在GPU平台上集成无监督和监督聚类方法实现快速图像分割

A. Faro, D. Giordano, S. Palazzo
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引用次数: 5

摘要

本文的目的是演示如何通过在GPU平台上集成无监督和有监督并行神经聚类方法,我们可以在原始图像的拓扑保留和量化误差最小化(也称为聚类精度)之间取得令人满意的妥协,进行快速图像分割。为此,提出了一种受扩展SOM (ESOM)启发的无监督并行聚类方法,该方法由类似学习向量量化(LVQ)的算法驱动。然后,在已知所需簇的适当原型的情况下,提出了其并行监督版本,以进一步减小量化误差。最后,说明了这两种方法的GPU实现,以显示我们如何支持时间关键任务,如实时监视,交互式医疗诊断和动态系统控制。通过小实例和实际处理任务,讨论了GPU实现的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating unsupervised and supervised clustering methods on a GPU platform for fast image segmentation
Aim of the paper is to demonstrate how by integrating unsupervised and supervised parallel neural clustering methods in a GPU platform we may carry out a fast image segmentation with a satisfactory compromise between the topological preservation of the original image and the minimization of the quantization error, also known as clustering accuracy. For this reason, an unsupervised parallel clustering method inspired by the Extended SOM (ESOM) powered by a Learning Vector Quantization (LVQ) like algorithm is proposed. Then, its parallel supervised versions is presented to further minimize the quantization error in case proper prototypes of the desired clusters are known. Finally, the GPU implementation of both these methods are illustrated to show how we may support time critical tasks such as real time surveillance, interactive medical diagnosis, and control of dynamical systems. The performance of the GPU implementation is discussed with the help of small examples and realistic processing tasks.
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