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Integrated Learning and Feature Selection for Deep Neural Networks in Multispectral Images

机译:多光谱图像深神经网络的集成学习和特征选择

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The curse of dimensionality is a well-known phenomenon that arises when applying machine learning algorithms to highly-dimensional data; it degrades performance as a function of increasing dimension. Due to the high data dimensionality of multispectral and hyperspectral imagery, classifiers trained on limited samples with many spectral bands tend to overfit, leading to weak generalization capability. In this work, we propose an end-to-end framework to effectively integrate input feature selection into the training procedure of a deep neural network for dimensionality reduction. We show that Integrated Learning and Feature Selection (ILFS) significantly improves performance on neural networks for multispectral imagery applications. We also evaluate the proposed methodology as a potential defense against adversarial examples, which are malicious inputs carefully designed to fool a machine learning system. Our experimental results show that methods for generating adversarial examples designed for RGB space are also effective for multispectral imagery and that ILFS significantly mitigates their effect.
机译:维度诅咒是一种众所周知的现象,当将机器学习算法应用于高度维度数据时出现的众所周知的现象;它将性能降低了尺寸增加的函数。由于多光谱和高光谱图像的高数据维度,具有许多光谱带的有限样本培训的分类器倾向于过度装备,导致较弱的泛化能力。在这项工作中,我们提出了一个端到端的框架,以有效地将输入特征选择集成到深度神经网络的培训过程中,以实现维数减少。我们表明综合学习和特征选择(ILFS)显着提高了多光谱图像应用的神经网络的性能。我们还评估所提出的方法作为对抗对抗示例的潜在防御,这是仔细设计用于欺骗机器学习系统的恶意投入。我们的实验结果表明,用于为RGB空间设计的对抗性示例的方法对多光谱图像也有效,并且ILF显着降低了它们的效果。

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