Pavement Detection Robot

Min. Order: 1 Piece
Port: Shanghai, China
Payment Terms: L/C, T/T, Western Union

Similar Items

Loading...

You May Like

Loading...

Product Description

Company Info

Product Description

Pavement Detection Robot

Pavement detection robot is composed of an intelligent mobile platform and professional sensor. The robot has high-precision positioning and autonomous navigation functions. The flexible operating mechanism carries sensors to achieve stable high-precision detection. The sensors include ground penetrating radar, impact echo instrument, laser radar, 3D camera, etc. and can be used for intelligent data analysis for the appearance and internal defects of ground infrastructures including airport road, (expressway) highway, bridge and tunnel pavement, rail transit, etc. to get big data of facilities' health conditions.

 
Address: B 826, Bao′an North Road, Luohu District, Shenzhen, Guangdong, China
Business Type: Manufacturer/Factory, Trading Company
Business Range: Security & Protection
Management System Certification: ISO 9001
Company Introduction: Shenzhen OOCARE Technology Co., Limited, established in ′2005, is a company focus on R & D, marketing innovated products.

Our strength: Proud of our own innovated patented technology which has PCT number and special mass production know-how.

Our company policy is geared towards developing and improving on a continuous basis

We aim to provide with quality products and tailored service to you at the competitive prices and to build long term working relationships.

Our product have been approved by CE/Rosh/FCC, and hundes of successful application case.

Fast delivery, reliable quality, and best service. Weclome your tour any time.
Once receive your question, the supplier will answer you as soon as possible.

Send your message to this supplier

Post a Sourcing Request Now

Last Login Date: Mar 12, 2024

Business Type: Manufacturer/Factory, Trading Company

Main Products: Industrial Level Vtol Uav, Security Detection Equipment

Related Categories

#parseBlock("block/im_js.vm")