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Make stationary detection more resilient to inaccurate boxes (#10597)
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@ -17,12 +17,13 @@ from frigate.ptz.autotrack import PtzMotionEstimator
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from frigate.track import ObjectTracker
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from frigate.types import PTZMetricsTypes
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from frigate.util.image import intersection_over_union
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from frigate.util.object import average_boxes
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from frigate.util.object import average_boxes, median_of_boxes
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logger = logging.getLogger(__name__)
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THRESHOLD_STATIONARY_IOU_AVERAGE = 0.6
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THRESHOLD_ACTIVE_IOU = 0.2
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THRESHOLD_STATIONARY_IOU = 0.6
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MAX_STATIONARY_HISTORY = 10
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@ -146,6 +147,7 @@ class NorfairTracker(ObjectTracker):
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# tracks the current position of the object based on the last N bounding boxes
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# returns False if the object has moved outside its previous position
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def update_position(self, id: str, box: list[int, int, int, int]):
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xmin, ymin, xmax, ymax = box
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position = self.positions[id]
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self.stationary_box_history[id].append(box)
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@ -158,11 +160,9 @@ class NorfairTracker(ObjectTracker):
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box, average_boxes(self.stationary_box_history[id])
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)
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xmin, ymin, xmax, ymax = box
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# if the iou drops below the threshold
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# assume the object has moved to a new position and reset the computed box
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if avg_iou < THRESHOLD_STATIONARY_IOU_AVERAGE:
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# object has minimal or zero iou
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# assume object is active
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if avg_iou < THRESHOLD_ACTIVE_IOU:
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self.positions[id] = {
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"xmins": [xmin],
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"ymins": [ymin],
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@ -175,6 +175,33 @@ class NorfairTracker(ObjectTracker):
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}
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return False
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# object has iou below threshold, check median to reduce outliers
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if avg_iou < THRESHOLD_STATIONARY_IOU:
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median_iou = intersection_over_union(
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(
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position["xmin"],
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position["ymin"],
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position["xmax"],
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position["ymax"],
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),
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median_of_boxes(self.stationary_box_history[id]),
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)
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# if the median iou drops below the threshold
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# assume object is no longer stationary
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if median_iou < THRESHOLD_STATIONARY_IOU:
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self.positions[id] = {
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"xmins": [xmin],
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"ymins": [ymin],
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"xmaxs": [xmax],
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"ymaxs": [ymax],
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"xmin": xmin,
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"ymin": ymin,
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"xmax": xmax,
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"ymax": ymax,
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}
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return False
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# if there are less than 10 entries for the position, add the bounding box
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# and recompute the position box
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if len(position["xmins"]) < 10:
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@ -339,6 +339,12 @@ def average_boxes(boxes: list[list[int, int, int, int]]) -> list[int, int, int,
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return [np.mean(x_mins), np.mean(y_mins), np.mean(x_max), np.mean(y_max)]
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def median_of_boxes(boxes: list[list[int, int, int, int]]) -> list[int, int, int, int]:
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"""Return a box that is the median of a list of boxes."""
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sorted_boxes = sorted(boxes, key=lambda x: area(x))
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return sorted_boxes[int(len(sorted_boxes) / 2.0)]
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def intersects_any(box_a, boxes):
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for box in boxes:
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if box_overlaps(box_a, box):
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