from __future__ import annotations import json import logging import os from enum import Enum from typing import Dict, List, Optional, Tuple, Union import matplotlib.pyplot as plt import numpy as np import yaml from pydantic import BaseModel, Extra, Field, validator from pydantic.fields import PrivateAttr from frigate.const import BASE_DIR, CACHE_DIR, YAML_EXT from frigate.util import create_mask, deep_merge, load_labels logger = logging.getLogger(__name__) # TODO: Identify what the default format to display timestamps is DEFAULT_TIME_FORMAT = "%m/%d/%Y %H:%M:%S" # German Style: # DEFAULT_TIME_FORMAT = "%d.%m.%Y %H:%M:%S" FRIGATE_ENV_VARS = {k: v for k, v in os.environ.items() if k.startswith("FRIGATE_")} DEFAULT_TRACKED_OBJECTS = ["person"] DEFAULT_DETECTORS = {"cpu": {"type": "cpu"}} class FrigateBaseModel(BaseModel): class Config: extra = Extra.forbid class DetectorTypeEnum(str, Enum): edgetpu = "edgetpu" cpu = "cpu" class DetectorConfig(FrigateBaseModel): type: DetectorTypeEnum = Field(default=DetectorTypeEnum.cpu, title="Detector Type") device: str = Field(default="usb", title="Device Type") num_threads: int = Field(default=3, title="Number of detection threads") class UIConfig(FrigateBaseModel): use_experimental: bool = Field(default=False, title="Experimental UI") class MqttConfig(FrigateBaseModel): host: str = Field(title="MQTT Host") port: int = Field(default=1883, title="MQTT Port") topic_prefix: str = Field(default="frigate", title="MQTT Topic Prefix") client_id: str = Field(default="frigate", title="MQTT Client ID") stats_interval: int = Field(default=60, title="MQTT Camera Stats Interval") user: Optional[str] = Field(title="MQTT Username") password: Optional[str] = Field(title="MQTT Password") tls_ca_certs: Optional[str] = Field(title="MQTT TLS CA Certificates") tls_client_cert: Optional[str] = Field(title="MQTT TLS Client Certificate") tls_client_key: Optional[str] = Field(title="MQTT TLS Client Key") tls_insecure: Optional[bool] = Field(title="MQTT TLS Insecure") @validator("password", pre=True, always=True) def validate_password(cls, v, values): if (v is None) != (values["user"] is None): raise ValueError("Password must be provided with username.") return v class RetainModeEnum(str, Enum): all = "all" motion = "motion" active_objects = "active_objects" class RetainConfig(FrigateBaseModel): default: float = Field(default=10, title="Default retention period.") mode: RetainModeEnum = Field(default=RetainModeEnum.motion, title="Retain mode.") objects: Dict[str, float] = Field( default_factory=dict, title="Object retention period." ) class EventsConfig(FrigateBaseModel): max_seconds: int = Field(default=300, title="Maximum event duration.") pre_capture: int = Field(default=5, title="Seconds to retain before event starts.") post_capture: int = Field(default=5, title="Seconds to retain after event ends.") required_zones: List[str] = Field( default_factory=list, title="List of required zones to be entered in order to save the event.", ) objects: Optional[List[str]] = Field( title="List of objects to be detected in order to save the event.", ) retain: RetainConfig = Field( default_factory=RetainConfig, title="Event retention settings." ) class RecordRetainConfig(FrigateBaseModel): days: float = Field(default=0, title="Default retention period.") mode: RetainModeEnum = Field(default=RetainModeEnum.all, title="Retain mode.") class RecordConfig(FrigateBaseModel): enabled: bool = Field(default=False, title="Enable record on all cameras.") expire_interval: int = Field( default=60, title="Number of minutes to wait between cleanup runs.", ) # deprecated - to be removed in a future version retain_days: Optional[float] = Field(title="Recording retention period in days.") retain: RecordRetainConfig = Field( default_factory=RecordRetainConfig, title="Record