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pixtreme-core: High-Performance GPU Image Processing Core Library

Project description

pixtreme-core

High-Performance GPU Image Processing Core Library

Overview

pixtreme-core provides the fundamental building blocks for GPU-accelerated image processing:

  • I/O: Hardware-accelerated image reading/writing via NVIDIA nvimgcodec
  • Color: Color space conversions (BGR, RGB, HSV, YCbCr, LUT operations)
  • Transform: Geometric transformations (resize, affine, tiling) with 11 interpolation methods
  • Utils: Framework interoperability (NumPy, CuPy, PyTorch) via DLPack

All operations work directly on GPU memory using CuPy arrays for maximum performance.

Installation

Requirements:

  • Python >= 3.12
  • CUDA Toolkit 12.x
  • NVIDIA GPU with compute capability >= 6.0
pip install pixtreme-core

OpenCV Variants

pixtreme-core uses opencv-python by default. For different environments:

  • Headless environments (no GUI): Replace with opencv-python-headless

    pip uninstall opencv-python
    pip install opencv-python-headless
    
  • Contrib modules needed: Replace with opencv-contrib-python

    pip uninstall opencv-python
    pip install opencv-contrib-python
    

All variants provide the same cv2 module and are compatible with pixtreme.

Quick Start

import pixtreme_core as px

# Read image (returns CuPy array on GPU)
img = px.imread("input.jpg")

# Resize with auto-selected interpolation
img = px.resize(img, (512, 512))

# Convert color space
img = px.bgr_to_rgb(img)

# Write image
px.imwrite("output.jpg", img)

Features

Image I/O

  • imread(): Hardware-accelerated JPEG/PNG decoding
  • imwrite(): Efficient image encoding
  • imshow(): Display with matplotlib

Color Conversions

  • BGR ↔ RGB, HSV, YCbCr, Grayscale
  • 3D LUT operations with trilinear/tetrahedral interpolation
  • Video format support (UYVY422, YUV420p, YUV422p10le)
  • Legal/full range YCbCr conversion

Geometric Transforms

  • resize(): 11 interpolation methods including Lanczos, Mitchell, Catmull-Rom
  • affine(): Affine transformations
  • tile_image(), merge_tiles(): Tiling workflow for large images
  • erode(): Morphological erosion

Framework Interoperability

  • to_cupy(), to_numpy(), to_tensor(): Zero-copy conversions via DLPack
  • to_uint8(), to_uint16(), to_float32(): Type conversions with range scaling

License

MIT License - see LICENSE file for details.

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