--- Title: libraries --- # Python scientific stack The feature extraction pipeline leverages industry-standard python scientific libraries for efficient image processing and computation. ## Core libraries ### Scikit-image **Purpose**: image processing and analysis **Website**: Features used: - Image segmentation algorithms - Morphological operations - 3D image analysis - Regional property measurement ### Scipy **Purpose**: scientific computing **Website**: Features used: - Advanced signal processing - Statistical distributions - Interpolation and filtering - Multi-dimensional image processing ### Mahotas **Purpose**: image analysis and processing **Website**: Features used: - Gray-level co-occurrence matrix (GLCM) - Texture feature extraction - Morphological operations ### Numpy **Purpose**: numerical computing **Website**: Features used: - Multi-dimensional array operations - Vectorized computations - Statistical calculations ## GPU-accelerated libraries ### Cupy **Purpose**: GPU-accelerated arrays (drop-in numpy replacement) **Website**: Features: - GPU memory management - Parallel numerical operations - 10-100X speedup over CPU numpy ### Cucim **Purpose**: GPU-accelerated image processing **Website**: Features: - GPU-accelerated scikit-image operations - Fast morphological operations - Efficient image filtering