retention settings." ) events: EventsConfig = Field( default_factory=EventsConfig, title="Event specific settings." ) class MotionConfig(FrigateBaseModel): threshold: int = Field( default=25, title="Motion detection threshold (1-255).", ge=1, le=255, ) contour_area: Optional[int] = Field(default=30, title="Contour Area") delta_alpha: float = Field(default=0.2, title="Delta Alpha") frame_alpha: float = Field(default=0.2, title="Frame Alpha") frame_height: Optional[int] = Field(default=50, title="Frame Height") mask: Union[str, List[str]] = Field( default="", title="Coordinates polygon for the motion mask." ) class RuntimeMotionConfig(MotionConfig): raw_mask: Union[str, List[str]] = "" mask: np.ndarray = None def __init__(self, **config): frame_shape = config.get("frame_shape", (1, 1)) mask = config.get("mask", "") config["raw_mask"] = mask if mask: config["mask"] = create_mask(frame_shape, mask) else: empty_mask = np.zeros(frame_shape, np.uint8) empty_mask[:] = 255 config["mask"] = empty_mask super().__init__(**config) def dict(self, **kwargs): ret = super().dict(**kwargs) if "mask" in ret: ret["mask"] = ret["raw_mask"] ret.pop("raw_mask") return ret class Config: arbitrary_types_allowed = True extra = Extra.ignore class StationaryMaxFramesConfig(FrigateBaseModel): default: Optional[int] = Field(title="Default max frames.", ge=1) objects: Dict[str, int] = Field( default_factory=dict, title="Object specific max frames." ) class StationaryConfig(FrigateBaseModel): interval: Optional[int] = Field( default=0, title="Frame interval for checking stationary objects.", ge=0, ) threshold: Optional[int] = Field( title="Number of frames without a position change for an object to be considered stationary", ge=1, ) max_frames: StationaryMaxFramesConfig = Field( default_factory=StationaryMaxFramesConfig, title="Max frames for stationary objects.", ) class DetectConfig(FrigateBaseModel): height: int = Field(default=720, title="Height of the stream for the detect role.") width: int = Field(default=1280, title="Width of the stream for the detect role.") fps: int = Field( default=5, title="Number of frames per second to process through detection." ) enabled: bool = Field(default=True, title="Detection Enabled.") max_disappeared: Optional[int] = Field( title="Maximum number of frames the object can dissapear before detection ends." ) stationary: StationaryConfig = Field( default_factory=StationaryConfig, title="Stationary objects config.", ) class FilterConfig(FrigateBaseModel): min_area: int = Field( default=0, title="Minimum area of bounding box for object to be counted." ) max_area: int = Field( default=24000000, title="Maximum area of bounding box for object to be counted." ) min_ratio: float = Field( default=0, title="Minimum ratio of bounding box's width/height for object to be counted.", ) max_ratio: float = Field( default=24000000, title="Maximum ratio of bounding box's width/height for object to be counted.", ) threshold: float = Field( default=0.7, title="Average detection confidence threshold for object to be counted.", ) min_score: float = Field( default=0.5, title="Minimum detection confidence for object to be counted." ) mask: Optional[Union[str, List[str]]] = Field( title="Detection area polygon mask for this filter configuration.", ) class RuntimeFilterConfig(FilterConfig): mask: Optional[np.ndarray] raw_mask: Optional[Union[str, List[str]]] def __init__(self, **config): mask = config.get("mask") config["raw_mask"] = mask if mask is not None: config["mask"] = create_mask(config.get("frame_shape", (1, 1)), mask) super().