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首页> 外文期刊>Journal of visual communication & image representation >Optimized sampling distribution based on nonparametric learning for improved compressive sensing performance
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Optimized sampling distribution based on nonparametric learning for improved compressive sensing performance

机译:基于非参数学习的优化采样分布以提高压缩感测性能

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摘要

In this work, an optimized nonparametric learning approach for obtaining the data-guided sampling distribution is proposed, where a probability density function (pdf) is learned in a nonparametric manner based on past measurements from similar types of signals. This learned sampling distribution is then used to better optimize the sampling process based on the underlying signal characteristics. A realization of this stochastic learning approach for compressive sensing of imaging data is introduced via a stochastic Monte Carlo optimization strategy to learn a nonparametric sampling distribution based on visual saliency. Experiments were performed using different types of signals such as fluorescence microscopy images and laser range measurements. Results show that the proposed optimized sampling method which is based on nonparametric stochastic learning outperforms significantly the previously proposed approach. The proposed method is achieves higher reconstruction signal to noise ratios at the same compression rates across all tested types of signals. Crown Copyright (C) 2015 Published by Elsevier Inc. All rights reserved.
机译:在这项工作中,提出了一种用于获取数据指导的采样分布的优化的非参数学习方法,其中基于过去从类似类型的信号中获得的测量值,以非参数的方式学习概率密度函数(pdf)。然后,该学习的采样分布将用于根据基础信号特征更好地优化采样过程。通过随机蒙特卡洛优化策略介绍了这种用于图像数据压缩感测的随机学习方法的实现,以基于视觉显着性学习非参数采样分布。实验是使用不同类型的信号进行的,例如荧光显微图像和激光测距。结果表明,所提出的基于非参数随机学习的优化采样方法明显优于先前提出的方法。所提出的方法在所有测试类型的信号上以相同的压缩率实现了更高的重构信噪比。 Crown版权所有(C)2015,由Elsevier Inc.保留。保留所有权利。

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