mirror of
https://github.com/blakeblackshear/frigate.git
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169 lines
6.1 KiB
Python
169 lines
6.1 KiB
Python
from typing import Any, Optional, Union
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from pydantic import Field, PrivateAttr, field_serializer, field_validator
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from ..base import FrigateBaseModel
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__all__ = ["ObjectConfig", "GenAIObjectConfig", "FilterConfig"]
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DEFAULT_TRACKED_OBJECTS = ["person"]
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class FilterConfig(FrigateBaseModel):
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min_area: Union[int, float] = Field(
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default=0,
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title="Minimum object area",
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description="Minimum bounding box area (pixels or percentage) required for this object type. Can be pixels (int) or percentage (float between 0.000001 and 0.99).",
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)
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max_area: Union[int, float] = Field(
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default=24000000,
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title="Maximum object area",
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description="Maximum bounding box area (pixels or percentage) allowed for this object type. Can be pixels (int) or percentage (float between 0.000001 and 0.99).",
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)
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min_ratio: float = Field(
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default=0,
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title="Minimum aspect ratio",
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description="Minimum width/height ratio required for the bounding box to qualify.",
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)
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max_ratio: float = Field(
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default=24000000,
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title="Maximum aspect ratio",
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description="Maximum width/height ratio allowed for the bounding box to qualify.",
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)
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threshold: float = Field(
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default=0.7,
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title="Avg confidence",
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description="Average detection confidence threshold required for the object to be considered a true positive.",
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)
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min_score: float = Field(
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default=0.5,
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title="Minimum confidence",
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description="Minimum single-frame detection confidence required for the object to be counted.",
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)
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mask: Optional[Union[str, list[str]]] = Field(
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default=None,
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title="Filter mask",
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description="Polygon coordinates defining where this filter applies within the frame.",
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)
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raw_mask: Union[str, list[str]] = ""
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@field_serializer("mask", when_used="json")
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def serialize_mask(self, value: Any, info):
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return self.raw_mask
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@field_serializer("raw_mask", when_used="json")
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def serialize_raw_mask(self, value: Any, info):
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return None
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class GenAIObjectTriggerConfig(FrigateBaseModel):
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tracked_object_end: bool = Field(
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default=True,
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title="Send on end",
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description="Send a request to GenAI when the tracked object ends.",
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)
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after_significant_updates: Optional[int] = Field(
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default=None,
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title="Early GenAI trigger",
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description="Send a request to GenAI after a specified number of significant updates for the tracked object.",
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ge=1,
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)
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class GenAIObjectConfig(FrigateBaseModel):
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enabled: bool = Field(
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default=False,
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title="Enable GenAI",
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description="Enable GenAI generation of descriptions for tracked objects by default.",
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)
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use_snapshot: bool = Field(
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default=False,
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title="Use snapshots",
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description="Use object snapshots instead of thumbnails for GenAI description generation.",
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)
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prompt: str = Field(
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default="Analyze the sequence of images containing the {label}. Focus on the likely intent or behavior of the {label} based on its actions and movement, rather than describing its appearance or the surroundings. Consider what the {label} is doing, why, and what it might do next.",
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title="Caption prompt",
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description="Default prompt template used when generating descriptions with GenAI.",
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)
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object_prompts: dict[str, str] = Field(
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default_factory=dict,
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title="Object prompts",
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description="Per-object prompts to customize GenAI outputs for specific labels.",
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)
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objects: Union[str, list[str]] = Field(
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default_factory=list,
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title="GenAI objects",
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description="List of object labels to send to GenAI by default.",
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)
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required_zones: Union[str, list[str]] = Field(
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default_factory=list,
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title="Required zones",
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description="Zones that must be entered for objects to qualify for GenAI description generation.",
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)
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debug_save_thumbnails: bool = Field(
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default=False,
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title="Save thumbnails",
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description="Save thumbnails sent to GenAI for debugging and review.",
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)
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send_triggers: GenAIObjectTriggerConfig = Field(
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default_factory=GenAIObjectTriggerConfig,
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title="GenAI triggers",
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description="Defines when frames should be sent to GenAI (on end, after updates, etc.).",
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)
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enabled_in_config: Optional[bool] = Field(
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default=None,
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title="Original GenAI state",
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description="Indicates whether GenAI was enabled in the original static config.",
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)
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@field_validator("required_zones", mode="before")
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@classmethod
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def validate_required_zones(cls, v):
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if isinstance(v, str) and "," not in v:
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return [v]
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return v
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class ObjectConfig(FrigateBaseModel):
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track: list[str] = Field(
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default=DEFAULT_TRACKED_OBJECTS,
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title="Objects to track",
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description="List of object labels to track globally; camera configs can override this.",
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)
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filters: dict[str, FilterConfig] = Field(
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default_factory=dict,
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title="Object filters",
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description="Filters applied to detected objects to reduce false positives (area, ratio, confidence).",
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)
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mask: Union[str, list[str]] = Field(
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default="",
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title="Object mask",
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description="Mask polygon used to prevent object detection in specified areas.",
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)
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genai: GenAIObjectConfig = Field(
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default_factory=GenAIObjectConfig,
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title="GenAI object config",
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description="GenAI options for describing tracked objects and sending frames for generation.",
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)
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_all_objects: list[str] = PrivateAttr()
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@property
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def all_objects(self) -> list[str]:
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return self._all_objects
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def parse_all_objects(self, cameras):
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if "_all_objects" in self:
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return
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# get list of unique enabled labels for tracking
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enabled_labels = set(self.track)
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for camera in cameras.values():
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enabled_labels.update(camera.objects.track)
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self._all_objects = list(enabled_labels)
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