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Visualization of maximizing images with deconvolutional optimization method for neurons in deep neural networks

机译:用反卷积优化方法对深度神经网络中的神经元进行最大化图像可视化

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Deep neural networks have already proved their efficiency in solving various types of machine learning problems, especially related to recognizing natural images. However, we still dont have an exhausting understanding of how this networks work, especially in deep hidden layers. Developing methods of visualizing an information encoded in neural networks would help to reveal what kind of features hidden layers have learned and to analyze what each neuron is actually responsible for. There are two main approaches in visualizing neural networks: deconvolution and optimization. The first one is often used because of its high speed and low difficulty, but reconstructed images do not pretend to have high accuracy. The other one is quite precise: it is formulated as an optimization problem of maximizing activity of the definite neuron but takes a lot of time to converge for the deep network. We have tried to combine these two methods in order to have a possibility for the visualization with high accuracy. We used regularization based on neurons with specific activation to make images more interpretable.
机译:深度神经网络已经证明了其解决各种类型的机器学习问题(尤其是与识别自然图像有关的问题)的效率。但是,我们对这种网络的工作方式仍然没有详尽的了解,尤其是在深层的隐藏层中。可视化以神经网络编码的信息的可视化方法开发将有助于揭示隐藏层学习了哪些特征,并分析每个神经元实际上负责什么。可视化神经网络有两种主要方法:去卷积和优化。由于第一个图像的速度快,难度低,因此经常使用它,但是重建的图像并不能伪装成具有较高的精度。另一个非常精确:它被表述为最大化确定神经元活动的优化问题,但收敛到深层网络需要大量时间。我们试图将这两种方法结合起来,以实现高精度的可视化。我们使用了具有特定激活作用的基于神经元的正则化方法,以使图像更易解释。

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