Line Expansion Unit

Published in: Refuge Call System
Line Expansion Unit - 5.0 out of 5 based on 3 reviews

Can be connected to an SCU-16 controller to increase its line capacity 16 lines respectively. Can be semi-flush mounted using an AFP385 bezel. Easily interfaced to accessible toilet alarms, PDA audio-frequency induction loop systems, strobes, CCTV activation relays, etc.

Master Controllers

Published in: Refuge Call System
Master Controllers - 5.0 out of 5 based on 5 reviews

Our Refuge master controllers starts from 4 to 16 line 'Compact' system comprises two wall-mounting master controllers (the CCU-16 and the ECU-16 which can handle 16 and 16 extension lines) as an sixteen-line expansion unit (the ECU-16). Typically located in a building's control room or fire services access point, the CCU-16 and ECU-16 allow emergency personnel to communicate via a telephone-style handset with the system's 'outstations'.

Operator Voice Communication

Published in: Refuge Call System
Operator Voice Communication - 4.9 out of 5 based on 12 reviews

Ou Px100

Central operator voice communication system, desktop unit starting form 32 line to 128 lines. Our CCU master controllers and SCU expansion controllers are ideal for larger projects. Utilizing the same Type A and Type B outstations as 'Compact' system, each CCU requires an ECU dial unit and multiple LC2 or LC3 line cards allowing operators to communicate with the system's outstations at the touch of a button. Optional voice message cards are also available.

Vehicle Counting System

Published in: Vehicle Counting System
Vehicle Counting System - 4.8 out of 5 based on 246 reviews

 Loop Count

Vehicle Counting System

A simplest 100% accurate vehicle counting system using inductive loop is a square of wire embedded into or under the road. An existing loop can be used if already installed with barrier. The loop utilizes the principle that a magnetic field introduced near an electrical conductor causes an electrical current to be induced as a signals sent to IP based vehicle counter to count and real-time monitoring for simple or zonal counting. Reports can be generated and export as per client requirement if server used as central vehicle counting system.

 

Networked Panic Alarm

Published in: Panic Alarm System
Networked Panic Alarm - 4.4 out of 5 based on 61 reviews

A Networked Panic Alarm (NPA) usually consists of buttons which, when pressed, activates the alarm by sending a signal to either the local emergency controller or over IP networks, to take an action to assist someone who is in trouble, or to a monitoring service. The advantages of NPA is allowing to take advantage of existing network cabling when upgrading systems or adding new devices to existing equipment without any extra cost or cabling. NPA system supports 1 nos to 254 panic alarm in a single networks up-to 4096 in a server.

Panic Bt 50

Automatic Pneumatic Bollard

Published in: Bollards
Automatic Pneumatic Bollard - 5.0 out of 5 based on 5 reviews

We have a large range of Automatic Pneumatic Rising Bollards that can be installed in a variety of different applications, are robust and a high security as idea for high-level traffic control such like shopping mall, parking space, commercial plaza, hotel and government building. Gas cylinder is built-in bollard and connected with compressor in an external cabinet by gas tube. The pneumatic bollard can be integrated with most access control system. And bollards can be operated by remote controller, push button, card reader etc., as bollards can be installed and operated together or individually.

 

•    Shopping Mall
•    Commercial plaza
•    Hi secure places
•    Banks
•    VIP Hotels
•    Residential & Commercial Bollards
•    City Centre Bollards    
•    Anti Ram Raid Bollards

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Features

- Pneumatic driven bollard
- Anti-terrorist defense
- Easy to install and operate
- Low maintenance cost
- Excellent compatibility and expansibility
- Robust construction
- User safety
- Architectural design
- High visibility gloss and reflective
- Emergency operation
- Built-in hydraulic pump with Biodegradable oi

Specification

Voltage

220V 50Hz

Diameter

168mm(T:5mm) / 220mm(T:7mm) / T=thickness

Blocking Height

600mm / 900mm

Cylinder material

Carbon steel / 304SS / 316SS

Bollard pit material

Carbon steel

Surface treatment

Carbon steel: Galvanization and powder coated Stainless steel: Hairline polish

Color

Color can be customized according to RAL No.

Rising speed

30cm/S

Lowing speed

20cm/S

IP

67

Working temperature

-40 ℃--+70 ℃

Frequency use

High intensive

Reflective tape

One 3M diamond series reflective, customized logo is available

LED light

Red LED light

Accessories

Remote controller, push button, loop detector, photocell, buzzer,

Extra Accessories

traffic light, heater can be optional

Solution Ares

  • Banking
  • Campus/University
  • Finance
  • Commercial Office
  • Government
  • Health Care
  • House of Worship
  • Industrial
  • Life Sciences
  • Residential
  • Retail
  • Shopping Mall
  • Seaports and, many more

Downloads

Contact us or click here to Downloads

Contact

Please call us at +971 04 9920 or email at mail @xtec.me

 

Solar Parking Barrier

Solar Parking Barrier - 5.0 out of 5 based on 43 reviews

Xtec Barrier Solar 150

Solar Parking Barrier

High-Tech solar hi-speed industrial grade traffic barrier gives you the ultimate in traffic control parking barrier can open / Close from 0.6 to 1.2 seconds. Designed for tough, high-volume traffic control, it will work all day, it will work all night - lasting millions of cycles, Add full battery backup, and always at the service even if there is now power.

Main features includes on barriers are ,Rapid opening, Battery backup, High-torque boom pole operation, Safe sensitivity for boom pole lowering, Robust, durable and slim line operator casing, Comprehensive input and output, Operate wirelessly. Optional Solar power option for 750(min) operation in a single charge.

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Face Recognition Camera

Published in: Recognition CCTV System
Face Recognition Camera - 5.0 out of 5 based on 5 reviews

The cameras are equipped with face recognition technology that can automatically identify and track individuals, both indoors and outdoors. Live information is sent to a machine that's analyzed by algorithms and human monitors, which then compare the face with its database. Technology can detect, track and recognize any person of interest in a large crowd with more than 91~96% accuracy.

Facial Recognition Server

Published in: Recognition CCTV System
Facial Recognition Server - 5.0 out of 5 based on 7 reviews

The F8000 Series Network Video Recorder supports almost all cameras and ONVIF profile cameras. NVR supports Multiple Algorithm Platform, Real-Time Face Capture, Indexing and Matching. A single server can store up-to 999,999 face Database and 32 servers can connected in a single system. Each server can match 300,000 Faces per second which includes 16 Different Face Angles Enrolment for Single Face ID. High Accuracy of up to 97% depending on quality of the images. Server also supports Event and Alarm Customization and Cloud and Mobile APP Integration.

Face Recognition Software

Published in: Recognition CCTV System
Face Recognition Software - 5.0 out of 5 based on 7 reviews

Software is a best-of-breed Direct/2D/3D face recognition software application which uses off-the-shelf cameras and servers providing unparalleled accuracy on real world data in the most challenging of environments. The industry leading technology collects a myriad of data and applies the multitude of information to the database and generates timely and accurate results

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