# Frigate - Realtime Object Detection for IP Cameras Uses OpenCV and Tensorflow to perform realtime object detection locally for IP cameras. Designed for integration with HomeAssistant or others via MQTT. Use of a [Google Coral USB Accelerator](https://coral.withgoogle.com/products/accelerator/) is optional, but highly recommended. On my Intel i7 processor, I can process 2-3 FPS with the CPU. The Coral can process 100+ FPS with very low CPU load. - Leverages multiprocessing heavily with an emphasis on realtime over processing every frame - Uses a very low overhead motion detection to determine where to run object detection - Object detection with Tensorflow runs in a separate process - Object info is published over MQTT for integration into HomeAssistant as a binary sensor - An endpoint is available to view an MJPEG stream for debugging, but should not be used continuously ![Diagram](diagram.png) ## Example video (from older version) You see multiple bounding boxes because it draws bounding boxes from all frames in the past 1 second where a person was detected. Not all of the bounding boxes were from the current frame. [![](http://img.youtube.com/vi/nqHbCtyo4dY/0.jpg)](http://www.youtube.com/watch?v=nqHbCtyo4dY "Frigate") ## Getting Started Run the container with ```bash docker run --rm \ --privileged \ --shm-size=512m \ # should work for a 2-3 cameras -v /dev/bus/usb:/dev/bus/usb \ -v :/config:ro \ -v /etc/localtime:/etc/localtime:ro \ -p 5000:5000 \ -e FRIGATE_RTSP_PASSWORD='password' \ blakeblackshear/frigate:stable ``` Example docker-compose: ```yaml frigate: container_name: frigate restart: unless-stopped privileged: true shm_size: '1g' # should work for 5-7 cameras image: blakeblackshear/frigate:stable volumes: - /dev/bus/usb:/dev/bus/usb - /etc/localtime:/etc/localtime:ro - :/config ports: - "5000:5000" environment: FRIGATE_RTSP_PASSWORD: "password" ``` A `config.yml` file must exist in the `config` directory. See example [here](config/config.example.yml) and device specific info can be found [here](docs/DEVICES.md). ## Integration with HomeAssistant Setup a the camera, binary_sensor, sensor and optionally automation as shown for each camera you define in frigate. Replace with the camera name as defined in the frigate `config.yml` (The `frigate_coral_fps` and `frigate_coral_inference` sensors only need to be defined once) ``` camera: - name: Last Person platform: mqtt topic: frigate//person/snapshot - name: Last Car platform: mqtt topic: frigate//car/snapshot binary_sensor: - name: Person platform: mqtt state_topic: "frigate//person" device_class: motion availability_topic: "frigate/available" sensor: - platform: rest name: Frigate Debug resource: http://localhost:5000/debug/stats scan_interval: 5 json_attributes: - - coral value_template: 'OK' - platform: template sensors: _fps: value_template: '{{ states.sensor.frigate_debug.attributes[""]["fps"] }}' unit_of_measurement: 'FPS' _skipped_fps: value_template: '{{ states.sensor.frigate_debug.attributes[""]["skipped_fps"] }}' unit_of_measurement: 'FPS' _detection_fps: value_template: '{{ states.sensor.frigate_debug.attributes[""]["detection_fps"] }}' unit_of_measurement: 'FPS' frigate_coral_fps: value_template: '{{ states.sensor.frigate_debug.attributes["coral"]["fps"] }}' unit_of_measurement: 'FPS' frigate_coral_inference: value_template: '{{ states.sensor.frigate_debug.attributes["coral"]["inference_speed"] }}' unit_of_measurement: 'ms' automation: - alias: Alert me if a person is detected while armed away trigger: platform: state entity_id: binary_sensor.camera_person from: 'off' to: 'on' condition: - condition: state entity_id: alarm_control_panel.home_alarm state: armed_away action: - service: notify.user_telegram data: message: "A person was detected." data: photo: - url: http://:5000//person/best.jpg caption: A person was detected. ``` ## Debuging Endpoint Access the mjpeg stream at `http://localhost:5000/` and the best snapshot for any object type with at `http://localhost:5000///best.jpg` You can access a higher resolution mjpeg stream by appending `h=height-in-pixels` to the endpoint. For example `http://localhost:5000/back?h=1080`. You can also increase the FPS by appending `fps=frame-rate` to the URL such as `http://localhost:5000/back?fps=10` Keep in mind the MJPEG endpoint is for debugging only, but should not be used continuously as it will put additional load on the system. Debug info is available at `http://localhost:5000/debug/stats` ## Using a custom model Models for both CPU and EdgeTPU (Coral) are bundled in the image. You can use your own models with volume mounts: - CPU Model: `/cpu_model.tflite` - EdgeTPU Model: `/edgetpu_model.tflite` - Labels: `/labelmap.txt` ## Tips - Lower the framerate of the video feed on the camera to reduce the CPU usage for capturing the feed. Not as effective, but you can also modify the `take_frame` [configuration](config/config.example.yml) for each camera to only analyze every other frame, or every third frame, etc. - Hard code the resolution of each camera in your config if you are having difficulty starting frigate or if the initial ffprobe for camerea resolution fails or returns incorrect info. Example: ``` cameras: back: ffmpeg: input: rtsp:// height: 1080 width: 1920 ``` - Object configuration - Tracked objects types, sizes and thresholds can be defined globally and/or on a per camera basis. The global and camera object configuration is *merged*. For example, if you defined tracking person, car, and truck globally but modified your backyard camera to only track person, the global config would merge making the effective list for the backyard camera still contain person, car and truck. If you want precise object tracking per camera, best practice to put a minimal list of objects at the global level and expand objects on a per camera basis. Object threshold and area configuration will be used first from the camera object config (if defined) and then from the global config. See the [example config](config/config.example.yml) for more information. - Masks and limiting detection to a certain area - You can create a bitmap (bmp) file the same aspect ratio as your camera feed to limit detection to certain areas. The mask works by looking at the bottom center of any bounding box (red dot below) and comparing that to your mask. If that red dot falls on an area of your mask that is black, the detection (and motion) will be ignored. Here is a sample mask that would limit detection to only the front yard and not the street for the above image: