planning to develop a face app to stay ahead of the competition, here is a brief list of some of the best face recognition apps.
List of Excellent Face Recognition Apps
Luxand: Luxand face recognition is more than just an app; It is a complete high-tech portal started in 2005 that includes a range of services and applications. This face detector app includes a face SDK, perfect for surveillance, biometrics, and other uses adopted by global industry giants.
Luxand facial recognition has helped major brands including LG, Phillips, Unilever, Universal Pictures, Ford, Badoo, Procter & Gamble, and Samsung. In addition, Luxand provides services to large agencies such as the U.S. Department of Defense Cyber Crime Center, South Korea's National Forensic Service, and Singapore's Ministry of Home Affairs.
Several mobile app development companies wanted Luxand to create apps with similar powerful features. From detecting 70 unique facial features to identifying faces in live video streams or footage and verifying profile identification, this app can do it all.
FaceApp: This face detection app was originally launched in 2017 for iOS devices. Later, as its popularity grew, FaceApp also appeared on Android. This is a tech-savvy AI-based styling feature app where users can replace the background with just one click and use color filters and lens blur by using this app.
Online face apps have sparked the fad of posting older versions of photos on social media, which has become a hot trend. Even celebrities like Jennifer Lopez and Justin Bieber are associated with these apps, which makes the app’s customer engagement and retention rates soar.
AppLock: AppLock is one of the most sought-after applications among users. You can choose to work with any top android development company to create similar apps. The app tracks software so that only users can access their personal information, financial accounts, and social media apps.
In addition to facial recognition on mobile phones, voice recognition is also used to enhance security. The user's voice and face act like a password, like a biometric key that unlocks all apps. AppLock combines speaker and facial recognition technology to provide a seamless and secure user experience. Additionally, this app creates a backup authentication option to use your backup method if facial or voice conditions are extreme.
Facial DNA Test: This is an ancestry facial recognition app that takes a person’s facial outline and continuously calculates unique facial points. The facial DNA testing app uses approximately 68 different facial points while comparing one person's anatomy to another, much like facial recognition.
Facial recognition app also helps to compare the similar features of two people or understand if they are related. While you can compare siblings' facial profiles, you can also verify the relationships between family members through the app's algorithm.
End
Facial recognition is the future of digital and technology ecosystems. Investing in face apps for iPhone and Android devices can give you the best bang for your buck. To build the best free facial recognition app, hire skilled app developers for Android and iOS apps.
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