How to convert an image to grayscale in PyTorch
Last Updated :
07 Nov, 2022
In this article, we are going to see how to convert an image to grayscale in PyTorch.
torchvision.transforms.grayscale method
Grayscaling is the process of converting an image from other color spaces e.g. RGB, CMYK, HSV, etc. to shades of gray. It varies between complete black and complete white. torchvision.transforms.grayscale() method is used to convert an image to grayscale. If the input image is torch Tensor then it is expected to have [3, H, W] shape, H, W is height and width respectively. The below syntax is used to convert an image to grayscale.
Package Requirement
- Pytorch is an open-source deep learning framework available with a Python and C++ interface. Pytorch resides inside the torch module. In PyTorch, the data that has to be processed is input in the form of a tensor. whereas Torchvision is a library that goes hand in hand with PyTorch.
pip install torchvision
pip install torch
- Python Pillow is built on top of PIL (Python Image Library) and is considered the fork for the same as PIL.
pip install Pillow
Image used for demonstration:
Example
The following program is to understand how to convert images to grayscale.
Syntax: torchvision.transforms.Grayscale()
Parameter:
- num_output_channels (int) – (1 or 3) number of channels desired for output image
Return: This method return an grayscale image.
Python3
import torch
import torchvision.transforms as transforms
from PIL import Image
picture = Image. open ( 'geekslogo.png' )
transform = transforms.Grayscale()
image = transform(picture)
image.show()
|
Output:
Share your thoughts in the comments
Please Login to comment...