askill
image-utils

image-utilsSafety 100Repository

Use when performing classic image manipulation - resize, crop, composite, format conversion, watermarks, adjustments. Pillow-based utilities for deterministic pixel-level operations. Use alongside AI image generation (like Bria) for post-processing, or standalone for any image processing task.

2 stars
1.2k downloads
Updated 3/7/2026

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SKILL.md

Image Utilities

Pillow-based utilities for deterministic pixel-level image operations. Use for resize, crop, composite, format conversion, watermarks, and other standard image processing tasks.

When to Use This Skill

  • Post-processing AI-generated images: Resize, crop, optimize for web after generation
  • Format conversion: PNG ↔ JPEG ↔ WEBP with quality control
  • Compositing: Overlay images, paste subjects onto backgrounds
  • Batch processing: Resize to multiple sizes, add watermarks
  • Web optimization: Compress and resize for fast delivery
  • Social media preparation: Crop to platform-specific aspect ratios

Quick Reference

OperationMethodDescription
Loadingload(source)Load from URL, path, bytes, or base64
load_from_url(url)Download image from URL
Savingsave(image, path)Save with format auto-detection
to_bytes(image, format)Convert to bytes
to_base64(image, format)Convert to base64 string
Resizingresize(image, width, height)Resize to exact dimensions
scale(image, factor)Scale by factor (0.5 = half)
thumbnail(image, size)Fit within size, maintain aspect
Croppingcrop(image, left, top, right, bottom)Crop to region
crop_center(image, width, height)Crop from center
crop_to_aspect(image, ratio)Crop to aspect ratio
Compositingpaste(bg, fg, position)Overlay at coordinates
composite(bg, fg, mask)Alpha composite
fit_to_canvas(image, w, h)Fit onto canvas size
Bordersadd_border(image, width, color)Add solid border
add_padding(image, padding)Add whitespace padding
Transformsrotate(image, angle)Rotate by degrees
flip_horizontal(image)Mirror horizontally
flip_vertical(image)Flip vertically
Watermarksadd_text_watermark(image, text)Add text overlay
add_image_watermark(image, logo)Add logo watermark
Adjustmentsadjust_brightness(image, factor)Lighten/darken
adjust_contrast(image, factor)Adjust contrast
adjust_saturation(image, factor)Adjust color saturation
blur(image, radius)Apply Gaussian blur
Weboptimize_for_web(image, max_size)Optimize for delivery
Infoget_info(image)Get dimensions, format, mode

Requirements

pip install Pillow requests

Basic Usage

from image_utils import ImageUtils

# Load from URL
image = ImageUtils.load_from_url("https://example.com/image.jpg")

# Or load from various sources
image = ImageUtils.load("/path/to/image.png")         # File path
image = ImageUtils.load(image_bytes)                  # Bytes
image = ImageUtils.load("data:image/png;base64,...")  # Base64

# Resize and save
resized = ImageUtils.resize(image, width=800, height=600)
ImageUtils.save(resized, "output.webp", quality=90)

# Get image info
info = ImageUtils.get_info(image)
print(f"{info['width']}x{info['height']} {info['mode']}")

Resizing & Scaling

# Resize to exact dimensions
resized = ImageUtils.resize(image, width=800, height=600)

# Resize maintaining aspect ratio (fit within bounds)
fitted = ImageUtils.resize(image, width=800, height=600, maintain_aspect=True)

# Resize by width only (height auto-calculated)
resized = ImageUtils.resize(image, width=800)

# Scale by factor
half = ImageUtils.scale(image, 0.5)    # 50% size
double = ImageUtils.scale(image, 2.0)  # 200% size

# Create thumbnail
thumb = ImageUtils.thumbnail(image, (150, 150))

Cropping

# Crop to specific region
cropped = ImageUtils.crop(image, left=100, top=50, right=500, bottom=350)

# Crop from center
center = ImageUtils.crop_center(image, width=400, height=400)

# Crop to aspect ratio (for social media)
square = ImageUtils.crop_to_aspect(image, "1:1")      # Instagram
wide = ImageUtils.crop_to_aspect(image, "16:9")       # YouTube thumbnail
story = ImageUtils.crop_to_aspect(image, "9:16")      # Stories/Reels

# Control crop anchor
top_crop = ImageUtils.crop_to_aspect(image, "16:9", anchor="top")
bottom_crop = ImageUtils.crop_to_aspect(image, "16:9", anchor="bottom")

Compositing

# Paste foreground onto background
result = ImageUtils.paste(background, foreground, position=(100, 50))

# Alpha composite (foreground must have transparency)
result = ImageUtils.composite(background, foreground)

# Fit image onto canvas with letterboxing
canvas = ImageUtils.fit_to_canvas(
    image,
    width=1200,
    height=800,
    background_color=(255, 255, 255, 255),  # White
    position="center"  # or "top", "bottom"
)

Format Conversion

# Convert to different formats
png_bytes = ImageUtils.to_bytes(image, "PNG")
jpeg_bytes = ImageUtils.to_bytes(image, "JPEG", quality=85)
webp_bytes = ImageUtils.to_bytes(image, "WEBP", quality=90)

# Get base64 for data URLs
base64_str = ImageUtils.to_base64(image, "PNG")
data_url = ImageUtils.to_base64(image, "PNG", include_data_url=True)
# Returns: "data:image/png;base64,..."

