VILNIUS, Lithuania, Aug. 29, 2011 /PRNewswire/ -- Neurotechnology, a provider of high-precision biometric and object identification technologies, today announced the availability of SentiSight 3.0, a Software Development Kit (SDK) for universal object recognition. This latest version adds shape-based recognition and offers enhanced local-feature-based recognition that is 30-40 times faster than SentiSight 2.1. It also includes enhanced tracking of fast moving objects and objects in front of complex backgrounds. The object recognition algorithms in SentiSight 3.0 enable an even broader range of recognition capabilities for applications as varied as manufacturing, artificial intelligence, searches for identifiable marks and even place recognition.
SentiSight 3.0 provides enhanced 2D and 3D object recognition quality using still or video images from most digital cameras, including Webcams. It can detect and recognize whether a particular rigid object, such as a product, logo or building, is in a scene and identify its specific location in that scene. It can also count the number of specific identified objects in a scene and can compare two photographic images to provide place recognition, based on objects within the picture.
"Today object recognition technology is being widely used in different fields of business," said Denis Kochetkov, manager of research and development for Neurotechnology. "With enhanced speed and reliability, the addition of a shape-based algorithm and improved tracking, SentiSight 3.0 SDK further extends the capabilities of object recognition and enables our customers and partners to incorporate this technology into a variety of new applications."
The new shape-based algorithm in SentiSight 3.0 is suitable for localization and recognition with objects that have distinguishable external or internal edges. The algorithm is fully tolerant of in-plane rotation, up to 15-20 degrees of out-of-plane rotation (such as from frontal to profile) and a wide range of changes in scale. It can handle occlusion of up to 50% as long as enough unique edges of the object are still visible. Multiple views can be added to the object model to provide even more reliable recognition or better out-of-plane rotation tolerance. The shape-based algorithm offers enhanced recognition at near real-time performance in many conditions.
The enhanced local-feature-based algorithm in SentiSight 3.0 offers even faster recognition for objects that have clear and stable local features, such as bank notes, brand labels on packaging, logos, etc. In addition to 30-40 times faster recognition speeds (when using a quad-core processor), the "learning" mode, where objects or images are presented to the system, now takes up to 40% less time and the model size is two times smaller. The overall quality of recognition is improved over the previous version, with a 10-30% reduction in the false rejection rate.
SentiSight's shape-based and local-feature-based algorithms can be used together to provide an even higher degree of recognition accuracy and quality when objects have both rich local features and distinguishable edges.
The new tracking algorithm in SentiSight 3.0 provides enhanced tracking of objects in front of complex backgrounds and performs automatic, reliable tracking of fast-moving objects after they have been recognized. The algorithm can track local-feature-rich as well as edge-feature-rich objects.
The SentiSight 3.0 SDK can be used for development of a wide range of applications, including:
SentiSight 3.0 supports both Microsoft Windows and Linux operating systems (32 & 64-bit) and gives developers complete control over SDK data input and output, enabling the functions to be used with most cameras. A demo application is available.
SentiSight 3.0 SDK is available now with highly competitive licensing options from Neurotechnology and from partners and distributors worldwide. A 30-day trial version with full functionality is also available for download. For more information, please go to: http://www.neurotechnology.com.
Neurotechnology is a provider of high-precision biometric fingerprint, face, iris, palmprint and voice identification algorithms, object recognition technology and software development products. More than 2500 system integrators, security companies and hardware providers integrate Neurotechnology's algorithms into their products, with millions of customer installations worldwide.
Neurotechnology's identification algorithms have consistently earned the highest honors in some of the industry's most rigorous competitions, including the National Institute of Standards and Technology (NIST)'s Fingerprint Vendor Technology Evaluation (FpVTE), the Iris Exchange (IREX) and the Fingerprint Verification Competitions (FVC).
Drawing from years of academic research in the fields of neuroinformatics, image processing and pattern recognition, Neurotechnology was founded in 1990 in Vilnius, Lithuania and released its first fingerprint identification system in 1991. Since that time the company has released more than 60 products and version upgrades for identification and verification of objects and personal identity.
Jennifer Allen Newton
Bluehouse Consulting Group, Inc.
Jennifer (at) bluehousecg (dot) com
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