blakeblackshear.frigate/frigate/video.py

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import os
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import time
import datetime
import cv2
import queue
import threading
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import ctypes
import multiprocessing as mp
import subprocess as sp
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import numpy as np
import prctl
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import itertools
from collections import defaultdict
from . util import tonumpyarray, LABELS, draw_box_with_label, calculate_region, EventsPerSecond
from . object_detection import RegionPrepper, RegionRequester
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from . objects import ObjectCleaner, BestFrames, DetectedObjectsProcessor, RegionRefiner, ObjectTracker
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from . mqtt import MqttObjectPublisher
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# Stores 2 seconds worth of frames so they can be used for other threads
class FrameTracker(threading.Thread):
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def __init__(self, shared_frame, frame_time, frame_ready, frame_lock, recent_frames):
threading.Thread.__init__(self)
self.shared_frame = shared_frame
self.frame_time = frame_time
self.frame_ready = frame_ready
self.frame_lock = frame_lock
self.recent_frames = recent_frames
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def run(self):
prctl.set_name("FrameTracker")
while True:
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# wait for a frame
with self.frame_ready:
self.frame_ready.wait()
now = datetime.datetime.now().timestamp()
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# delete any old frames
stored_frame_times = list(self.recent_frames.keys())
for k in stored_frame_times:
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if (now - k) > 10:
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del self.recent_frames[k]
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def get_frame_shape(source):
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# capture a single frame and check the frame shape so the correct array
# size can be allocated in memory
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video = cv2.VideoCapture(source)
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ret, frame = video.read()
frame_shape = frame.shape
video.release()
return frame_shape
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def get_ffmpeg_input(ffmpeg_input):
frigate_vars = {k: v for k, v in os.environ.items() if k.startswith('FRIGATE_')}
return ffmpeg_input.format(**frigate_vars)
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class CameraWatchdog(threading.Thread):
def __init__(self, camera):
threading.Thread.__init__(self)
self.camera = camera
def run(self):
prctl.set_name("CameraWatchdog")
while True:
# wait a bit before checking
time.sleep(10)
if (datetime.datetime.now().timestamp() - self.camera.frame_time.value) > 300:
print("last frame is more than 5 minutes old, restarting camera capture...")
self.camera.start_or_restart_capture()
time.sleep(5)
# Thread to read the stdout of the ffmpeg process and update the current frame
class CameraCapture(threading.Thread):
def __init__(self, camera):
threading.Thread.__init__(self)
self.camera = camera
def run(self):
prctl.set_name("CameraCapture")
frame_num = 0
while True:
if self.camera.ffmpeg_process.poll() != None:
print("ffmpeg process is not running. exiting capture thread...")
break
raw_image = self.camera.ffmpeg_process.stdout.read(self.camera.frame_size)
if len(raw_image) == 0:
print("ffmpeg didnt return a frame. something is wrong. exiting capture thread...")
break
frame_num += 1
if (frame_num % self.camera.take_frame) != 0:
continue
with self.camera.frame_lock:
self.camera.frame_time.value = datetime.datetime.now().timestamp()
self.camera.current_frame[:] = (
np
.frombuffer(raw_image, np.uint8)
.reshape(self.camera.frame_shape)
)
self.camera.frame_cache[self.camera.frame_time.value] = self.camera.current_frame.copy()
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self.camera.frame_queue.put(self.camera.frame_time.value)
# Notify with the condition that a new frame is ready
with self.camera.frame_ready:
self.camera.frame_ready.notify_all()
self.camera.fps.update()
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class Camera:
def __init__(self, name, ffmpeg_config, global_objects_config, config, prepped_frame_queue, mqtt_client, mqtt_prefix):
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self.name = name
self.config = config
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self.detected_objects = defaultdict(lambda: [])
self.tracked_objects = []
self.frame_cache = {}
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self.last_processed_frame = None
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# queue for re-assembling frames in order
self.frame_queue = queue.Queue()
# track how many regions have been requested for a frame so we know when a frame is complete
self.regions_in_process = {}
# Lock to control access
self.regions_in_process_lock = mp.Lock()
