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synced 2026-05-05 04:57:42 +03:00
add zoom time to movement predictions
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@ -63,9 +63,9 @@ class PtzAutotrackConfig(FrigateBaseModel):
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else:
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raise ValueError("Invalid type for movement_weights")
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if len(weights) != 5:
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if len(weights) != 6:
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raise ValueError(
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"movement_weights must have exactly 5 floats, remove this line from your config and run autotracking calibration"
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"movement_weights must have exactly 6 floats, remove this line from your config and run autotracking calibration"
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)
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return weights
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@ -206,6 +206,7 @@ class PtzAutoTracker:
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self.calibrating: dict[str, object] = {}
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self.intercept: dict[str, object] = {}
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self.move_coefficients: dict[str, object] = {}
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self.zoom_time: dict[str, float] = {}
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self.zoom_factor: dict[str, object] = {}
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# if cam is set to autotrack, onvif should be set up
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@ -292,7 +293,7 @@ class PtzAutoTracker:
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self.move_threads[camera].start()
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if camera_config.onvif.autotracking.movement_weights:
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if len(camera_config.onvif.autotracking.movement_weights) == 5:
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if len(camera_config.onvif.autotracking.movement_weights) == 6:
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camera_config.onvif.autotracking.movement_weights = [
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float(val)
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for val in camera_config.onvif.autotracking.movement_weights
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@ -311,7 +312,10 @@ class PtzAutoTracker:
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camera_config.onvif.autotracking.movement_weights[2]
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)
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self.move_coefficients[camera] = (
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camera_config.onvif.autotracking.movement_weights[3:]
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camera_config.onvif.autotracking.movement_weights[3:5]
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)
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self.zoom_time[camera] = (
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camera_config.onvif.autotracking.movement_weights[5]
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)
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else:
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camera_config.onvif.autotracking.enabled = False
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@ -362,6 +366,7 @@ class PtzAutoTracker:
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logger.info(f"Calibration for {camera} in progress: 0% complete")
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for i in range(2):
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start_time = time.time()
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# absolute move to 0 - fully zoomed out
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self.onvif._zoom_absolute(
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camera,
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@ -384,6 +389,9 @@ class PtzAutoTracker:
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self.onvif.get_camera_status(camera)
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zoom_in_values.append(self.ptz_metrics[camera].zoom_level.value)
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stop_time = time.time()
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self.zoom_time[camera] = stop_time - start_time
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if (
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self.config.cameras[camera].onvif.autotracking.zooming
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@ -421,12 +429,13 @@ class PtzAutoTracker:
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self.ptz_metrics[camera].min_zoom.value = min(zoom_out_values)
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logger.debug(
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f"{camera}: Calibration values: max zoom: {self.ptz_metrics[camera].max_zoom.value}, min zoom: {self.ptz_metrics[camera].min_zoom.value}"
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f"{camera}: Calibration values: max zoom: {self.ptz_metrics[camera].max_zoom.value}, min zoom: {self.ptz_metrics[camera].min_zoom.value}, zoom time: {self.zoom_time[camera]}"
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)
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else:
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self.ptz_metrics[camera].max_zoom.value = 1
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self.ptz_metrics[camera].min_zoom.value = 0
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self.zoom_time[camera] = 0
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self.onvif._move_to_preset(
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camera,
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@ -537,6 +546,7 @@ class PtzAutoTracker:
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self.ptz_metrics[camera].max_zoom.value,
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self.intercept[camera],
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*self.move_coefficients[camera],
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self.zoom_time[camera],
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]
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)
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@ -1111,6 +1121,31 @@ class PtzAutoTracker:
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camera, obj, predicted_box, predicted_movement_time, debug_zoom=True
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)
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if (
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camera_config.onvif.autotracking.movement_weights
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and camera_config.onvif.autotracking.zooming == ZoomingModeEnum.relative
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and zoom != 0
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):
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zoom_predicted_movement_time = abs(zoom) * self.zoom_time[camera]
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zoom_predicted_box = (
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predicted_box
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+ camera_fps * zoom_predicted_movement_time * average_velocity
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)
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zoom_predicted_box = np.round(zoom_predicted_box).astype(int)
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centroid_x = round((zoom_predicted_box[0] + zoom_predicted_box[2]) / 2)
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centroid_y = round((zoom_predicted_box[1] + zoom_predicted_box[3]) / 2)
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# recalculate pan and tilt with new centroid
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pan = ((centroid_x / camera_width) - 0.5) * 2
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tilt = (0.5 - (centroid_y / camera_height)) * 2
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logger.debug(
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f"{camera}: Zoom predicted time: {zoom_predicted_movement_time}, zoom predicted box: {tuple(zoom_predicted_box)}"
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)
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self._enqueue_move(camera, obj.obj_data["frame_time"], pan, tilt, zoom)
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def _autotrack_move_zoom_only(self, camera, obj):
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@ -1242,7 +1277,7 @@ class PtzAutoTracker:
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return
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# this is a brand new object that's on our camera, has our label, entered the zone,
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# is not a false positive, and is not initially motionless
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# is not a false positive, and is active
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if (
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# new object
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self.tracked_object[camera] is None
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@ -1252,7 +1287,7 @@ class PtzAutoTracker:
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and not obj.previous["false_positive"]
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and not obj.false_positive
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and not self.tracked_object_history[camera]
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and obj.obj_data["motionless_count"] == 0
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and obj.active
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):
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logger.debug(
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f"{camera}: New object: {obj.obj_data['id']} {obj.obj_data['box']} {obj.obj_data['frame_time']}"
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