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Kristina Chodorow's Blog

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Snail in a Turtleneck

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Kristina Chodorow's Blog

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2026-03-04 17:08:33

raw text

Kristina Chodorow's Blog – Snail in a Turtleneck Skip to content Kristina Chodorow's Blog Snail in a Turtleneck Pixelating images in Python Generating pixel art with AI has mixed results, but I’ve found you can improve the output with some basic heuristics. Last year I wrote several libraries for this and then stuffed them in a drawer, but since there’s been some interest in the topic: here’s how to make AI-generated pixel art a bit better with good ol’ image processing. I’m going to use Python and, if you’d prefer not to write it yourself, I created a public colab that you can just step through. We’re going to use OpenCV for image processing, which has an interesting Python API (it’s actually a C++ library and it shows). # If you're using colab, no need to install anything. If you're # running locally, run: # $ pip install opencv-python-headless # You'll also need numpy. import cv2 as cv img = cv.imread(path_to_your_jpg, cv.IMREAD_UNCHANGED) print(img.shape...

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