mirror of
https://github.com/blakeblackshear/frigate.git
synced 2024-11-21 19:07:46 +01:00
420 lines
18 KiB
Python
420 lines
18 KiB
Python
import time
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import datetime
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import threading
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import cv2
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import prctl
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import itertools
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import numpy as np
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from scipy.spatial import distance as dist
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from frigate.util import draw_box_with_label, LABELS, compute_intersection_rectangle, compute_intersection_over_union, calculate_region
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class ObjectCleaner(threading.Thread):
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def __init__(self, objects_parsed, detected_objects):
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threading.Thread.__init__(self)
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self._objects_parsed = objects_parsed
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self._detected_objects = detected_objects
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def run(self):
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prctl.set_name("ObjectCleaner")
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while True:
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# wait a bit before checking for expired frames
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time.sleep(0.2)
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# expire the objects that are more than 1 second old
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now = datetime.datetime.now().timestamp()
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# look for the first object found within the last second
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# (newest objects are appended to the end)
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detected_objects = self._detected_objects.copy()
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objects_removed = False
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for frame_time in detected_objects.keys():
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if now-frame_time>2:
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del self._detected_objects[frame_time]
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objects_removed = True
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if objects_removed:
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# notify that parsed objects were changed
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with self._objects_parsed:
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self._objects_parsed.notify_all()
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class DetectedObjectsProcessor(threading.Thread):
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def __init__(self, camera):
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threading.Thread.__init__(self)
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self.camera = camera
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def run(self):
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prctl.set_name(self.__class__.__name__)
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while True:
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frame = self.camera.detected_objects_queue.get()
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objects = frame['detected_objects']
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for raw_obj in objects:
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name = str(LABELS[raw_obj.label_id])
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if not name in self.camera.objects_to_track:
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continue
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obj = {
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'name': name,
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'score': float(raw_obj.score),
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'box': {
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'xmin': int((raw_obj.bounding_box[0][0] * frame['size']) + frame['x_offset']),
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'ymin': int((raw_obj.bounding_box[0][1] * frame['size']) + frame['y_offset']),
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'xmax': int((raw_obj.bounding_box[1][0] * frame['size']) + frame['x_offset']),
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'ymax': int((raw_obj.bounding_box[1][1] * frame['size']) + frame['y_offset'])
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},
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'region': {
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'xmin': frame['x_offset'],
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'ymin': frame['y_offset'],
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'xmax': frame['x_offset']+frame['size'],
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'ymax': frame['y_offset']+frame['size']
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},
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'frame_time': frame['frame_time'],
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'region_id': frame['region_id']
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}
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# if the object is within 5 pixels of the region border, and the region is not on the edge
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# consider the object to be clipped
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obj['clipped'] = False
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if ((obj['region']['xmin'] > 5 and obj['box']['xmin']-obj['region']['xmin'] <= 5) or
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(obj['region']['ymin'] > 5 and obj['box']['ymin']-obj['region']['ymin'] <= 5) or
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(self.camera.frame_shape[1]-obj['region']['xmax'] > 5 and obj['region']['xmax']-obj['box']['xmax'] <= 5) or
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(self.camera.frame_shape[0]-obj['region']['ymax'] > 5 and obj['region']['ymax']-obj['box']['ymax'] <= 5)):
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obj['clipped'] = True
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# Compute the area
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obj['area'] = (obj['box']['xmax']-obj['box']['xmin'])*(obj['box']['ymax']-obj['box']['ymin'])
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self.camera.detected_objects[frame['frame_time']].append(obj)
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with self.camera.regions_in_process_lock:
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self.camera.regions_in_process[frame['frame_time']] -= 1
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# print(f"{frame['frame_time']} remaining regions {self.camera.regions_in_process[frame['frame_time']]}")
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if self.camera.regions_in_process[frame['frame_time']] == 0:
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del self.camera.regions_in_process[frame['frame_time']]
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# print(f"{frame['frame_time']} no remaining regions")
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self.camera.finished_frame_queue.put(frame['frame_time'])
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# Thread that checks finished frames for clipped objects and sends back
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# for processing if needed
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class RegionRefiner(threading.Thread):
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def __init__(self, camera):
