Scalable Simple Linear Iterative Clustering (SSLIC) Using a Generic and Parallel Approach
Abstract
Superpixel algorithms have proven to be a useful initial step for segmentation and subsequent processing of images, reducing computational complexity by replacing the use of expensive per-pixel primitives with a higher-level abstraction, superpixels. They have been successfully applied both in the context of traditional image analysis and deep learning based approaches. In this work, we present a generalized implementation of the simple linear iterative clustering (SLIC) superpixel algorithm that has been generalized for n-dimensional scalar and multi-channel images. Additionally, the standard iterative implementation is replaced by a parallel, multi-threaded one. We describe the implementation details and analyze its scalability using a strong scaling formulation. Quantitative evaluation is performed using a 3D image, the Visible Human cryosection dataset, and a 2D image from the same dataset. Results show good scalability with runtime gains even when using a large number of threads that exceeds the physical number of available cores (hyperthreading).
Cite
@article{arxiv.1806.08741,
title = {Scalable Simple Linear Iterative Clustering (SSLIC) Using a Generic and Parallel Approach},
author = {Bradley C. Lowekamp and David T. Chen and Ziv Yaniv and Terry S. Yoo},
journal= {arXiv preprint arXiv:1806.08741},
year = {2018}
}
Comments
manuscript submitted to InsightJournal (ITK)