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首页> 外文期刊>Journal of Applied Remote Sensing >Real-time implementation of optimized maximum noise fraction transform for feature extraction of hyperspectral images
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Real-time implementation of optimized maximum noise fraction transform for feature extraction of hyperspectral images

机译:优化的最大噪声分数变换的实时实现,用于高光谱图像的特征提取

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We present a parallel implementation of the optimized maximum noise fraction (G-OMNF) transform algorithm for feature extraction of hyperspectral images on commodity graphics processing units (GPUs). The proposed approach explored the algorithm data-level concurrency and optimized the computing flow. We first defined a three-dimensional grid, in which each thread calculates a sub-block data to easily facilitate the spatial and spectral neighborhood data searches in noise estimation, which is one of the most important steps involved in OMNF. Then, we optimized the processing flow and computed the noise covariance matrix before computing the image covariance matrix to reduce the original hyperspectral image data transmission. These optimization strategies can greatly improve the computing efficiency and can be applied to other feature extraction algorithms. The proposed parallel feature extraction algorithm was implemented on an Nvidia Tesla GPU using the compute unified device architecture and basic linear algebra subroutines library. Through the experiments on several real hyperspectral images, our GPU parallel implementation provides a significant speedup of the algorithm compared with the CPU implementation, especially for highly data parallelizable and arithmetically intensive algorithm parts, such as noise estimation. In order to further evaluate the effectiveness of G-OMNF, we used two different applications: spectral unmixing and classification for evaluation. Considering the sensor scanning rate and the data acquisition time, the proposed parallel implementation met the on-board real-time feature extraction. (C) 2014 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:我们为商品图形处理单元(GPU)上的高光谱图像特征提取提供了优化的最大噪声分数(G-OMNF)变换算法的并行实现。所提出的方法探索了算法的数据级并发性,并优化了计算流程。我们首先定义了一个三维网格,其中每个线程都计算一个子块数据,以轻松促进噪声估计中的空间和光谱邻域数据搜索,这是OMNF中最重要的步骤之一。然后,在计算图像协方差矩阵之前,我们优化了处理流程并计算了噪声协方差矩阵,以减少原始的高光谱图像数据传输。这些优化策略可以极大地提高计算效率,并且可以应用于其他特征提取算法。利用计算统一设备架构和基本线性代数子例程库,在Nvidia Tesla GPU上实现了提出的并行特征提取算法。通过对多个真实高光谱图像的实验,与CPU实现相比,我们的GPU并行实现显着提高了算法的速度,尤其是对于高度数据可并行化和算术密集的算法部分,例如噪声估计。为了进一步评估G-OMNF的有效性,我们使用了两种不同的应用程序:频谱分解和分类进行评估。考虑到传感器的扫描速度和数据采集时间,所提出的并行实现方案满足了机载实时特征提取。 (C)2014年光电仪器工程师协会(SPIE)

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