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Depth and Width Changeable Network-Based Deep Kernel Learning-Based Hyperspectral Sensor Data Analysis

机译:深度和宽度可变的基于网络的基于核心学习的高光谱传感器数据分析

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Sensor data analysis is used in many application areas, for example, Artificial Intelligence of Things (AIoT), with the rapid developing of the deep neural network learning that promotes its application area. In this work, we propose the Depth and Width Changeable Deep Kernel Learning-based hyperspectral sensing data analysis algorithm. Compared with the traditional kernel learning-based hyperspectral data classification, the proposed method has its advantages on the hyperspectral data classification. With the deep kernel learning, the feature is mapped through many times mapping and has the more discriminative ability. So, the deep kernel learning has the better performance compared with the multiple kernels learning. And it has the ability to adjust the network architecture for hyperspectral data space, with the optimization equation of the span bound. The experiments are implemented to testified the feasibility and performance of the algorithms on the hyperspectral data analysis, with the classification accuracy of hyperspectral data. The comprehensive analysis of the experiments shows that the proposed algorithm is feasible to hyperspectral sensor data analysis and its promising classification method in many areas data analysis.
机译:传感器数据分析用于许多应用领域,例如,事物的人工智能(AIT),随着深度神经网络学习的快速发展,促进其应用领域。在这项工作中,我们提出了深度和宽度可变的深核学习高光谱传感数据分析算法。与传统的基于内核基于高光谱数据分类相比,所提出的方法对高光谱数据分类具有其优点。通过深入的内核学习,该功能遍历多次映射并具有更大的歧视能力。因此,与多个内核学习相比,深入的内核学习具有更好的性能。它有能力调整高光谱数据空间的网络架构,具有跨度绑定的优化方程。实施实验以证实了对高光谱数据分析的算法的可行性和性能,具有超光谱数据的分类精度。实验的综合分析表明,该算法在许多领域数据分析中对高光谱传感器数据分析及其有前途的分类方法可行。

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