__init__(**config) def dict(self, **kwargs): ret = super().dict(**kwargs) if "mask" in ret: ret["mask"] = ret["raw_mask"] ret.pop("raw_mask") return ret class Config: arbitrary_types_allowed = True extra = Extra.ignore # this uses the base model because the color is an extra attribute class ZoneConfig(BaseModel): filters: Dict[str, FilterConfig] = Field( default_factory=dict, title="Zone filters." ) coordinates: Union[str, List[str]] = Field( title="Coordinates polygon for the defined zone." ) objects: List[str] = Field( default_factory=list, title="List of objects that can trigger the zone.", ) _color: Optional[Tuple[int, int, int]] = PrivateAttr() _contour: np.ndarray = PrivateAttr() @property def color(self) -> Tuple[int, int, int]: return self._color @property def contour(self) -> np.ndarray: return self._contour def __init__(self, **config): super().__init__(**config) self._color = config.get("color", (0, 0, 0)) coordinates = config["coordinates"] if isinstance(coordinates, list): self._contour = np.array( [[int(p.split(",")[0]), int(p.split(",")[1])] for p in coordinates] ) elif isinstance(coordinates, str): points = coordinates.split(",") self._contour = np.array( [[int(points[i]), int(points[i + 1])] for i in range(0, len(points), 2)] ) else: self._contour = np.array([]) class ObjectConfig(FrigateBaseModel): track: List[str] = Field(default=DEFAULT_TRACKED_OBJECTS, title="Objects to track.") filters: Optional[Dict[str, FilterConfig]] = Field(title="Object filters.") mask: Union[str, List[str]] = Field(default="", title="Object mask.") class BirdseyeModeEnum(str, Enum): objects = "objects" motion = "motion" continuous = "continuous" class BirdseyeConfig(FrigateBaseModel): enabled: bool = Field(default=True, title="Enable birdseye view.") width: int = Field(default=1280, title="Birdseye width.") height: int = Field(default=720, title="Birdseye height.") quality: int = Field( default=8, title="Encoding quality.", ge=1, le=31, ) mode: BirdseyeModeEnum = Field( default=BirdseyeModeEnum.objects, title="Tracking mode." ) FFMPEG_GLOBAL_ARGS_DEFAULT = ["-hide_banner", "-loglevel", "warning"] FFMPEG_INPUT_ARGS_DEFAULT = [ "-avoid_negative_ts", "make_zero", "-fflags", "+genpts+discardcorrupt", "-rtsp_transport", "tcp", "-stimeout", "5000000", "-use_wallclock_as_timestamps", "1", ] DETECT_FFMPEG_OUTPUT_ARGS_DEFAULT = ["-f", "rawvideo", "-pix_fmt", "yuv420p"] RTMP_FFMPEG_OUTPUT_ARGS_DEFAULT = ["-c", "copy", "-f", "flv"] RECORD_FFMPEG_OUTPUT_ARGS_DEFAULT = [ "-f", "segment", "-segment_time", "10", "-segment_format", "mp4", "-reset_timestamps", "1", "-strftime", "1", "-c", "copy", "-an", ] class FfmpegOutputArgsConfig(FrigateBaseModel): detect: Union[str, List[str]] = Field( default=DETECT_FFMPEG_OUTPUT_ARGS_DEFAULT, title="Detect role FFmpeg output arguments.", ) record: Union[str, List[str]] = Field( default=RECORD_FFMPEG_OUTPUT_ARGS_DEFAULT, title="Record role FFmpeg output arguments.", ) rtmp: Union[str, List[str]] = Field( default=RTMP_FFMPEG_OUTPUT_ARGS_DEFAULT, title="RTMP role FFmpeg output arguments.", ) class FfmpegConfig(FrigateBaseModel): global_args: Union[str, List[str]] = Field( default=FFMPEG_GLOBAL_ARGS_DEFAULT, title="Global FFmpeg arguments." ) hwaccel_args: Union[str, List[str]] = Field( default_factory=list, title="FFmpeg hardware acceleration arguments." ) input_args: Union[str, List[str]] = Field( default=FFMPEG_INPUT_ARGS_DEFAULT, title="FFmpeg input arguments." ) output_args: FfmpegOutputArgsConfig = Field( default_factory=FfmpegOutputArgsConfig, title="FFmpeg output arguments per role.", ) class CameraRoleEnum(str, Enum): record = "record" rtmp = "rtmp" detect = "detect" class CameraInput(FrigateBaseModel): path: str = Field(title="Camera input path.") roles: List[CameraRoleEnum] = Field(title="Roles assigned to this input.") global_args: Union[str, List[str]] = Field( default_factory=list, title="FFmpeg global arguments." ) hwaccel_args: Union[str, List[str]] = Field( default_factory=list, title="FFmpeg hardware