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{{DISPLAYTITLE:Introduction to GstInference on Coral from Google |noerror}}
== GstInference Description ==
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Deep Learning (DL) has revolutionized classic computer vision techniques to enable even more intelligent and autonomous systems.  To ease the software development burden for complex embedded visual Deep Learning applications, a multimedia framework, such as GStreamer, is utilized to simplify the task.  The Open Source GStreamer audio video streaming framework is a good choice as it separates the complexities of handling streaming video from the inference models processing the individual frames.  GstInference is an open-source GStreamer project sponsored by  RidgeRun that allows easy integration of deep learning networks into your video streaming application.
Deep Learning (DL) has revolutionized classic computer vision techniques to enable even more intelligent and autonomous systems.  To ease the software development burden for complex embedded visual Deep Learning applications, a multimedia framework, such as GStreamer, is utilized to simplify the task.  The Open Source GStreamer audio video streaming framework is a good choice as it separates the complexities of handling streaming video from the inference models processing the individual frames.  GstInference is an open-source GStreamer project sponsored by  RidgeRun that allows easy integration of deep learning networks into your video streaming application.
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