mini-photoshop / app.py
Ghilth's picture
Add application file
b60d29b
raw
history blame
4.61 kB
import gradio as gr
from PIL import Image, ImageFilter
import numpy as np
import cv2
from skimage import morphology
import matplotlib.pyplot as plt
import io
# Images manipulation functions
#Image loading
def load_image(image_path):
'''Load image with PIL'''
image=Image.open(image_path)
return image
#Negative APPLYING
def apply_negative(image):
'''
input: PIL Image
output : PIL Image
Image loaded with PIL is turned to numpy format. Then, we calculate the new pixels values and image gotten is return to PIL format'''
img_np = np.array(image)
negative = 255 - img_np
return Image.fromarray(negative)
#binarization
def binarize_image(image, threshold_value):
'''
inputs : PIL image ; threshold_value
output : PIL image
Image in PIL format is converted into grayscale format and then into numpy format.Now we make a binary threshold base on threshold value.
Image gotten is returned to Image format'''
img_np = np.array(image.convert('L'))
_, binary = cv2.threshold(img_np, threshold_value, 255, cv2.THRESH_BINARY)
return Image.fromarray(binary)
#image resizing
def resize_image(image, width, height):
'''Resizing is doing by using PIL resizing method'''
return image.resize((width, height))
#image rotation
def rotate_image(image, angle):
'''Rotation is doing by using PIL rotation method'''
return image.rotate(angle)
#Image histogram
def histogram(image):
img = np.array(image.convert('L'))
hist = cv2.calcHist([img],[0],None,[256],[0,256])
plt.plot(hist)
img_buf = io.BytesIO()
plt.savefig(img_buf, format='png')
return Image.open(img_buf)
#Gaussian filter
def g_filter(image):
img_gauss = image.filter(ImageFilter.GaussianBlur(5) )
return img_gauss
#Sobel
def sobel_f(image):
i = np.array(image)
img = cv2.GaussianBlur(i, (3, 3), sigmaX=0, sigmaY=0)
edge_sobel = cv2.Sobel(src=img, ddepth=cv2.CV_8U, dx=1, dy=1, ksize=5)
return Image.fromarray(edge_sobel)
#erosion
def erosion(image):
i=np.array(image.convert('L'))
ero_img= morphology.binary_erosion(i, morphology.disk(1))
return Image.fromarray(ero_img)
#dilatation
def dilatation(image):
i=np.array(image.convert('L'))
ero_img= morphology.binary_dilation(i, morphology.disk(1))
return Image.fromarray(ero_img)
#contour
def contour(image):
return image.filter(ImageFilter.CONTOUR)
#lumineux
def lumineux(image):
return image.filter(ImageFilter.EDGE_ENHANCE)
#Netteté
def nette(image):
return image.filter(ImageFilter.SHARPEN)
# Interface Gradio
def image_processing(image, operation, threshold=128, width=100, height=100, angle=0):
if operation == "Négatif":
return apply_negative(image)
elif operation == "Binarisation":
return binarize_image(image, threshold)
elif operation == "Redimensionner":
return resize_image(image, width, height)
elif operation == "Rotation":
return rotate_image(image, angle)
elif operation == "Histogramme":
return histogram(image)
elif operation == "Gaussian Filter":
return g_filter(image)
elif operation == "Sobel":
return sobel_f(image)
elif operation == "Erosion":
return erosion(image)
elif operation == "Dilatation":
return erosion(image)
elif operation == "Contour":
return contour(image)
elif operation == "Luminosité":
return lumineux(image)
elif operation == "Netteté":
return nette(image)
return image
# Gradio Interface
with gr.Blocks() as demo:
gr.Markdown("## Mini photoshop")
with gr.Row():
image_input = gr.Image(type="pil", label="Charger Image")
operation = gr.Radio(["Négatif", "Binarisation", "Redimensionner", "Rotation","Histogramme","Gaussian Filter","Sobel", "Erosion","Dilatation","Luminosité","Contour", "Netteté"], label="Opération")
threshold = gr.Slider(0, 255, 128, label="Seuil de binarisation", visible=True)
width = gr.Number(value=100, label="Largeur de redimensionnement", visible=True)
height = gr.Number(value=100, label="Hauteur de redimensionnement", visible=True)
angle = gr.Number(value=0, label="Angle de Rotation", visible=True)
image_output = gr.Image(label="Image Modifiée")
submit_button = gr.Button("Appliquer")
submit_button.click(image_processing, inputs=[image_input, operation, threshold, width, height, angle], outputs=image_output)
# Launch application
demo.launch()