# Draw a white circle cv2.circle(img, (W//2, H//2), W//4, (255,255,255), thickness=5)
// Encode to PNG (lossless) using var data = bitmap.Encode(SKEncodedImageFormat.Png, 100); File.WriteAllBytes("skia_full_847.png", data.ToArray()); Console.WriteLine("✅ SkiaSharp image saved"); SkiaSharp automatically uses GPU acceleration when available, which can dramatically reduce the time required for rasterizing very large images. 5.5 Photoshop Scripting (ExtendScript) #target photoshop var W = 847; var H = 847; 847 create an image full
// Full‑image gradient var paint = new SKPaint # Draw a white circle cv2
# Save as PNG (lossless) cv2.imwrite("opencv_full_847.png", img) print("✅ OpenCV image saved") OpenCV leverages native C++ kernels, so even a 30 000 × 30 000 BGR image (≈ 2.7 GB) can be handled on a machine with sufficient RAM, and you can switch to cv2.imwrite(..., [cv2.IMWRITE_PNG_COMPRESSION, 9]) for tighter disk usage. 5.3 Node.js – Canvas (node‑canvas) const createCanvas = require('canvas'); const fs = require('fs'); If you bump the size to 10 000
# 2️⃣ Allocate full canvas (filled with transparent black) canvas = Image.new(MODE, (WIDTH, HEIGHT), (0, 0, 0, 0))
const W = 847; const H = 847; const canvas = createCanvas(W, H); const ctx = canvas.getContext('2d');
# 5️⃣ Save (auto‑compresses to PNG) canvas.save("full_image_847.png", format="PNG") print("✅ Image saved as full_image_847.png") : 847 × 847 × 4 B ≈ 2.7 MB – well under typical desktop limits. If you bump the size to 10 000 × 10 000 , memory jumps to 381 MB ; consider tiling (see Section 6). 5.2 Python – OpenCV (NumPy) import cv2 import numpy as np