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nlm_filter.py
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nlm_filter.py
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#####################################################################
# Example : mean and non-local means filter on an image from an attached
# web camera
# Author : Toby Breckon, [email protected]
# Copyright (c) 2015 School of Engineering & Computing Science,
# Copyright (c) 2019 Dept Computer Science,
# Durham University, UK
# License : LGPL - http://www.gnu.org/licenses/lgpl.html
#####################################################################
import cv2
import sys
import argparse
#####################################################################
keep_processing = True
# parse command line arguments for camera ID or video file
parser = argparse.ArgumentParser(
description='Perform ' +
sys.argv[0] +
' example operation on incoming camera/video image')
parser.add_argument(
"-c",
"--camera_to_use",
type=int,
help="specify camera to use",
default=0)
parser.add_argument(
"-r",
"--rescale",
type=float,
help="rescale image by this factor",
default=1.0)
parser.add_argument(
'video_file',
metavar='video_file',
type=str,
nargs='?',
help='specify optional video file')
args = parser.parse_args()
#####################################################################
# this function is called as a call-back everytime the trackbar is moved
# (here we just do nothing)
def nothing(x):
pass
#####################################################################
# define video capture object
try:
# to use a non-buffered camera stream (via a separate thread)
if not (args.video_file):
import camera_stream
cap = camera_stream.CameraVideoStream(use_tapi=False)
else:
cap = cv2.VideoCapture() # not needed for video files
except BaseException:
# if not then just use OpenCV default
print("INFO: camera_stream class not found - camera input may be buffered")
cap = cv2.VideoCapture()
# define display window name
window_name = "Live Camera Input" # window name
window_name2 = "Mean Filtering" # window name
window_name3 = "Non-Local Means Filtering" # window name
# if command line arguments are provided try to read video_file
# otherwise default to capture from attached H/W camera
if (((args.video_file) and (cap.open(str(args.video_file))))
or (cap.open(args.camera_to_use))):
# create window by name
cv2.namedWindow(window_name, cv2.WINDOW_AUTOSIZE)
cv2.namedWindow(window_name2, cv2.WINDOW_AUTOSIZE)
cv2.namedWindow(window_name3, cv2.WINDOW_AUTOSIZE)
# add some track bar controllers for settings
neighbourhood = 7
cv2.createTrackbar(
"neighbourhood, N",
window_name2,
neighbourhood,
25,
nothing)
search_window = 21
cv2.createTrackbar("search area, W", window_name3,
search_window, 50, nothing)
filter_strength = 10
cv2.createTrackbar(
"strength, h",
window_name3,
filter_strength,
25,
nothing)
while (keep_processing):
# if video file or camera successfully open then read frame from video
if (cap.isOpened):
ret, frame = cap.read()
# when we reach the end of the video (file) exit cleanly
if (ret == 0):
keep_processing = False
continue
# rescale if specified
if (args.rescale != 1.0):
frame = cv2.resize(
frame, (0, 0), fx=args.rescale, fy=args.rescale)
# get parameters from track bars
neighbourhood = cv2.getTrackbarPos("neighbourhood, N", window_name2)
search_window = cv2.getTrackbarPos("search area, W", window_name3)
filter_strength = cv2.getTrackbarPos("strength, h", window_name3)
# check neighbourhood is greater than 3 and odd
neighbourhood = max(3, neighbourhood)
if not (neighbourhood % 2):
neighbourhood = neighbourhood + 1
# in opencv blur() performs filtering with a NxN kernel where each
# element has a weight of 1 / (N^2) - this is mean filtering
mean_img = cv2.blur(
frame,
(neighbourhood,
neighbourhood),
borderType=cv2.BORDER_DEFAULT)
# perform NLM filtering on the same image
nlm_img = cv2.fastNlMeansDenoisingColored(
frame,
h=filter_strength,
hColor=10,
templateWindowSize=neighbourhood,
searchWindowSize=search_window)
# display image
cv2.imshow(window_name, frame)
cv2.imshow(window_name2, mean_img)
cv2.imshow(window_name3, nlm_img)
# start the event loop - essential
# cv2.waitKey() is a keyboard binding function (argument is the time in
# ms). It waits for specified milliseconds for any keyboard event.
# If you press any key in that time, the program continues.
# If 0 is passed, it waits indefinitely for a key stroke.
# (bitwise and with 0xFF to extract least significant byte of
# multi-byte response)
# wait 40ms (i.e. 1000ms / 25 fps = 40 ms)
key = cv2.waitKey(40) & 0xFF
# It can also be set to detect specific key strokes by recording which
# key is pressed
# e.g. if user presses "x" then exit
if (key == ord('x')):
keep_processing = False
# close all windows
cv2.destroyAllWindows()
else:
print("No usable camera connected.")
#####################################################################