acceleration arguments." ) input_args: Union[str, List[str]] = Field( default_factory=list, title="FFmpeg input arguments." ) class CameraFfmpegConfig(FfmpegConfig): inputs: List[CameraInput] = Field(title="Camera inputs.") @validator("inputs") def validate_roles(cls, v): roles = [role for i in v for role in i.roles] roles_set = set(roles) if len(roles) > len(roles_set): raise ValueError("Each input role may only be used once.") if not "detect" in roles: raise ValueError("The detect role is required.") return v class SnapshotsConfig(FrigateBaseModel): enabled: bool = Field(default=False, title="Snapshots enabled.") clean_copy: bool = Field( default=True, title="Create a clean copy of the snapshot image." ) timestamp: bool = Field( default=False, title="Add a timestamp overlay on the snapshot." ) bounding_box: bool = Field( default=True, title="Add a bounding box overlay on the snapshot." ) crop: bool = Field(default=False, title="Crop the snapshot to the detected object.") required_zones: List[str] = Field( default_factory=list, title="List of required zones to be entered in order to save a snapshot.", ) height: Optional[int] = Field(title="Snapshot image height.") retain: RetainConfig = Field( default_factory=RetainConfig, title="Snapshot retention." ) quality: int = Field( default=70, title="Quality of the encoded jpeg (0-100).", ge=0, le=100, ) class ColorConfig(FrigateBaseModel): red: int = Field(default=255, ge=0, le=255, title="Red") green: int = Field(default=255, ge=0, le=255, title="Green") blue: int = Field(default=255, ge=0, le=255, title="Blue") class TimestampPositionEnum(str, Enum): tl = "tl" tr = "tr" bl = "bl" br = "br" class TimestampEffectEnum(str, Enum): solid = "solid" shadow = "shadow" class TimestampStyleConfig(FrigateBaseModel): position: TimestampPositionEnum = Field( default=TimestampPositionEnum.tl, title="Timestamp position." ) format: str = Field(default=DEFAULT_TIME_FORMAT, title="Timestamp format.") color: ColorConfig = Field(default_factory=ColorConfig, title="Timestamp color.") thickness: int = Field(default=2, title="Timestamp thickness.") effect: Optional[TimestampEffectEnum] = Field(title="Timestamp effect.") class CameraMqttConfig(FrigateBaseModel): enabled: bool = Field(default=True, title="Send image over MQTT.") timestamp: bool = Field(default=True, title="Add timestamp to MQTT image.") bounding_box: bool = Field(default=True, title="Add bounding box to MQTT image.") crop: bool = Field(default=True, title="Crop MQTT image to detected object.") height: int = Field(default=270, title="MQTT image height.") required_zones: List[str] = Field( default_factory=list, title="List of required zones to be entered in order to send the image.", ) quality: int = Field( default=70, title="Quality of the encoded jpeg (0-100).", ge=0, le=100, ) class RtmpConfig(FrigateBaseModel): enabled: bool = Field(default=True, title="RTMP restreaming enabled.") class CameraLiveConfig(FrigateBaseModel): height: int = Field(default=720, title="Live camera view height") quality: int = Field(default=8, ge=1, le=31, title="Live camera view quality") class CameraConfig(FrigateBaseModel): name: Optional[str] = Field(title="Camera name.", regex="^[a-zA-Z0-9_-]+$") ffmpeg: CameraFfmpegConfig = Field(title="FFmpeg configuration for the camera.") best_image_timeout: int = Field( default=60, title="How long to wait for the image with the highest confidence score.", ) zones: Dict[str, ZoneConfig] = Field( default_factory=dict, title="Zone configuration." ) record: RecordConfig = Field( default_factory=RecordConfig, title="Record configuration." ) rtmp: RtmpConfig = Field( default_factory=RtmpConfig, title="RTMP restreaming configuration." ) live: CameraLiveConfig = Field( default_factory=CameraLiveConfig, title="Live playback settings." ) snapshots: