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Filter Guided Manifold Optimization in the Autoencoder Latent Space

机译:自动编码器潜在空间中的滤波器引导流形优化

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An autoencoder is a class of neural network that is trained to output an accurate reproduction of the input while learning key lower dimensional features, otherwise known as a manifold. A lower dimensional representation of the original input, referred to as the latent space, encodes the intrinsic data structure over the manifold. This paper proposes filter-guided manifold optimization in the latent space of a convolutional autoencoder to recover noisy motion data collected by a depth sensor. Autoencoder output is smoothed using four traditional filters and employed as target motion data in an objective function. The difference between the actual output and target is minimized through stochastic gradient descent over the latent space, using manifold optimization to produce the expected smooth output. The advantage of this filter-guided approach over traditional filtering is that the resultant motion data still adheres to the manifold in the latent space learned by the autoencorder from training on motion data.
机译:自动编码器是一类神经网络,经过训练可在学习关键的较低维度特征(也称为流形)的同时输出准确的输入重现。原始输入的低维表示(称为潜在空间)对流形上的固有数据结构进行编码。本文提出了在卷积自动编码器的潜在空间中以滤波器为导向的流形优化,以恢复深度传感器收集的噪声运动数据。自动编码器的输出使用四个传统滤波器进行平滑处理,并用作目标函数中的目标运动数据。实际输出和目标之间的差异通过潜在空间上的随机梯度下降而最小化,使用流形优化来产生预期的平滑输出。这种由过滤器引导的方法相对于传统过滤的优势在于,最终的运动数据仍然附着在自动编码器从运动数据训练中学到的潜在空间中的流形上。

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