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Image Classification in the Frequency Domain with Neural Networks and Absolute Value DCT

机译:具有神经网络频域中的图像分类和绝对值DCT

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In this work we explain, how to classify images with neural networks purely in the frequency domain. This is successful by the help of the discrete cosine transform (DCT) in which the values are turned to absolute values. After explaining the method and network architecture we test with a standard dataset for hand written digit recognition and reach the accuracy of 0.9805 in the frequency domain. By superposition of the DCTs we reveal the patterns which are learned by the Network. Afterwards we show some experiments with real images, where the classification in the frequency domain excels the results reached with the same network configuration in the spatial domain.
机译:在这项工作中,我们解释说,如何纯粹在频域中用神经网络对图像进行分类。这是成功的,通过离散余弦变换(DCT),其中值转向绝对值。在解释我们使用标准数据集测试的方法和网络架构以便手写的数字识别,并在频域中达到0.9805的精度。通过叠加DCT,我们揭示了网络学习的模式。之后我们显示了一些实验的实验,其中频域中的分类擅长在空间域中以相同的网络配置达到的结果。

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