SnapshotsConfig = Field( default_factory=SnapshotsConfig, title="Snapshot configuration." ) mqtt: CameraMqttConfig = Field( default_factory=CameraMqttConfig, title="MQTT configuration." ) objects: ObjectConfig = Field( default_factory=ObjectConfig, title="Object configuration." ) motion: Optional[MotionConfig] = Field(title="Motion detection configuration.") detect: DetectConfig = Field( default_factory=DetectConfig, title="Object detection configuration." ) timestamp_style: TimestampStyleConfig = Field( default_factory=TimestampStyleConfig, title="Timestamp style configuration." ) _ffmpeg_cmds: List[Dict[str, List[str]]] = PrivateAttr() def __init__(self, **config): # Set zone colors if "zones" in config: colors = plt.cm.get_cmap("tab10", len(config["zones"])) config["zones"] = { name: {**z, "color": tuple(round(255 * c) for c in colors(idx)[:3])} for idx, (name, z) in enumerate(config["zones"].items()) } # add roles to the input if there is only one if len(config["ffmpeg"]["inputs"]) == 1: config["ffmpeg"]["inputs"][0]["roles"] = ["record", "rtmp", "detect"] super().__init__(**config) @property def frame_shape(self) -> Tuple[int, int]: return self.detect.height, self.detect.width @property def frame_shape_yuv(self) -> Tuple[int, int]: return self.detect.height * 3 // 2, self.detect.width @property def ffmpeg_cmds(self) -> List[Dict[str, List[str]]]: return self._ffmpeg_cmds def create_ffmpeg_cmds(self): if "_ffmpeg_cmds" in self: return ffmpeg_cmds = [] for ffmpeg_input in self.ffmpeg.inputs: ffmpeg_cmd = self._get_ffmpeg_cmd(ffmpeg_input) if ffmpeg_cmd is None: continue ffmpeg_cmds.append({"roles": ffmpeg_input.roles, "cmd": ffmpeg_cmd}) self._ffmpeg_cmds = ffmpeg_cmds def _get_ffmpeg_cmd(self, ffmpeg_input: CameraInput): ffmpeg_output_args = [] if "detect" in ffmpeg_input.roles: detect_args = ( self.ffmpeg.output_args.detect if isinstance(self.ffmpeg.output_args.detect, list) else self.ffmpeg.output_args.detect.split(" ") ) ffmpeg_output_args = ( [ "-r", str(self.detect.fps), "-s", f"{self.detect.width}x{self.detect.height}", ] + detect_args + ffmpeg_output_args + ["pipe:"] ) if "rtmp" in ffmpeg_input.roles and self.rtmp.enabled: rtmp_args = ( self.ffmpeg.output_args.rtmp if isinstance(self.ffmpeg.output_args.rtmp, list) else self.ffmpeg.output_args.rtmp.split(" ") ) ffmpeg_output_args = ( rtmp_args + [f"rtmp://127.0.0.1/live/{self.name}"] + ffmpeg_output_args ) if "record" in ffmpeg_input.roles and self.record.enabled: record_args = ( self.ffmpeg.output_args.record if isinstance(self.ffmpeg.output_args.record, list) else self.ffmpeg.output_args.record.split(" ") ) ffmpeg_output_args = ( record_args + [f"{os.path.join(CACHE_DIR, self.name)}-%Y%m%d%H%M%S.mp4"] + ffmpeg_output_args ) # if there arent any outputs enabled for this input if len(ffmpeg_output_args) == 0: return None global_args = ffmpeg_input.global_args or self.ffmpeg.global_args hwaccel_args = ffmpeg_input.hwaccel_args or self.ffmpeg.hwaccel_args input_args = ffmpeg_input.input_args or self.ffmpeg.input_args global_args = ( global_args if isinstance(global_args, list) else global_args.split(" ") ) hwaccel_args = ( hwaccel_args if isinstance(hwaccel_args, list) else hwaccel_args.split(" ") ) input_args = ( input_args if isinstance(input_args, list) else input_args.split(" ") ) cmd = ( ["ffmpeg"] + global_args + hwaccel_args + input_args + ["-i", ffmpeg_input.path] + ffmpeg_output_args ) return [part for part in cmd if part != ""] class DatabaseConfig(FrigateBaseModel): path: str = Field( default=os.path.join(BASE_DIR, "frigate.db"), title="Database path." ) class ModelConfig(FrigateBaseModel): path: Optional[str] = Field(title="Custom Object detection model path.") labelmap_path: Optional[str] = Field(title="Label map for custom object detector.") width: int = Field(default=320, title="Object detection model input width.") height: int = Field(default=320, title="Object detection model input height.") labelmap: Dict[int, str] = Field( default_factory=dict, title="Labelmap customization." ) _merged_labelmap: Optional[Dict[int, str]] = PrivateAttr() _colormap: Dict[int, Tuple[int, int, int]] = PrivateAttr() @property def merged_labelmap(self) -> Dict[int, str]: return self._merged_labelmap @property def colormap(self) -> Dict[int, Tuple[int, int, int]]: return self._colormap def __init__(self, **config): super().