Demo: Real-time video frame differentiator based on external memory interface
Citation
Davutoğlu, D., Yıldız, N., Ayten, U. E. & Tavşanoǧlu, A. V., (2018). Demo: Real-time video frame differentiator based on external memory interface. Paper presented at the International Workshop on Cellular Nanoscale Networks and their Applications, 111-111.Abstract
Implementation and demonstration processes of a real-time video frame differentiator based on an external memory interface is described in this paper. The video frame differentiation process is successfully implemented on both low cost and high-end FPGA development boards, then demonstrated by using sample videos at 1024x768@60 and 1920x1080@60 resolutions. Input video resolution, video buffer size on memory and burst size of the memory interface can be configured before implementation.
Source
International Workshop on Cellular Nanoscale Networks and their ApplicationsVolume
2018The following license files are associated with this item:
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