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GTC ON-DEMAND

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Abstract:

Government agencies and commercial companies today demonstrate high demand to versatile, stable and highly-efficient person identification solutions supporting cross-domain face recognition and person database clusterization in both controlled and uncontrolled scenarios. Now it becomes possible to successfully resolve cross-domain face recognition challenge using deep learning and even tasks of quadratic complexity using GPU-powered inference of CNN-based face recognition algorithms. We''ll focus on (I) the concept of the GPU-powered platform for cross-domain face recognition; (II) its essential performance and critical technical characteristics; (III) reaching required accuracy and performance by using NVIDIA GPUs; (IV) examples of completed and ongoing face recognition projects

Government agencies and commercial companies today demonstrate high demand to versatile, stable and highly-efficient person identification solutions supporting cross-domain face recognition and person database clusterization in both controlled and uncontrolled scenarios. Now it becomes possible to successfully resolve cross-domain face recognition challenge using deep learning and even tasks of quadratic complexity using GPU-powered inference of CNN-based face recognition algorithms. We''ll focus on (I) the concept of the GPU-powered platform for cross-domain face recognition; (II) its essential performance and critical technical characteristics; (III) reaching required accuracy and performance by using NVIDIA GPUs; (IV) examples of completed and ongoing face recognition projects

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Topics:
Computer Vision, Intelligent Video Analytics, Video & Image Processing
Type:
Talk
Event:
GTC Europe
Year:
2017
Session ID:
23331
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Abstract:

Government agencies and commercial companies demonstrate high demand for versatile, stable, and highly efficient person identification solutions supporting cross-domain face recognition and person database clusterization in both controlled and uncontrolled scenarios. Now it's possible to resolve cross-domain face recognition challenges using deep learning and even tasks of quadratic complexity using GPU-powered inference of CNN-based face recognition algorithms. We'll focus on (1) the concept of the GPU-powered platform for cross-domain face recognition; (2) its essential performance and critical technical characteristics; (3) an approach to reaching the demanded efficiency and quality by using the NVIDIA GPU; and (4) providing examples of completed and ongoing projects that demonstrate achieved high-performance and quality parameters in real-life conditions.

Government agencies and commercial companies demonstrate high demand for versatile, stable, and highly efficient person identification solutions supporting cross-domain face recognition and person database clusterization in both controlled and uncontrolled scenarios. Now it's possible to resolve cross-domain face recognition challenges using deep learning and even tasks of quadratic complexity using GPU-powered inference of CNN-based face recognition algorithms. We'll focus on (1) the concept of the GPU-powered platform for cross-domain face recognition; (2) its essential performance and critical technical characteristics; (3) an approach to reaching the demanded efficiency and quality by using the NVIDIA GPU; and (4) providing examples of completed and ongoing projects that demonstrate achieved high-performance and quality parameters in real-life conditions.

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Topics:
Intelligent Video Analytics, Artificial Intelligence and Deep Learning, Cyber Security, Leadership and Policy in AI
Type:
Talk
Event:
GTC Washington D.C.
Year:
2017
Session ID:
DC7127
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