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threading.Thread.__init__(self)
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self.camera = camera
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def run(self):
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prctl.set_name(self.__class__.__name__)
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while True:
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frame_time = self.camera.finished_frame_queue.get()
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detected_objects = self.camera.detected_objects[frame_time].copy()
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# print(f"{frame_time} finished")
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# apply non-maxima suppression to suppress weak, overlapping bounding boxes
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boxes = [(o['box']['xmin'], o['box']['ymin'], o['box']['xmax']-o['box']['xmin'], o['box']['ymax']-o['box']['ymin'])
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for o in detected_objects]
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confidences = [o['score'] for o in detected_objects]
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idxs = cv2.dnn.NMSBoxes(boxes, confidences, 0.5, 0.4)
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# print(f"{frame_time} - NMS reduced objects from {len(detected_objects)} to {len(idxs)}")
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look_again = False
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# get selected objects
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selected_objects = []
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for index in idxs:
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obj = detected_objects[index[0]]
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selected_objects.append(obj)
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if obj['clipped']:
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box = obj['box']
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# calculate a new region that will hopefully get the entire object
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(size, x_offset, y_offset) = calculate_region(self.camera.frame_shape,
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box['xmin'], box['ymin'],
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box['xmax'], box['ymax'])
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# print(f"{frame_time} new region: {size} {x_offset} {y_offset}")
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with self.camera.regions_in_process_lock:
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if not frame_time in self.camera.regions_in_process:
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self.camera.regions_in_process[frame_time] = 1
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else:
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self.camera.regions_in_process[frame_time] += 1
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# add it to the queue
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self.camera.resize_queue.put({
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'camera_name': self.camera.name,
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'frame_time': frame_time,
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'region_id': -1,
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'size': size,
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'x_offset': x_offset,
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'y_offset': y_offset
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})
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self.camera.dynamic_region_fps.update()
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look_again = True
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# if we are looking again, then this frame is not ready for processing
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if look_again:
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# remove the clipped objects
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self.camera.detected_objects[frame_time] = [o for o in selected_objects if not o['clipped']]
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continue
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# filter objects based on camera settings
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selected_objects = [o for o in selected_objects if not self.filtered(o)]
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self.camera.detected_objects[frame_time] = selected_objects
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with self.camera.objects_parsed:
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self.camera.objects_parsed.notify_all()
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# print(f"{frame_time} is actually finished")
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# keep adding frames to the refined queue as long as they are finished
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with self.camera.regions_in_process_lock:
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while self.camera.frame_queue.qsize() > 0 and self.camera.frame_queue.queue[0] not in self.camera.regions_in_process:
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self.camera.last_processed_frame = self.camera.frame_queue.get()
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self.camera.refined_frame_queue.put(self.camera.last_processed_frame)
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def filtered(self, obj):
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object_name = obj['name']
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if object_name in self.camera.object_filters:
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obj_settings = self.camera.object_filters[object_name]
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# if the min area is larger than the
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# detected object, don't add it to detected objects
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if obj_settings.get('min_area',-1) > obj['area']:
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return True
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# if the detected object is larger than the
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# max area, don't add it to detected objects
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if obj_settings.get('max_area', self.camera.frame_shape[0]*self.camera.frame_shape[1]) < obj['area']:
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return True
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# if the score is lower than the threshold, skip
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if obj_settings.get('threshold', 0) > obj['score']:
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return True
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# compute the coordinates of the object and make sure
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# the location isnt outside the bounds of the image (can happen from rounding)
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y_location = min(int(obj['ymax']), len(self.camera.mask)-1)
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x_location = min(int((obj['xmax']-obj['xmin'])/2.0)+obj['xmin'], len(self.camera.mask[0])-1)
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# if the object is in a masked location, don't add it to detected objects
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if self.camera.mask[y_location][x_location] == [0]:
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return True
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return False
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def has_overlap(self, new_obj, obj, overlap=.7):
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# compute intersection rectangle with existing object and new objects region
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existing_obj_current_region = compute_intersection_rectangle(obj['box'], new_obj['region'])
