Horus E1-FP | Wireless Facial Recognition Terminal with fingerprint recognition

Horus E1-FP

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Horus E1-FP

Wireless Visible Light Facial Recognition Terminal
with fingerprint recognition function

Overview

Horus is one of the most advanced Access Control & time and attendance terminal existing in the market, with incredibly compact size (almost the same size as iPhone XS max) and powerful facial recognition technology offering up to 3 meters recognition distance, ±30 degree pose angle tolerance, high anti-spoof ability, support on plentiful communication protocols (Wi-Fi, 3G, 4G, Bluetooth) and worldwide network setting, optional fingerprint and RFID card modules, up to 10,000 facial templates capacity, and is compatible with the all-in-one security & time attendance platform ZKBioSecurity and BioTime.

Function

• New height of facial recognition template capacity up to 1: N-10,000 facial templates
• Anti-spoofing algorithm against print attack (laser, color and B / W photos), videos attack, and 3D mask attack
• Supports multiple communication protocols: 4G, Wi-Fi, Bluetooth and USB
• 5-inch smartphone grade IPS touch LCD monitor
• Extensive Fingerprint, RFID, TCP / IP, modules available
• Extra-large 2MP CMOS with WDR function
• Various further development options: embedded GPS / A-GPS, microphone and PIR sensor


Technical Specifications

ModelHorus E1-FP
HardwareLCD720*1280, IPS touch LCD
CPUQuad-core, 1.5GHz
MemoryRAM 2GB / ROM 16GB
Camera2MP Dual Camera
Android VersionAndroid 8.1
Wifi2.4GHz, 5GHz, 802.11a/ b/ g/ n
Bluetooth4.0
CapacityFace Template6,000 / 10,000 (optional)
Fingerprint6,000 / 10,000 (optional)
RFID10,000 (optional)
4G Wireless BoardbandGSM: B2 / B3 / B5 / B8
WCDMA: B1 / B2 / B4 / B5 / B8
TDD-LTE: B38 / B40 / B41M
 FDD-LTE: B1 / B2 / B3 / B4 / B5 / B7 / B8 / B12 / B17 / B20 / B28A / B28B’
 Operating Voltage 12V 3A
 Temperature -10°C ~ 50°C
 Humidity20% ~ 80%


Data Sheet Download

Enhanced Visible Light Facial Recognition Using Deep Learning

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