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Revision as of 19:30, 10 December 2018
Make sure you also check GstInference's companion project: R2Inference |
GstInference |
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Introduction |
Getting started |
Supported architectures |
InceptionV1 InceptionV3 YoloV2 AlexNet |
Supported backends |
Caffe |
Metadata and Signals |
Overlay Elements |
Utils Elements |
Legacy pipelines |
Example pipelines |
Example applications |
Benchmarks |
Model Zoo |
Project Status |
Contact Us |
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Deep Learning has revolutionized classic computer vision techniques to enable even more intelligent and autonomous systems. Multimedia frameworks, such as GStreamer, are a basic complement of automatic recognition and classification systems. GstInference is an ongoing open-source project from Ridgerun Engineering that allows easy integration of deep learning networks into your existing pipeline.
General Concepts
Software Stack