DeepVideoAnalytics - A distributed visual search and visual data analytics platform.

  •        59

Deep Video Analytics is a platform for indexing and extracting information from videos and images. With latest version of docker installed correctly, you can run Deep Video Analytics in minutes locally (even without a GPU) using a single command. Deep Video Analytics implements a client-server architecture pattern, where clients can access state of the server via a REST API. For uploading, processing data, training models, performing queries, i.e. mutating the state clients can send DVAPQL (Deep Video Analytics Processing and Query Language) formatted as JSON. The query represents a directed acyclic graph of operations.

https://www.deepvideoanalytics.com/
https://github.com/AKSHAYUBHAT/DeepVideoAnalytics

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