__init__(**config) self._merged_labelmap = { **load_labels(config.get("labelmap_path", "/labelmap.txt")), **config.get("labelmap", {}), } cmap = plt.cm.get_cmap("tab10", len(self._merged_labelmap.keys())) self._colormap = {} for key, val in self._merged_labelmap.items(): self._colormap[val] = tuple(int(round(255 * c)) for c in cmap(key)[:3]) class LogLevelEnum(str, Enum): debug = "debug" info = "info" warning = "warning" error = "error" critical = "critical" class LoggerConfig(FrigateBaseModel): default: LogLevelEnum = Field( default=LogLevelEnum.info, title="Default logging level." ) logs: Dict[str, LogLevelEnum] = Field( default_factory=dict, title="Log level for specified processes." ) class FrigateConfig(FrigateBaseModel): mqtt: MqttConfig = Field(title="MQTT Configuration.") database: DatabaseConfig = Field( default_factory=DatabaseConfig, title="Database configuration." ) environment_vars: Dict[str, str] = Field( default_factory=dict, title="Frigate environment variables." ) ui: UIConfig = Field(default_factory=UIConfig, title="UI configuration.") model: ModelConfig = Field( default_factory=ModelConfig, title="Detection model configuration." ) detectors: Dict[str, DetectorConfig] = Field( default={name: DetectorConfig(**d) for name, d in DEFAULT_DETECTORS.items()}, title="Detector hardware configuration.", ) logger: LoggerConfig = Field( default_factory=LoggerConfig, title="Logging configuration." ) record: RecordConfig = Field( default_factory=RecordConfig, title="Global record configuration." ) snapshots: SnapshotsConfig = Field( default_factory=SnapshotsConfig, title="Global snapshots configuration." ) live: CameraLiveConfig = Field( default_factory=CameraLiveConfig, title="Global live configuration." ) rtmp: RtmpConfig = Field( default_factory=RtmpConfig, title="Global RTMP restreaming configuration." ) birdseye: BirdseyeConfig = Field( default_factory=BirdseyeConfig, title="Birdseye configuration." ) ffmpeg: FfmpegConfig = Field( default_factory=FfmpegConfig, title="Global FFmpeg configuration." ) objects: ObjectConfig = Field( default_factory=ObjectConfig, title="Global object configuration." ) motion: Optional[MotionConfig] = Field( title="Global motion detection configuration." ) detect: DetectConfig = Field( default_factory=DetectConfig, title="Global object tracking configuration." ) cameras: Dict[str, CameraConfig] = Field(title="Camera configuration.") timestamp_style: TimestampStyleConfig = Field( default_factory=TimestampStyleConfig, title="Global timestamp style configuration.", ) @property def runtime_config(self) -> FrigateConfig: """Merge camera config with globals.""" config = self.copy(deep=True) # MQTT password substitution if config.mqtt.password: config.mqtt.password = config.mqtt.password.format(**FRIGATE_ENV_VARS) # Global config to propegate down to camera level global_config = config.dict( include={ "record": ..., "snapshots": ..., "live": ..., "rtmp": ..., "objects": ..., "motion": ..., "detect": ..., "ffmpeg": ..., "timestamp_style": ..., }, exclude_unset=True, ) for name, camera in config.cameras.items(): merged_config = deep_merge(camera.dict(exclude_unset=True), global_config) camera_config: CameraConfig = CameraConfig.parse_obj( {"name": name, **merged_config} ) # Default