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Hierarchical Manifold Sensing with Foveation and Adaptive Partitioning of the Dataset

机译:具有数据集的平移和自适应分区的分层流形传感

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The authors present a novel method, Hierarchical Manifold Sensing, for adaptive and efficient visual sensing. As opposed to the previously introduced Manifold Sensing algorithm, the new version introduces a way of learning a hierarchical partitioning of the dataset based on k-means clustering. The algorithm can perform on whole images but also on a foveated dataset, where only salient regions are sensed. The authors evaluate the proposed algorithms on the COIL, ALOI, and MNIST datasets. Although they use a very simple nearest-neighbor classifier, on the easier benchmarks, COIL and ALOI, perfect recognition is possible with only six or ten sensing values. Moreover, they show that their sensing scheme yields a better recognition performance than compressive sensing with random projections. On MNIST, state-of-the-art performance cannot be reached, but they show that a large number of test images can be recognized with only very few sensing values. However, for many applications, performance on challenging benchmarks may be less relevant than the simplicity of the solution (processing power, bandwidth) when solving a less challenging problem. (C) 2016 Society for Imaging Science and Technology.
机译:作者提出了一种用于自适应和高效视觉感测的新颖方法,“层次歧管感测”。与先前引入的流形传感算法相反,新版本引入了一种基于k均值聚类学习数据集分层划分的方法。该算法不仅可以在整个图像上执行,而且还可以在集中的数据集上执行,在该集中的数据集中仅检测到显着区域。作者评估了在COIL,ALOI和MNIST数据集上提出的算法。尽管它们使用非常简单的最近邻分类器,但在更简单的基准(COIL和ALOI)上,只有六个或十个传感值才可能实现完美识别。此外,他们表明,与具有随机投影的压缩传感相比,其传感方案可产生更好的识别性能。在MNIST上,无法达到最先进的性能,但是它们表明,只有很少的传感值才能识别大量的测试图像。但是,对于许多应用程序而言,在解决挑战性较小的问题时,具有挑战性的基准性能可能不如解决方案的简单性(处理能力,带宽)重要。 (C)2016年影像科学与技术学会。

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  • 来源
    《Journal of Imaging Science and Technology》 |2016年第2期|020402.1-020402.10|共10页
  • 作者单位

    Med Univ Lubeck, Inst Neuro & Bioinformat, Ratzeburger Allee 160, D-23562 Lubeck, Germany;

    Med Univ Lubeck, Inst Neuro & Bioinformat, Ratzeburger Allee 160, D-23562 Lubeck, Germany;

    Med Univ Lubeck, Inst Neuro & Bioinformat, Ratzeburger Allee 160, D-23562 Lubeck, Germany;

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