self.finished_frame_queue = queue.Queue()
self.refined_frame_queue = queue.Queue()
self.ffmpeg = config.get('ffmpeg', {})
self.ffmpeg_input = get_ffmpeg_input(self.ffmpeg['input'])
self.ffmpeg_global_args = self.ffmpeg.get('global_args', ffmpeg_config['global_args'])
self.ffmpeg_hwaccel_args = self.ffmpeg.get('hwaccel_args', ffmpeg_config['hwaccel_args'])
self.ffmpeg_input_args = self.ffmpeg.get('input_args', ffmpeg_config['input_args'])
self.ffmpeg_output_args = self.ffmpeg.get('output_args', ffmpeg_config['output_args'])
camera_objects_config = config.get('objects', {})
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self.take_frame = self.config.get('take_frame', 1)
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self.regions = self.config['regions']
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self.frame_shape = get_frame_shape(self.ffmpeg_input)
self.frame_size = self.frame_shape[0] * self.frame_shape[1] * self.frame_shape[2]
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self.mqtt_client = mqtt_client
self.mqtt_topic_prefix = '{}/{}'.format(mqtt_prefix, self.name)
# create a numpy array for the current frame in initialize to zeros
self.current_frame = np.zeros(self.frame_shape, np.uint8)
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# create shared value for storing the frame_time
self.frame_time = mp.Value('d', 0.0)
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# Lock to control access to the frame
self.frame_lock = mp.Lock()
# Condition for notifying that a new frame is ready
self.frame_ready = mp.Condition()
# Condition for notifying that objects were parsed
self.objects_parsed = mp.Condition()
# Queue for prepped frames, max size set to (number of regions * 5)
max_queue_size = len(self.config['regions'])*5
self.resize_queue = queue.Queue(max_queue_size)
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# Queue for raw detected objects
self.detected_objects_queue = queue.Queue()
self.detected_objects_processor = DetectedObjectsProcessor(self)
self.detected_objects_processor.start()
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# initialize the frame cache
self.cached_frame_with_objects = {
'frame_bytes': [],
'frame_time': 0
}
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self.ffmpeg_process = None
self.capture_thread = None
self.fps = EventsPerSecond()
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# for each region, merge the object config
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self.detection_prep_threads = []
for region in self.config['regions']:
region_objects = region.get('objects', {})
# build objects config for region
objects_with_config = set().union(global_objects_config.keys(), camera_objects_config.keys(), region_objects.keys())
merged_objects_config = defaultdict(lambda: {})
for obj in objects_with_config:
merged_objects_config[obj] = {**global_objects_config.get(obj,{}), **camera_objects_config.get(obj, {}), **region_objects.get(obj, {})}
region['objects'] = merged_objects_config
# start a thread to queue resize requests for regions
self.region_requester = RegionRequester(self)
self.region_requester.start()
# start a thread to cache recent frames for processing
self.frame_tracker = FrameTracker(self.current_frame, self.frame_time,
self.frame_ready, self.frame_lock, self.frame_cache)
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self.frame_tracker.start()
# start a thread to resize regions
self.region_prepper = RegionPrepper(self.frame_cache, self.resize_queue, prepped_frame_queue)
self.region_prepper.start()
# start a thread to store the highest scoring recent frames for monitored object types
self.best_frames = BestFrames(self.objects_parsed, self.frame_cache, self.detected_objects)
self.best_frames.start()
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# start a thread to expire objects from the detected objects list
self.object_cleaner = ObjectCleaner(self.objects_parsed, self.detected_objects)
self.object_cleaner.start()
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# start a thread to refine regions when objects are clipped
self.dynamic_region_fps = EventsPerSecond()
self.region_refiner = RegionRefiner(self)
self.region_refiner.start()
self.dynamic_region_fps.start()
# start a thread to track objects
self.object_tracker = ObjectTracker(self, 10)
self.object_tracker.start()
# start a thread to publish object scores
mqtt_publisher = MqttObjectPublisher(self.mqtt_client, self.mqtt_topic_prefix, self.objects_parsed, self.detected_objects, self.best_frames)
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mqtt_publisher.start()
# create a watchdog thread for capture process
self.watchdog = CameraWatchdog(self)
# load in the mask for object detection
if 'mask' in self.config:
self.mask = cv2.imread("/config/{}".format(self.config['mask']), cv2.IMREAD_GRAYSCALE)
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else:
self.mask = None
if self.mask is None:
self.mask = np.zeros((self.frame_shape[0], self.frame_shape[1], 1), np.uint8)
self.mask[:] = 255
def start_or_restart_capture(self):
if not self.ffmpeg_process is None:
print("Terminating the existing ffmpeg process...")
