Skip to main content

A simple and rapid image processing toolkit

Project description

Quick-Image: A simple image processing toolkit.

Installation

    pip install quick-image

Examples

  1. Basic Usage
from quick_image import *

# quick_download_image(
# pic_url='https://pixnio.com/free-images/2022/07/21/2022-07-21-08-38-18-1350x900.jpg',
# save_path='flower.jpg')

# quick_show_image("flower.jpg")

# quick_show_image_by_grayscale("flower.jpg")

# quick_show_image_by_grayscale2("flower.jpg")

# quick_show_image_gray("flower.jpg")

# quick_convert_12bit_gray("flower.jpg","flower_12bit.jpg")

# quick_show_canny("flower.jpg")

# quick_replace_image_color("flower.jpg",show=True)

# quick_save_edges("flower.jpg","flower_edges.jpg",t=50)

# quick_filter_by_dist("flower.jpg",max_dist=1000)

'''
list_points,list_colors=quick_pick_image_color("flower.jpg","points.csv" ,"colors.csv")
print(list_points)
print(list_colors)
'''

# quick_remove_pix_color("flower.jpg",target_color= [203,152,125],save_path='flower_removed_color.jpg')

quick_remove_pix_color_by_range("flower.jpg",lower_color= np.array([100, 150, 0]),
                                upper_color=np.array([140, 255, 255]),show=True)
  1. Remove noise
from quick_image import *
from quick_image.quick_image_similarity_measures import *

quick_remove_noise1(image_path="flower.jpg",save_path="test4/output1.jpg")

# quick_remove_noise2(image_path="flower.jpg",save_path="test4/output2.jpg",min_size=5)
score_ssim = ssim('flower.jpg', 'test4/output1.jpg')
score_dvsim = dvsim('flower.jpg', 'test4/output1.jpg')
print(score_ssim)
print(score_dvsim)
  1. Estimate color similarity
from quick_image import *
from skimage import io
'''
    find image color similarity
'''
# Example 1:
img_rgb = io.imread('flower.jpg')
green = [203,152,125]
s=get_pct_color(img_rgb, green, 10)
print("s=",s)

# Example 2:
base=[35,103,239]
test_color=[153,0,0]
test_color1=[0,128,255]

print(quick_color_similarity(base,test_color))
print(quick_color_similarity(base,test_color1))
  1. Edge detection
from quick_image.quick_image_processing import *
import time
time_cost={}
if __name__=="__main__":
    image_path="flower.jpg"

    # coords = load_polygon_file(f'datasets/areas/{gender}/{body_part}_polygon_area.pickle')
    file_name="flower.jpg"

    start=time.time()
    # Using Canny algorithm (86)
    detect_edges(img_path=image_path,save_path='test3_output/'+file_name)
    time1=time.time()
    # Using Canny algorithm with polygons
    detect_edges_with_polygon(img_path=image_path, save_path='test3_output/' + file_name)
    time2=time.time()
    # Using single-color isolate algorithm
    isolate_image(image_path=image_path,save_path='test3_output/'+file_name)
    time3=time.time()
    # Using multi-color isolate algorithm
    isolate_image2(image_path=image_path, save_main_color='test3_output/' + file_name, 
                   save_path='test3_output/' + file_name)
    time4=time.time()
    time_cost["canny"]=time1-start
    time_cost["canny_polygon"]=time2-time1
    time_cost["isolate1"]=time3-time2
    time_cost["isolate2"]=time4-time3
    print("Method\tTime cost")
    for k in time_cost:
        print(f"{k}\t{round(time_cost[k],4)}")

License

The quick-image toolkit is provided by Donghua Chen with MIT License.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

quick-image-0.0.1a0.tar.gz (22.2 kB view hashes)

Uploaded Source

Built Distribution

quick_image-0.0.1a0-py3-none-any.whl (22.0 kB view hashes)

Uploaded Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page