On the afternoon of March 7th, 2017, “Deep Insight· Deep Cooperation” – Dahua Smart GPU Product Release Conference was held in Hangzhou. Together with NVIDIA, an Artificial Intelligence (AI) computing company, Dahua released “Deep Sense” server for smart video structure analysis with extremely high computing capability. Mr. Yang Yinchang, General Manager of Dahua R&D Centre, Dr. Pan Shizhu, President of Dahua Institute of Advanced Technology, as well as Mr. Shen Wei, VP of NVIDIA participated in the new product release conference.

“Deep Sense” product release conference

With the improving performance of Big Data, Deep Learning, GPU chipset and server, AI is gaining momentum in global security industry. Based upon our insight on the market trend, and in response to customer demand, Dahua initiates cooperation with other companies in the industrial value chain to focus on enhancing video processing capabilities and creating a new world of AI together.

During the conference, Dr. Pan Shizhu presented the new product, “Deep Sense” series. As a blockbuster from the powerful combination of Dahua and NVIDIA, “Deep Sense” server, equipped with NVIDIA Tesla P4 GPUs, supports structure analysis of up to 192channels of video. It delivers up to 50 times stronger video processing capability comparing with alternations in the market Tesla P4 GPUs, specially developed for deep learning computing, will take the deep-learning-based application in the security industry to a new height. Dr. Pan believes that the release of “Deep Sense” will largely improve the utilisation and application value of security video Big Data.

Dahua “Deep Sense” series is the first server product in the global smart video analysis industry to deploy Tesla P4 GPU

Enhanced speed and accuracy

“Deep Sense”, with extraordinary processing capability, enables further advancement in video structured analysis, resulting in faster speed and better accuracy. In his speech about , Dr. Pan said that, the development of smart city relies largely on new technologies like Big Data, High Performance Computer and AI. Equipped with NVIDIA Tesla P4 GPUs, “Deep Sense” is able to perform deduction services for AI applications to support deep learning with more layers and smarter data collision analysis, offering more possibilities to implement new AI application in the global security industry.

Mr. Shen Wei, VP of NVIDIA, said that NVIDIA owns a comprehensive end-to-end leaning platform from training to deduction, offers mighty support of AI computing to global security industry. Dahua “Deep Sense” series is the first server product in the global smart video analysis industry to deploy Tesla P4 GPU. With Dahua’s expertise in fields like smart city and AI, and the powerful performance of NVIDIA deep learning platform, the mass deployment of Tesla P4 in Dahua products will definitely bring innovative intelligent video services to a broad user base in the global security industry.

Leveraging on its core strength in technical innovation, Dahua is making rapid progress in the fields of video big data and cloud computing. Vehicle big data, face recognition big data and visual extraction deployment have been very mature and reliable. The release of “Deep Sense” showcased further improvement of Dahua Smart Family Portfolio. Classification of video objects into human, vehicle and things, as well as the extraction of details and features will be more systematic, allowing video application to better met business needs and the demanding requirement of real life use in the global security industry.

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