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# compute intersection rectangle with new object and existing objects region
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new_obj_existing_region = compute_intersection_rectangle(new_obj['box'], obj['region'])
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# compute iou for the two intersection rectangles that were just computed
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iou = compute_intersection_over_union(existing_obj_current_region, new_obj_existing_region)
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# if intersection is greater than overlap
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if iou > overlap:
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return True
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else:
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return False
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def find_group(self, new_obj, groups):
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for index, group in enumerate(groups):
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for obj in group:
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if self.has_overlap(new_obj, obj):
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return index
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return None
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class ObjectTracker(threading.Thread):
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def __init__(self, camera, max_disappeared):
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threading.Thread.__init__(self)
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self.camera = camera
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self.tracked_objects = {}
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self.disappeared = {}
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self.max_disappeared = max_disappeared
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def run(self):
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prctl.set_name(self.__class__.__name__)
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while True:
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frame_time = self.camera.refined_frame_queue.get()
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self.match_and_update(self.camera.detected_objects[frame_time])
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# f = open(f"/debug/{str(frame_time)}.jpg", 'wb')
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# f.write(self.camera.frame_with_objects(frame_time))
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# f.close()
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def register(self, index, obj):
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id = f"{str(obj['frame_time'])}-{index}"
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self.tracked_objects[id] = obj
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self.disappeared[id] = 0
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def deregister(self, id):
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del self.disappeared[id]
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del self.tracked_objects[id]
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def update(self, id, new_obj):
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self.tracked_objects[id]['centroid'] = new_obj['centroid']
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self.tracked_objects[id]['box'] = new_obj['box']
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self.tracked_objects[id]['region'] = new_obj['region']
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self.tracked_objects[id]['score'] = new_obj['score']
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self.tracked_objects[id]['name'] = new_obj['name']
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# TODO: am i missing anything? history?
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def match_and_update(self, new_objects):
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# check to see if the list of input bounding box rectangles
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# is empty
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if len(new_objects) == 0:
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# loop over any existing tracked objects and mark them
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# as disappeared
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for objectID in list(self.disappeared.keys()):
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self.disappeared[objectID] += 1
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# if we have reached a maximum number of consecutive
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# frames where a given object has been marked as
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# missing, deregister it
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if self.disappeared[objectID] > self.max_disappeared:
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self.deregister(objectID)
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# return early as there are no centroids or tracking info
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# to update
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return
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# compute centroids
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for obj in new_objects:
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centroid_x = int((obj['box']['xmin']+obj['box']['xmax']) / 2.0)
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centroid_y = int((obj['box']['ymin']+obj['box']['ymax']) / 2.0)
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obj['centroid'] = (centroid_x, centroid_y)
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if len(self.tracked_objects) == 0:
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for index, obj in enumerate(new_objects):
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self.register(index, obj)
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return
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new_centroids = np.array([o['centroid'] for o in new_objects])
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current_ids = list(self.tracked_objects.keys())
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current_centroids = np.array([o['centroid'] for o in self.tracked_objects.values()])
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# compute the distance between each pair of tracked
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# centroids and new centroids, respectively -- our
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# goal will be to match each new centroid to an existing
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# object centroid
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D = dist.cdist(current_centroids, new_centroids)
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# in order to perform this matching we must (1) find the
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# smallest value in each row and then (2) sort the row
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# indexes based on their minimum values so that the row
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# with the smallest value is at the *front* of the index
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# list
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rows = D.min(axis=1).argsort()
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# next, we perform a similar process on the columns by
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# finding the smallest value in each column and then
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# sorting using the previously computed row index list
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cols = D.argmin(axis=1)[rows]