# Save with format auto-detected from extension
ImageUtils.save(image, "output.png")
ImageUtils.save(image, "output.jpg", quality=85)
ImageUtils.save(image, "output.webp", quality=90)

Watermarks

# Text watermark
watermarked = ImageUtils.add_text_watermark(
    image,
    text="© 2024 My Company",
    position="bottom-right",  # bottom-left, top-right, top-left, center
    font_size=24,
    color=(255, 255, 255, 128),  # Semi-transparent white
    margin=20
)

# Logo/image watermark
logo = ImageUtils.load("logo.png")
watermarked = ImageUtils.add_image_watermark(
    image,
    watermark=logo,
    position="bottom-right",
    opacity=0.5,
    scale=0.15,  # 15% of image width
    margin=20
)

Adjustments

# Brightness (1.0 = original, <1 darker, >1 lighter)
bright = ImageUtils.adjust_brightness(image, 1.3)
dark = ImageUtils.adjust_brightness(image, 0.7)

# Contrast (1.0 = original)
high_contrast = ImageUtils.adjust_contrast(image, 1.5)

# Saturation (0 = grayscale, 1.0 = original, >1 more vivid)
vivid = ImageUtils.adjust_saturation(image, 1.3)
grayscale = ImageUtils.adjust_saturation(image, 0)

# Sharpness
sharp = ImageUtils.adjust_sharpness(image, 2.0)

# Blur
blurred = ImageUtils.blur(image, radius=5)

Transforms

# Rotate (counter-clockwise, degrees)
rotated = ImageUtils.rotate(image, 45)
rotated = ImageUtils.rotate(image, 90, expand=False)  # Don't expand canvas

# Flip
mirrored = ImageUtils.flip_horizontal(image)
flipped = ImageUtils.flip_vertical(image)

Borders & Padding

# Add solid border
bordered = ImageUtils.add_border(image, width=5, color=(0, 0, 0))

# Add padding (whitespace)
padded = ImageUtils.add_padding(image, padding=20)  # Uniform
padded = ImageUtils.add_padding(image, padding=(10, 20, 10, 20))  # left, top, right, bottom

Web Optimization

# Optimize for web delivery
optimized_bytes = ImageUtils.optimize_for_web(
    image,
    max_dimension=1920,  # Resize if larger
    format="WEBP",       # Best compression
    quality=85
)

# Save optimized
with open("optimized.webp", "wb") as f:
    f.write(optimized_bytes)

Integration with AI Image Generation

Use with Bria AI or other image generation APIs:

from bria_client import BriaClient
from image_utils import ImageUtils

client = BriaClient()

# Generate with AI
result = client.generate("product photo of headphones", aspect_ratio="1:1")
image_url = result['result']['image_url']

# Download and post-process
image = ImageUtils.load_from_url(image_url)

# Create multiple sizes for responsive images
sizes = {
    "large": ImageUtils.resize(image, width=1200),
    "medium": ImageUtils.resize(image, width=600),
    "thumb": ImageUtils.thumbnail(image, (150, 150))
}

# Save all as optimized WebP
for name, img in sizes.items():
    ImageUtils.save(img, f"product_{name}.webp", quality=85)

Batch Processing Example

from pathlib import Path
from image_utils import ImageUtils

def process_catalog(input_dir, output_dir):
    """Process all images in a directory."""
    output_path = Path(output_dir)
    output_path.mkdir(exist_ok=True)

    for image_file in Path(input_dir).glob("*.{jpg,png,webp}"):
        image = ImageUtils.load(image_file)

        # Crop to square
        square = ImageUtils.crop_to_aspect(image, "1:1")

        # Resize to standard size
        resized = ImageUtils.resize(square, width=800, height=800)

        # Add watermark
        final = ImageUtils.add_text_watermark(resized, "© My Brand")

        # Save optimized
        output_file = output_path / f"{image_file.stem}.webp"
        ImageUtils.save(final, output_file, quality=85)

process_catalog("./raw_images", "./processed")

API Reference

See image_utils.py for complete implementation with docstrings.

Install

Download ZIP
Requires askill CLI v1.0+

AI Quality Score

95/100Analyzed 2/23/2026

Comprehensive image utilities skill covering Pillow-based operations including resize, crop, composite, format conversion, watermarks, adjustments, transforms, and web optimization. Well-structured with quick reference table, extensive code examples for each operation type, batch processing examples, and integration guidance with AI image generation. Includes clear 'When to Use' section and requirements. Highly actionable and reusable for any image processing task.

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Metadata

Licenseunknown
Version-
Updated3/7/2026
Publishermajiayu000

Tags

api