Get Started#

  • Time to Complete: 30 minutes

  • Programming Language: Python 3

Prerequisites#

Setup the application#

Note that the following instructions assume Docker engine is setup in the host system.

  1. Clone the edge-ai-suites repository and change into industrial-edge-insights-vision directory. The directory contains the utility scripts required in the instructions that follows.

    git clone https://github.com/open-edge-platform/edge-ai-suites.git
    cd edge-ai-suites/manufacturing-ai-suite/industrial-edge-insights-vision/
    
  2. Set app specific environment variable file

    cp .env_pallet_defect_detection .env
    
  3. Edit the HOST_IP and other environment variables in .env file as follows

    HOST_IP=<HOST_IP>   # IP address of server where DLStreamer Pipeline Server is running.
    
    MR_PSQL_PASSWORD=  #PostgreSQL service & client adapter e.g. intel1234
    
    MR_MINIO_ACCESS_KEY=   # MinIO service & client access key e.g. intel1234
    MR_MINIO_SECRET_KEY=   # MinIO service & client secret key e.g. intel1234
    
    MR_URL= # Model registry url. Example http://<IP_address_of_model_registry_server>:32002
    
    MTX_WEBRTCICESERVERS2_0_USERNAME=<username>  # WebRTC credentials e.g. intel1234
    MTX_WEBRTCICESERVERS2_0_PASSWORD=<password>
    
    # application directory
    SAMPLE_APP=pallet-defect-detection
    
  4. Install pre-requisites. Run with sudo if needed.

    ./setup.sh
    

    This sets up application pre-requisites, download artifacts, sets executable permissions for scripts etc. Downloaded resource directories are made available to the application via volume mounting in docker compose file automatically.

Deploy the Application#

  1. Bring up the application

    docker compose up -d
    
  2. Fetch the list of pipeline loaded available to launch

    ./sample_list.sh
    

    This lists the pipeline loaded in DL Streamer Pipeline Server.

    Example Output:

    # Example output for Pallet Defect Detection
    Environment variables loaded from /home/intel/OEP/edge-ai-suites/manufacturing-ai-suite/industrial-edge-insights-vision/.env
    Running sample app: pallet-defect-detection
    Checking status of dlstreamer-pipeline-server...
    Server reachable. HTTP Status Code: 200
    Loaded pipelines:
    [
        ...
        {
            "description": "DL Streamer Pipeline Server pipeline",
            "name": "user_defined_pipelines",
            "parameters": {
            "properties": {
                "detection-properties": {
                "element": {
                    "format": "element-properties",
                    "name": "detection"
                }
                }
            },
            "type": "object"
            },
            "type": "GStreamer",
            "version": "pallet_defect_detection"
        }
        ...
    ]
    
  3. Start the sample application with a pipeline.

    ./sample_start.sh -p pallet_defect_detection
    

    This command would look for the payload for the pipeline specified in -p argument above, inside the payload.json file and launch the a pipeline instance in DLStreamer Pipeline Server. Refer to the table, to learn about different options available.

    Output:

    # Example output for Pallet Defect Detection
    Environment variables loaded from /home/intel/OEP/edge-ai-suites/manufacturing-ai-suite/industrial-edge-insights-vision/.env
    Running sample app: pallet-defect-detection
    Checking status of dlstreamer-pipeline-server...
    Server reachable. HTTP Status Code: 200
    Loading payload from /home/intel/OEP/edge-ai-suites/manufacturing-ai-suite/industrial-edge-insights-vision/apps/pallet-defect-detection/payload.json
    Payload loaded successfully.
    Starting pipeline: pallet_defect_detection
    Launching pipeline: pallet_defect_detection
    Extracting payload for pipeline: pallet_defect_detection
    Found 1 payload(s) for pipeline: pallet_defect_detection
    Payload for pipeline 'pallet_defect_detection' {"source":{"uri":"file:///home/pipeline-server/resources/videos/warehouse.avi","type":"uri"},"destination":{"frame":{"type":"webrtc","peer-id":"pdd"}},"parameters":{"detection-properties":{"model":"/home/pipeline-server/resources/models/pallet-defect-detection/model.xml","device":"CPU"}}}
    Posting payload to REST server at http://<HOST_IP>:8080/pipelines/user_defined_pipelines/pallet_defect_detection
    Payload for pipeline 'pallet_defect_detection' posted successfully. Response: "4b36b3ce52ad11f0ad60863f511204e2"
    

    NOTE: This would start the pipeline. We can view the inference stream on WebRTC by opening a browser and navigating to below url

    http://<HOST_IP>:8889/pdd/
    
  4. Get status of pipeline instance(s) running.

    ./sample_status.sh
    

    This command lists status of pipeline instances launched during the lifetime of sample application.

    Output:

    # Example output for Pallet Defect Detection
    Environment variables loaded from /home/intel/OEP/edge-ai-suites/manufacturing-ai-suite/industrial-edge-insights-vision/.env
    Running sample app: pallet-defect-detection
    [
    {
        "avg_fps": 30.00446179356829,
        "elapsed_time": 36.927825689315796,
        "id": "4b36b3ce52ad11f0ad60863f511204e2",
        "message": "",
        "start_time": 1750956469.620569,
        "state": "RUNNING"
    }
    ]
    
  5. Stop pipeline instance.

    ./sample_stop.sh
    

    This command will stop all instances that are currently in RUNNING state and respond with the last status.

    Output:

    # Example output for Pallet Defect Detection
    No pipelines specified. Stopping all pipeline instances
    Environment variables loaded from /home/intel/OEP/edge-ai-suites/manufacturing-ai-suite/industrial-edge-insights-vision/.env
    Running sample app: pallet-defect-detection
    Checking status of dlstreamer-pipeline-server...
    Server reachable. HTTP Status Code: 200
    Instance list fetched successfully. HTTP Status Code: 200
    Found 1 running pipeline instances.
    Stopping pipeline instance with ID: 4b36b3ce52ad11f0ad60863f511204e2
    Pipeline instance with ID '4b36b3ce52ad11f0ad60863f511204e2' stopped successfully. Response: {
    "avg_fps": 30.002200575353214,
    "elapsed_time": 63.72864031791687,
    "id": "4b36b3ce52ad11f0ad60863f511204e2",
    "message": "",
    "start_time": 1750956469.620569,
    "state": "RUNNING"
    }
    

    If you wish to stop a specific instance, you can provide it with an --id argument to the command.
    For example, ./sample_stop.sh --id 4b36b3ce52ad11f0ad60863f511204e2

  6. Bring down the application

    docker compose down -v
    

    This will bring down the services in the application and remove any volumes.

Further Reading#

Troubleshooting#