update benchmark script to mirror actual frigate use

This commit is contained in:
Blake Blackshear 2020-03-01 07:16:56 -06:00
parent a5bef89123
commit 1734c0569a

View File

@ -1,18 +1,79 @@
import statistics
import os
from statistics import mean
import multiprocessing as mp
import numpy as np
import time
from frigate.edgetpu import ObjectDetector
import datetime
from frigate.edgetpu import ObjectDetector, EdgeTPUProcess, RemoteObjectDetector, load_labels
object_detector = ObjectDetector()
my_frame = np.expand_dims(np.full((300,300,3), 1, np.uint8), axis=0)
labels = load_labels('/labelmap.txt')
frame = np.zeros((300,300,3), np.uint8)
input_frame = np.expand_dims(frame, axis=0)
######
# Minimal same process runner
######
# object_detector = ObjectDetector()
# tensor_input = np.expand_dims(np.full((300,300,3), 0, np.uint8), axis=0)
detection_times = []
# start = datetime.datetime.now().timestamp()
for x in range(0, 100):
start = time.monotonic()
object_detector.detect_raw(input_frame)
detection_times.append(time.monotonic()-start)
# frame_times = []
# for x in range(0, 1000):
# start_frame = datetime.datetime.now().timestamp()
print(f"Average inference time: {statistics.mean(detection_times)*1000:.2f}ms")
# tensor_input[:] = my_frame
# detections = object_detector.detect_raw(tensor_input)
# parsed_detections = []
# for d in detections:
# if d[1] < 0.4:
# break
# parsed_detections.append((
# labels[int(d[0])],
# float(d[1]),
# (d[2], d[3], d[4], d[5])
# ))
# frame_times.append(datetime.datetime.now().timestamp()-start_frame)
# duration = datetime.datetime.now().timestamp()-start
# print(f"Processed for {duration:.2f} seconds.")
# print(f"Average frame processing time: {mean(frame_times)*1000:.2f}ms")
######
# Separate process runner
######
def start(id, num_detections, detection_queue):
object_detector = RemoteObjectDetector(str(id), '/labelmap.txt', detection_queue)
start = datetime.datetime.now().timestamp()
frame_times = []
for x in range(0, num_detections):
start_frame = datetime.datetime.now().timestamp()
detections = object_detector.detect(my_frame)
frame_times.append(datetime.datetime.now().timestamp()-start_frame)
duration = datetime.datetime.now().timestamp()-start
print(f"{id} - Processed for {duration:.2f} seconds.")
print(f"{id} - Average frame processing time: {mean(frame_times)*1000:.2f}ms")
edgetpu_process = EdgeTPUProcess()
# start(1, 1000, edgetpu_process.detect_lock, edgetpu_process.detect_ready, edgetpu_process.frame_ready)
####
# Multiple camera processes
####
camera_processes = []
for x in range(0, 10):
camera_process = mp.Process(target=start, args=(x, 100, edgetpu_process.detection_queue))
camera_process.daemon = True
camera_processes.append(camera_process)
start = datetime.datetime.now().timestamp()
for p in camera_processes:
p.start()
for p in camera_processes:
p.join()
duration = datetime.datetime.now().timestamp()-start
print(f"Total - Processed for {duration:.2f} seconds.")