Neurotechnology has released SentiVeillance
Server, a ready-to-use solution that integrates with surveillance video
management systems (VMS).
SentiVeillance Server is based on the company’s deep neural
network technology for facial recognition from surveillance camera
video, giving a VMS advanced capabilities, including the ability to quickly
and accurately recognize faces in video streams and trigger analytical event
notifications whenever the system detects an authorized, unauthorized or
unknown individual.
The new capabilities significantly improves the workflow of VMS
operators so that they can quickly respond to evolving situations and easily
view video of past events as well as filter them by gender, age or person ID.
“SentiVeillance Server enables advanced analytics in many video
management systems where it was too complex or too expensive before,” said
Aurimas Juska, Neurotechnology software development team lead. “Users can
benefit from an enhanced surveillance system with only a small amount of
configuration and no need for programming.”
The solution supports a range of https://www.brihaspathi.com/video-door-phones.htmlvideo
management systems including Milestone XProtect VMS and Luxriot Evo, Evo S and
Evo Global.
SentiVeillance Server can process in real time up to 10 video
streams from multiple video management systems.
The solution is equipped with Neurotechnology’s latest deep
neural-network-based facial detection and recognition algorithm which greatly
improves identification accuracy and speed.
The technology is included in other Neurotechnology products
including the VeriLook and MegaMatcher software development kits (SDK), which
have millions of deployments worldwide.
In addition, the SentiVeillance SDK allows developers to create
solutions using facial identification and object recognition from surveillance
video.https://www.brihaspathi.com/video-door-phones.html
In a separate announcement, Neurotechnology revealed that the
company’s deep neural network researchers won first place in a Kaggle
competition that sought AI solutions for fisheries monitoring.
For their winning solution in The Nature Conservancy
Fisheries Monitoring competition, the team of researchers won a first place
prize of $50,000.
The team beat out the competing 2,292
submitted algorithms for the identification of fish and other marine species
from video streams. The algorithms were evaluated based on an unseen test set
that mimicked a real-life scenario.
Illegal, unreported and unregulated
fishing practices are degrading marine ecosystems, global seafood supplies and
local livelihoods, according to The Nature Conservancy.
The Neurotechnology employees, which
entered the competition independently under the name “Towards Robust-Optimal
Learning of Learning,” used advanced deep neural networks to solve this issue.
The Fisheries Monitoring competition was
one of the biggest competitions for Kaggle, a learning, sharing and development
site for data, code, research and process.
“This was one of the first Kaggle
competitions that was comprised of two stages, which means that models
developed during the first stage were frozen and evaluated on unseen data that
was made available during the second stage,” said Gediminas Peksys from the
Towards Robust Optimal Learning of Learning team. “In such a setting, it is
very easy for a team’s models to overfit the data by using too many trainable
parameters. We were able to utilize our team’s experience using deep neural
networks to come up with a robust model that performed a lot closer to the
original estimate from stage one and generalized in a predictable manner on
unseen data.”
Previously reported,
Neurotechnology added a new ‘Extreme’ edition to its MegaMatcher Accelerator
line of multi-biometric identification solutions for national-scale projects.
§ McDonald’s testing biometrics
technology on POS system
§ DISA director discusses
biometric access at AFCEA symposium
§ Biometric ID firm AimBrain
has closed its $5.1m financing round
Reference: http://www.biometricupdate.com/201706/neurotechnology-adds-face-recognition-tracking-to-video-surveillance-researchers-win-competition
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