Products

No Data

News and information

No Data
No Data

ABOUT US

公司简介

Shenzhen maidi technology co., LTD. Is a high-tech company specializing in the development and application of finger vein recognition technology. It has the largest digital vein database in the world, and is a manufacturer of national vein standards. It has won the champion of the international digital vein recognition algorithm challenge for three consecutive years.


Maidi company has been dedicated to the use of finger vein recognition technology to benefit mankind, to solve the problem of safety and convenience. The finger vein and related products made by maidi have been widely used in the fields of public security, finance, social security, education, health, security and other fields. The main products include finger vein management system, finger vein identification device, finger vein access control machine, finger vein attendance machine, finger vein lock, finger vein safe and so on.


Pulse di company to 'make the world more convenient, more convenient security' as our mission, has brought together the earliest engaged in China refers to the vein recognition technology with the research team and the overseas top expert in biological recognition algorithm, follow the 'dedicated, perfection, innovation, leading' concept, is committed to be refers to the vein recognition in the field of world class national brands.


Pulse na vientiane, enlightenment true knowledge. Pulse, pulse di is the world, with their experience and technology accumulation, for the enterprise which has the common sense of mission assigned to actively, with cast quality brand, leading the market with innovation, with the attitude of open and sharing, build vein ecosystem, to provide users with the most excellent products and service, jointly promote the popularization and development of the vein recognition technology.


  • QQ

  • Wechat

Please select customer service to chat

请选择客服进行聊天
  • Wechat

    Long press to identify the QR code
  • Wechat

    Long press to identify the QR code