self.ffmpeg_process.terminate()
try:
print("Waiting for ffmpeg to exit gracefully...")
self.ffmpeg_process.wait(timeout=30)
except sp.TimeoutExpired:
print("FFmpeg didnt exit. Force killing...")
self.ffmpeg_process.kill()
self.ffmpeg_process.wait()
print("Waiting for the capture thread to exit...")
self.capture_thread.join()
self.ffmpeg_process = None
self.capture_thread = None
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# create the process to capture frames from the input stream and store in a shared array
print("Creating a new ffmpeg process...")
self.start_ffmpeg()
print("Creating a new capture thread...")
self.capture_thread = CameraCapture(self)
print("Starting a new capture thread...")
self.capture_thread.start()
self.fps.start()
def start_ffmpeg(self):
ffmpeg_cmd = (['ffmpeg'] +
self.ffmpeg_global_args +
self.ffmpeg_hwaccel_args +
self.ffmpeg_input_args +
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['-i', self.ffmpeg_input] +
self.ffmpeg_output_args +
['pipe:'])
print(" ".join(ffmpeg_cmd))
self.ffmpeg_process = sp.Popen(ffmpeg_cmd, stdout = sp.PIPE, bufsize=self.frame_size)
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def start(self):
self.start_or_restart_capture()
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# start the object detection prep threads
for detection_prep_thread in self.detection_prep_threads:
detection_prep_thread.start()
self.watchdog.start()
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def join(self):
self.capture_thread.join()
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def get_capture_pid(self):
return self.ffmpeg_process.pid
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def get_best(self, label):
return self.best_frames.best_frames.get(label)
def stats(self):
return {
'camera_fps': self.fps.eps(60),
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'resize_queue': self.resize_queue.qsize(),
'frame_queue': self.frame_queue.qsize(),
'finished_frame_queue': self.finished_frame_queue.qsize(),
'refined_frame_queue': self.refined_frame_queue.qsize(),
'regions_in_process': self.regions_in_process,
'dynamic_regions_per_sec': self.dynamic_region_fps.eps()
}
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def frame_with_objects(self, frame_time):
frame = self.frame_cache[frame_time].copy()
for region in self.regions:
color = (255,255,255)
cv2.rectangle(frame, (region['x_offset'], region['y_offset']),
(region['x_offset']+region['size'], region['y_offset']+region['size']),
color, 2)
# draw the bounding boxes on the screen
for obj in self.detected_objects[frame_time]:
# for obj in detected_objects[frame_time]:
cv2.rectangle(frame, (obj['region']['xmin'], obj['region']['ymin']),
(obj['region']['xmax'], obj['region']['ymax']),
(0,255,0), 1)
draw_box_with_label(frame, obj['box']['xmin'], obj['box']['ymin'], obj['box']['xmax'], obj['box']['ymax'], obj['name'], f"{int(obj['score']*100)}% {obj['area']} {obj['clipped']}")
# print a timestamp
time_to_show = datetime.datetime.fromtimestamp(frame_time).strftime("%m/%d/%Y %H:%M:%S")
cv2.putText(frame, time_to_show, (10, 30), cv2.FONT_HERSHEY_SIMPLEX, fontScale=.8, color=(255, 255, 255), thickness=2)
# print fps
cv2.putText(frame, str(self.fps.eps())+'FPS', (10, 60), cv2.FONT_HERSHEY_SIMPLEX, fontScale=.8, color=(255, 255, 255), thickness=2)
# convert to BGR
frame = cv2.cvtColor(frame, cv2.COLOR_RGB2BGR)
# encode the image into a jpg
ret, jpg = cv2.imencode('.jpg', frame)
return jpg.tobytes()
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def get_current_frame_with_objects(self):
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frame_time = self.last_processed_frame
if frame_time == self.cached_frame_with_objects['frame_time']:
return self.cached_frame_with_objects['frame_bytes']
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frame_bytes = self.frame_with_objects(frame_time)
self.cached_frame_with_objects = {
'frame_bytes': frame_bytes,
'frame_time': frame_time
}
return frame_bytes
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