mirror of
https://github.com/blakeblackshear/frigate.git
synced 2024-11-30 19:09:13 +01:00
188 lines
6.6 KiB
Python
188 lines
6.6 KiB
Python
"""Record events for object, audio, etc. detections."""
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import logging
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import queue
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import threading
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from multiprocessing import Queue
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from multiprocessing.synchronize import Event as MpEvent
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from frigate.config import FrigateConfig
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from frigate.events.maintainer import EventStateEnum, EventTypeEnum
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from frigate.models import Timeline
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from frigate.util.builtin import to_relative_box
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logger = logging.getLogger(__name__)
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class TimelineProcessor(threading.Thread):
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"""Handle timeline queue and update DB."""
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def __init__(
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self,
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config: FrigateConfig,
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queue: Queue,
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stop_event: MpEvent,
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) -> None:
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super().__init__(name="timeline_processor")
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self.config = config
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self.queue = queue
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self.stop_event = stop_event
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self.pre_event_cache: dict[str, list[dict[str, any]]] = {}
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def run(self) -> None:
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while not self.stop_event.is_set():
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try:
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(
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camera,
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input_type,
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event_type,
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prev_event_data,
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event_data,
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) = self.queue.get(timeout=1)
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except queue.Empty:
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continue
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if input_type == EventTypeEnum.tracked_object:
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# None prev_event_data is only allowed for the start of an event
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if event_type != EventStateEnum.start and prev_event_data is None:
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continue
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self.handle_object_detection(
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camera, event_type, prev_event_data, event_data
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)
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elif input_type == EventTypeEnum.api:
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self.handle_api_entry(camera, event_type, event_data)
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def insert_or_save(
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self,
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entry: dict[str, any],
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prev_event_data: dict[any, any],
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event_data: dict[any, any],
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) -> None:
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"""Insert into db or cache."""
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id = entry[Timeline.source_id]
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if not event_data["has_clip"] and not event_data["has_snapshot"]:
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# the related event has not been saved yet, should be added to cache
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if id in self.pre_event_cache.keys():
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self.pre_event_cache[id].append(entry)
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else:
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self.pre_event_cache[id] = [entry]
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else:
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# the event is saved, insert to db and insert cached into db
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if id in self.pre_event_cache.keys():
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for e in self.pre_event_cache[id]:
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Timeline.insert(e).execute()
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self.pre_event_cache.pop(id)
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Timeline.insert(entry).execute()
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def handle_object_detection(
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self,
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camera: str,
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event_type: str,
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prev_event_data: dict[any, any],
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event_data: dict[any, any],
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) -> bool:
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"""Handle object detection."""
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save = False
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camera_config = self.config.cameras[camera]
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event_id = event_data["id"]
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timeline_entry = {
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Timeline.timestamp: event_data["frame_time"],
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Timeline.camera: camera,
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Timeline.source: "tracked_object",
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Timeline.source_id: event_id,
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Timeline.data: {
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"box": to_relative_box(
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camera_config.detect.width,
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camera_config.detect.height,
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event_data["box"],
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),
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"label": event_data["label"],
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"sub_label": event_data.get("sub_label"),
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"region": to_relative_box(
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camera_config.detect.width,
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camera_config.detect.height,
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event_data["region"],
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),
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"attribute": "",
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},
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}
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# update sub labels for existing entries that haven't been added yet
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if (
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prev_event_data != None
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and prev_event_data["sub_label"] != event_data["sub_label"]
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and event_id in self.pre_event_cache.keys()
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):
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for e in self.pre_event_cache[event_id]:
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e[Timeline.data]["sub_label"] = event_data["sub_label"]
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if event_type == EventStateEnum.start:
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timeline_entry[Timeline.class_type] = "visible"
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save = True
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elif event_type == EventStateEnum.update:
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if (
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len(prev_event_data["current_zones"]) < len(event_data["current_zones"])
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and not event_data["stationary"]
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):
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timeline_entry[Timeline.class_type] = "entered_zone"
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timeline_entry[Timeline.data]["zones"] = event_data["current_zones"]
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save = True
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elif prev_event_data["stationary"] != event_data["stationary"]:
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timeline_entry[Timeline.class_type] = (
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"stationary" if event_data["stationary"] else "active"
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)
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save = True
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elif prev_event_data["attributes"] == {} and event_data["attributes"] != {}:
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timeline_entry[Timeline.class_type] = "attribute"
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timeline_entry[Timeline.data]["attribute"] = list(
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event_data["attributes"].keys()
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)[0]
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save = True
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elif event_type == EventStateEnum.end:
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timeline_entry[Timeline.class_type] = "gone"
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save = True
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if save:
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self.insert_or_save(timeline_entry, prev_event_data, event_data)
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def handle_api_entry(
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self,
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camera: str,
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event_type: str,
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event_data: dict[any, any],
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) -> bool:
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if event_type != "new":
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return False
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if event_data.get("type", "api") == "audio":
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timeline_entry = {
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Timeline.class_type: "heard",
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Timeline.timestamp: event_data["start_time"],
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Timeline.camera: camera,
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Timeline.source: "audio",
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Timeline.source_id: event_data["id"],
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Timeline.data: {
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"label": event_data["label"],
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"sub_label": event_data.get("sub_label"),
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},
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}
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else:
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timeline_entry = {
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Timeline.class_type: "external",
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Timeline.timestamp: event_data["start_time"],
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Timeline.camera: camera,
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Timeline.source: "api",
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Timeline.source_id: event_data["id"],
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Timeline.data: {
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"label": event_data["label"],
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"sub_label": event_data.get("sub_label"),
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},
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}
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Timeline.insert(timeline_entry).execute()
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return True
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