RidgeRun PTZ Microservices
PTZ Microservice is a custom microservice developed by RidgeRun. What makes it special is that it allows you to navigate a 360-degrre video through PTZ. PTZ are the controls available that can be updated at any time during execution, and it means:
- PAN (horizontal)
- TILT (vertical)
- ZOOM (magnify or decrease the view of the image)
This microservice leverages the RidgeRun Spherical Video PTZ to make possible the selection of your region of interest within the sphere.
Briefly, this service gets an RTSP stream, performs the PTZ depending on the user instructions, and then returns as the output the transformed stream using the same protocol, RTSP.
API documentation
Usually, in the Microservices architectures the communication with the outside world is handle through well-defined APIs. This APIs specify methods, data formats, and protocols for interaction.
In our PTZ Microservice, the API documentation can be found here, there you can the list of the available requests.
efernandez: We need to point this to the official documentation, not the repo (please remove this box when addressed) |
efernandez: We could include here the link to the project documentation (please remove this box when addressed) |
Running the service
efernandez: Here you can specify that the service can be run directly into the host or using docker. Then describe both options (please remove this box when addressed) |
PTZ Microservice can run as a standalone application or as docker image. The docker approach has some benefits, for example: since the application is encapsulated along with its dependencies, less conflicts arise in the process of deployment.
As a standalone application
Before running the service, you should make sure you have all the dependencies installed. The intructions to do it can be found here: Spherical Video PTZ Building and Installation
mortigoza: Add link to other dependencies as rtsp-sink? (please remove this box when addressed) |
Then you have to clone into your device the repository project, available [/ptz here]
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The project is configured (via setup.py) to install the service with the name ptz. So to install it run:
pip install .
Then you will have the service with the following options:
usage: ptz [-h] [--port PORT] [--host HOST] [--ptz-window-size PTZ_WINDOW_SIZE] options: -h, --help show this help message and exit --port PORT Port for server --host HOST Server ip address --ptz-window-size PTZ_WINDOW_SIZE Size of the PTZ output window in pixels. The final resolution will be (Size x Size)
As a docker image
Before starting with docker support make sure you have nvidia runtime in your system. Follow these instructions to have docker up and runing in your Jetson Board.
Use prebuild image (dockerhub)
docker pull
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Build your own image (Dockerfile)
Build the container
We can build the ptz microservice container using the Dockerfile in the docker directory. This includes a base NVIDA image and the dependencies to run the ptz microservice application.
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First, we need to prepare the context directory for this build, please create a directory and include all the needed repositories (listed below). The Dockerfile will look for all the source code in the context directory and copy them to the container.
ptz-context/ . ├── gst-cuda ├── gst-rr-panoramaptz ├── gst-rtsp-sink ├── libpanorama ├── ptz └── rrms-utils
Then build the container image running the the following command from the folder containing the Dockerfile and context directory:
sudo docker build \ --network=host \ -f Dockerfile \ -t ridgerun/ptz-service:latest ptz-context/
Change ptz-context to your context's path and the tag (-t) to the name you want to give to your image.
Launch the container
The container can be launched by running the following command:
sudo docker run --runtime nvidia -it --privileged --net=host --ipc=host --name ptz-service ridgerun/ptz-service:latest
You can modify the name you want to give to your container with the option --name.
Here we are creating a container called __ptz-service__ that will start the ptz-service application in the default address and port and using the default output resolution. If a different address, port, or output resolution has to be used, you can do it by running:
sudo docker run --runtime nvidia -it --privileged --net=host --ipc=host --name ptz-service ridgerun/ptz-service:latest --host=HOST --port=PORT --ptz-window-size=PTZ_WINDOW_SIZE
Examples
Once you have a ptz-microservices-docker running you can run and test its functionality:
efernandez: For this section you can start by assuming there is an RTSP stream in a given location. Then use the client in rrms_utils to show how you can configure the stream and change the pan, tilt and/or zoom of the video (please remove this box when addressed) |
Run the ptz microservice
ptz --host=192.168.100.15 –port=5010
Create an stream RTSP source using this pipeline:
gst-launch-1.0 videotestsrc pattern=0 ! video/x-raw,width=640,height=480 ! queue ! videoconvert ! queue ! videoscale ! video/x-raw,width=1920,height=1080,format=I420 ! queue ! x264enc key-int-max=30 option-string="keyint=30:min-keyint=30:repeat-headers=1" bitrate=10000 ! video/x-h264, mapping=/stream_in ! perf ! rtspsink service=7000 -v
(you can modify th IPs, ports, and mapping depending on your needs. Just make sure you configure the other pipelines to match them)
Set and update the desired ptz values via the API following the format specified in here:
Set the input URI, the output port, and the output mapping (in this example we assume that the RTSP source is being played from the same IP as the ptz microservice):
curl -X PUT -H "Content-Type: application/json" -d '{"in_uri": "rtsp://192.168.100.15:7000/stream_in","out_port": "8000","out_mapping": "/stream_out"}' http://192.168.100.15:5010/stream
(you can modify th IPs, ports, and mapping depending on your needs. Just make sure you configure the other pipelines to match them)
Using the client ****
Receive the output result via RTSP using this pipeline:
gst-launch-1.0 rtspsrc location=rtsp://192.168.100.15:8000/stream_out ! queue ! decodebin ! queue ! videoconvert ! autovideosink -v
(you can modify th IPs, ports, and mapping depending on your needs. Just make sure you configure the other pipelines to match them)