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PARALLEL IMPLEMENTATION OF MORPHOLOGICAL PROFILE BASED SPECTRAL-SPATIAL CLASSIFICATION SCHEME FOR HYPERSPECTRAL IMAGERY

机译:基于频谱空间分类方案的平行实现高光谱图像

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Extended morphological profile (EMP) is a good technique for extracting spectral-spatial information from the images but large size of hyperspectral images is an important concern for creating EMPs. However, with the availability of modern multi-core processors and commodity parallel processing systems like graphics processing units (GPUs) at desktop level, parallel computing provides a viable option to significantly accelerate execution of such computations. In this paper, parallel implementation of an EMP based spectral-spatial classification method for hyperspectral imagery is presented. The parallel implementation is done both on multi-core CPU and GPU. The impact of parallelization on speed up and classification accuracy is analyzed. For GPU, the implementation is done in compute unified device architecture (CUDA) C. The experiments are carried out on two well-known hyperspectral images. It is observed from the experimental results that GPU implementation provides a speed up of about 7 times, while parallel implementation on multi-core CPU resulted in speed up of about 3 times. It is also observed that parallel implementation has no adverse impact on the classification accuracy.
机译:扩展的形态概况(EMP)是一种从图像中提取光谱空间信息的良好技术,但大尺寸的高光谱图像是创建EMP的重要关注。但是,随着桌面级别的现代多核处理器和商品并行处理系统(GPU)等现代多核处理器和商品并行处理系统,并行计算提供了可行的选项,以显着加速执行此类计算。本文介绍了基于EMP基于EMP的频谱空间分类方法的平行实现。并行实现在多核CPU和GPU上进行。分析了并行化对加速和分类准确度的影响。对于GPU,实现是在计算统一设备架构(CUDA)C中完成的。实验在两个众所周知的高光谱图像上进行。从实验结果中观察到GPU实现提供了大约7次的速度,而多核CPU上的并行实现导致速度约为3次。还观察到并行实现对分类准确性没有不利影响。

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