max_disappeared configuration max_disappeared = camera_config.detect.fps * 5 if camera_config.detect.max_disappeared is None: camera_config.detect.max_disappeared = max_disappeared # Default stationary_threshold configuration stationary_threshold = camera_config.detect.fps * 10 if camera_config.detect.stationary.threshold is None: camera_config.detect.stationary.threshold = stationary_threshold # FFMPEG input substitution for input in camera_config.ffmpeg.inputs: input.path = input.path.format(**FRIGATE_ENV_VARS) # Add default filters object_keys = camera_config.objects.track if camera_config.objects.filters is None: camera_config.objects.filters = {} object_keys = object_keys - camera_config.objects.filters.keys() for key in object_keys: camera_config.objects.filters[key] = FilterConfig() # Apply global object masks and convert masks to numpy array for object, filter in camera_config.objects.filters.items(): if camera_config.objects.mask: filter_mask = [] if filter.mask is not None: filter_mask = ( filter.mask if isinstance(filter.mask, list) else [filter.mask] ) object_mask = ( camera_config.objects.mask if isinstance(camera_config.objects.mask, list) else [camera_config.objects.mask] ) filter.mask = filter_mask + object_mask # Set runtime filter to create masks camera_config.objects.filters[object] = RuntimeFilterConfig( frame_shape=camera_config.frame_shape, **filter.dict(exclude_unset=True), ) # Convert motion configuration if camera_config.motion is None: camera_config.motion = RuntimeMotionConfig( frame_shape=camera_config.frame_shape ) else: camera_config.motion = RuntimeMotionConfig( frame_shape=camera_config.frame_shape, raw_mask=camera_config.motion.mask, **camera_config.motion.dict(exclude_unset=True), ) # check runtime config assigned_roles = list( set([r for i in camera_config.ffmpeg.inputs for r in i.roles]) ) if camera_config.record.enabled and not "record" in assigned_roles: raise ValueError( f"Camera {name} has record enabled, but record is not assigned to an input." ) if camera_config.rtmp.enabled and not "rtmp" in assigned_roles: raise ValueError( f"Camera {name} has rtmp enabled, but rtmp is not assigned to an input." ) # backwards compatibility for retain_days if not camera_config.record.retain_days is None: logger.warning( "The 'retain_days' config option has been DEPRECATED and will be removed in a future version. Please use the 'days' setting under 'retain'" ) if camera_config.record.retain.days == 0: camera_config.record.retain.days = camera_config.record.retain_days # warning if the higher level record mode is potentially more restrictive than the events rank_map = { RetainModeEnum.all: 0, RetainModeEnum.motion: 1, RetainModeEnum.active_objects: 2, } if ( camera_config.record.retain.days != 0 and rank_map[camera_config.record.retain.mode] > rank_map[camera_config.record.events.retain.mode] ): logger.warning( f"{name}: Recording retention is configured for {camera_config.record.retain.mode} and event retention is configured for {camera_config.record.events.retain.mode}. The more restrictive retention policy will be applied." ) # generage the ffmpeg commands camera_config.create_ffmpeg_cmds() config.cameras[name] = camera_config return config @validator("cameras") def ensure_zones_and_cameras_have_different_names(cls, v: Dict[str, CameraConfig]): zones = [zone for camera in v.values() for zone in camera.zones.keys()] for zone in zones: if zone in v.keys(): raise ValueError("Zones cannot share names with cameras") return v @classmethod def parse_file(cls, config_file): with open(config_file) as f: raw_config = f.read() if config_file.endswith(YAML_EXT): config = yaml.safe_load(raw_config) elif config_file.endswith(".json"): config = json.loads(raw_config) return cls.parse_obj(config)