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# in order to determine if we need to update, register,
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# or deregister an object we need to keep track of which
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# of the rows and column indexes we have already examined
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usedRows = set()
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usedCols = set()
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# loop over the combination of the (row, column) index
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# tuples
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for (row, col) in zip(rows, cols):
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# if we have already examined either the row or
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# column value before, ignore it
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# val
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if row in usedRows or col in usedCols:
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continue
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# otherwise, grab the object ID for the current row,
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# set its new centroid, and reset the disappeared
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# counter
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objectID = current_ids[row]
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self.update(objectID, new_objects[col])
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self.disappeared[objectID] = 0
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# indicate that we have examined each of the row and
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# column indexes, respectively
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usedRows.add(row)
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usedCols.add(col)
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# compute both the row and column index we have NOT yet
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# examined
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unusedRows = set(range(0, D.shape[0])).difference(usedRows)
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unusedCols = set(range(0, D.shape[1])).difference(usedCols)
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# in the event that the number of object centroids is
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# equal or greater than the number of input centroids
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# we need to check and see if some of these objects have
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# potentially disappeared
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if D.shape[0] >= D.shape[1]:
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# loop over the unused row indexes
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for row in unusedRows:
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# grab the object ID for the corresponding row
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# index and increment the disappeared counter
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objectID = current_ids[row]
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self.disappeared[objectID] += 1
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# check to see if the number of consecutive
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# frames the object has been marked "disappeared"
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# for warrants deregistering the object
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if self.disappeared[objectID] > self.max_disappeared:
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self.deregister(objectID)
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# otherwise, if the number of input centroids is greater
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# than the number of existing object centroids we need to
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# register each new input centroid as a trackable object
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else:
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for col in unusedCols:
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self.register(col, new_objects[col])
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# Maintains the frame and object with the highest score
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class BestFrames(threading.Thread):
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def __init__(self, objects_parsed, recent_frames, detected_objects):
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threading.Thread.__init__(self)
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self.objects_parsed = objects_parsed
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self.recent_frames = recent_frames
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self.detected_objects = detected_objects
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self.best_objects = {}
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self.best_frames = {}
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def run(self):
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prctl.set_name("BestFrames")
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while True:
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# wait until objects have been parsed
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with self.objects_parsed:
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self.objects_parsed.wait()
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# make a copy of detected objects
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detected_objects = self.detected_objects.copy()
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for obj in itertools.chain.from_iterable(detected_objects.values()):
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if obj['name'] in self.best_objects:
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now = datetime.datetime.now().timestamp()
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# if the object is a higher score than the current best score
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# or the current object is more than 1 minute old, use the new object
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if obj['score'] > self.best_objects[obj['name']]['score'] or (now - self.best_objects[obj['name']]['frame_time']) > 60:
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self.best_objects[obj['name']] = obj
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else:
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self.best_objects[obj['name']] = obj
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# make a copy of the recent frames
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recent_frames = self.recent_frames.copy()
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for name, obj in self.best_objects.items():
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if obj['frame_time'] in recent_frames:
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best_frame = recent_frames[obj['frame_time']] #, np.zeros((720,1280,3), np.uint8))
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draw_box_with_label(best_frame, obj['box']['xmin'], obj['box']['ymin'],
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obj['box']['xmax'], obj['box']['ymax'], obj['name'], f"{int(obj['score']*100)}% {obj['area']}")
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# print a timestamp
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time_to_show = datetime.datetime.fromtimestamp(obj['frame_time']).strftime("%m/%d/%Y %H:%M:%S")
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cv2.putText(best_frame, time_to_show, (10, 30), cv2.FONT_HERSHEY_SIMPLEX, fontScale=.8, color=(255, 255, 255), thickness=2)
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self.best_frames[name] = best_frame |