SLN-VIZNAS-IOT

NXP Semiconductors
771-SLN-VIZNAS-IOT
SLN-VIZNAS-IOT

Mfr.:

Description:
Development Boards & Kits - ARM SLN-VIZNAS-IOT

In Stock: 83

Stock:
83 Can Dispatch Immediately
Factory Lead Time:
13 Weeks Estimated factory production time for quantities greater than shown.
Minimum: 1   Multiples: 1
Unit Price:
Rp-
Ext. Price:
Rp-
Est. Tariff:

Pricing (IDR)

Qty. Unit Price
Ext. Price
Rp4.749.229 Rp4.749.229

Product Attribute Attribute Value Select Attribute
NXP
Product Category: Development Boards & Kits - ARM
RoHS: N
RT106F
Development Kits
ARM Cortex M7
RT106F
Brand: NXP Semiconductors
For Use With: Smart Industrial Devices
Product Type: Development Boards & Kits - ARM
Factory Pack Quantity: 1
Subcategory: Development Tools
Part # Aliases: 935410533598
Products found:
To show similar products, select at least one checkbox
Select at least one checkbox above to show similar products in this category.
Attributes selected: 0

USHTS:
8471500150
ECCN:
5A992.C

MCU-Based Turnkey IoT Solutions

NXP Semiconductors MCU-Based Turnkey IoT Solutions leverage specialised i.MX RT Crossover Processors that enable developers to quickly and easily implement facial recognition and voice control into their applications. These turnkey IoT solutions come with fully integrated software running on FreeRTOS, for quick out-of-the-box evaluation and proof of concept development.

SLN-VIZNAS-IOT Solution for Face Recognition

NXP Semiconductors SLN-VIZNAS-IOT Solution for Face Recognition is an EdgeReady development kit for secure face recognition based on the i.MX RT106F Crossover Processor. The SLN-VIZNAS-IOT is designed to enable developers to quickly and easily add face recognition with liveness detection to their products. Liveness detection prevents spoofing with a photograph and is implemented with cost-effective IR and RGB cameras, without the need for expensive 3D cameras. The SLN-VIZNAS-IOT comes with fully integrated turnkey software for quick out-of-the-box operation, minimizing time to market, risk, and development effort. Face recognition is done entirely at the network edge, addressing the privacy concerns of many consumers.