


How to Concatenate Multiple Images Horizontally in Python Using Pillow?
Concatenating Images Horizontally with Python
Combining multiple images horizontally is a common task in image processing. Python offers powerful tools to achieve this using the Pillow library.
Problem Description
Consider three square JPEG images of dimensions 148 x 95. The goal is to horizontally concatenate these images while avoiding any partial images in the resulting output.
Suggested Solution
The following code snippet addresses the problem:
<code class="python">import sys from PIL import Image # Get the images images = [Image.open(x) for x in ['Test1.jpg', 'Test2.jpg', 'Test3.jpg']] # Determine the total width and height widths, heights = zip(*(i.size for i in images)) total_width = sum(widths) max_height = max(heights) # Create a new, empty image new_im = Image.new('RGB', (total_width, max_height)) # Paste the images horizontally x_offset = 0 for im in images: new_im.paste(im, (x_offset, 0)) x_offset += im.size[0] # Save the output image new_im.save('test.jpg')</code>
This code iterates over the input images, determining their dimensions. It creates a new image with the total width and the maximum height of all the images. Each input image is pasted horizontally, and their positions are updated accordingly.
Additional Considerations
- The code avoids hard-coding image dimensions by dynamically calculating them.
- By specifying the dimensions in one line, they can be easily adjusted.
- The provided example concatenates three images, but the code can be used for any number of images.
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