Specifications
Brand Name :
Shi Zun
Model Number :
JP-FM225
Place of Origin :
China
MOQ :
Negotiable
Price :
Negotiable
Supply Ability :
100+pcs+day
Delivery Time :
10 working days
Packaging Details :
40mm * 15mm * 10.65mm
Payment Terms :
T/T
Product Model :
FM225
Facial Recognition Algorithm :
Supports deep learning infrared facial recognition algorithm
Number of Users (Facial Recognition) :
100 users
Facial Recognition Accuracy :
98.85%
False Acceptance Rate (Facial Recognition) :
0.0001%
Recognition Angle (Facial Recognition) :
Approximately ±20° (horizontal and vertical). (Supports multi-angle facial entry to expand recognition range)
Recognition Distance (Facial Recognition) :
30-110 cm
Liveness Detection :
Supported
Liveness Detection False Acceptance Rate (LDAFAR) :
≤1%
Liveness Detection False Rejection Rate (LPFRR) :
≤1%
Video Function :
Supports USB output of color video in MJPEG format
Communication Interface :
UART & USB
UART Baud Rate :
115200 (default)
Power Supply Voltage :
5.5V–9.0V
Shutdown Current :
0 μA
Operating Temperature :
-20°C to +60°C
Storage Temperature :
-30°C to +70°C
Relative Humidity :
10%–93% (non-condensing)
Description

JP-FM225 Facial Recognition Camera Module with AI Algorithm Supports USB output of color video in MJPEG format

JP-FM225 Facial Recognition Camera Module Features:

  1. The JP-FM225 is a compact facial recognition module solution, primarily designed for applications such as smart door locks. The module consists of a facial recognition algorithm board, a dual-lens camera, and infrared LED lights.
  2. The JP-FM225 module uses infrared and visible light cameras to perform liveness detection, facial capture, feature extraction/matching, and user data storage. Through UART/USB interfaces, it enables facial recognition functionality for smart door locks. The visible light camera simultaneously outputs video streams, providing both facial recognition and peephole video functionality for smart locks.

JP-FM225 Facial Recognition Camera Module Parameter:

Facial Recognition Algorithm: Supports deep learning infrared facial recognition algorithm
Number of Users (Facial Recognition): 100 users
Facial Recognition Accuracy: 98.85%
False Acceptance Rate (Facial Recognition): 0.0001%
Recognition Angle (Facial Recognition): Approximately ±20° (horizontal and vertical)
Recognition Distance (Facial Recognition): 30-110 cm
Video Function: Supports USB output of color video in MJPEG format
Communication Interface: UART & USB
UART Baud Rate: 115200 (default)
Power Supply Voltage: 5.5V–9.0V

JP-FM225 Facial Recognition Camera Module with AI Algorithm Supports USB output of color video in MJPEG formatJP-FM225 Facial Recognition Camera Module with AI Algorithm Supports USB output of color video in MJPEG formatJP-FM225 Facial Recognition Camera Module with AI Algorithm Supports USB output of color video in MJPEG formatJP-FM225 Facial Recognition Camera Module with AI Algorithm Supports USB output of color video in MJPEG formatJP-FM225 Facial Recognition Camera Module with AI Algorithm Supports USB output of color video in MJPEG format

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JP-FM225 Facial Recognition Camera Module with AI Algorithm Supports USB output of color video in MJPEG format

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Brand Name :
Shi Zun
Model Number :
JP-FM225
Place of Origin :
China
MOQ :
Negotiable
Price :
Negotiable
Supply Ability :
100+pcs+day
Contact Supplier
JP-FM225 Facial Recognition Camera Module with AI Algorithm Supports USB output of color video in MJPEG format
JP-FM225 Facial Recognition Camera Module with AI Algorithm Supports USB output of color video in MJPEG format
JP-FM225 Facial Recognition Camera Module with AI Algorithm Supports USB output of color video in MJPEG format
JP-FM225 Facial Recognition Camera Module with AI Algorithm Supports USB output of color video in MJPEG format

Shenzhen Jupin Technology Co., Ltd.

Site Member
4 Years
shenzhen
Since 2016
Business Type :
Manufacturer
Total Annual :
1000000-1500000
Employee Number :
>100
Certification Level :
Site Member
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