用于动态成像的深度风暴生成模型

Qing Zou, Abdul Haseeb Ahmed, Prashant Nagpal, Stanley Kruger, Mathews Jacob
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引用次数: 0

摘要

我们介绍了一种新颖的流形平滑正则化(STORM)生成模型,用于从高度采样不足的测量数据中恢复动态图像数据。所提出的生成框架将图像时间序列表示为捕捉心脏和呼吸阶段的低维潜在向量的平滑非线性函数。非线性函数使用深度卷积神经网络(CNN)表示。流行的卷积神经网络方法需要大量完全采样的训练数据,而在这种情况下无法获得这些数据,与之不同的是,卷积神经网络生成器的参数以及潜向量是通过随机梯度下降法,从采样不足的测量数据中共同估算出来的。我们对生成器梯度的常模进行惩罚,以鼓励学习平滑的曲面/manifold,同时对潜在向量的时间梯度进行惩罚,以鼓励时间序列变得平滑。与基于分析的 SToRM 模型相比,拟议方案的主要优势在于:(a) 显著减少了内存需求;(b) CNN 模型带来的空间正则化。我们还引入了高效的渐进方法,以最大限度地降低算法的计算复杂度。
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DEEP GENERATIVE STORM MODEL FOR DYNAMIC IMAGING.

We introduce a novel generative smoothness regularization on manifolds (SToRM) model for the recovery of dynamic image data from highly undersampled measurements. The proposed generative framework represents the image time series as a smooth non-linear function of low-dimensional latent vectors that capture the cardiac and respiratory phases. The non-linear function is represented using a deep convolutional neural network (CNN). Unlike the popular CNN approaches that require extensive fully-sampled training data that is not available in this setting, the parameters of the CNN generator as well as the latent vectors are jointly estimated from the undersampled measurements using stochastic gradient descent. We penalize the norm of the gradient of the generator to encourage the learning of a smooth surface/manifold, while temporal gradients of the latent vectors are penalized to encourage the time series to be smooth. The main benefits of the proposed scheme are (a) the quite significant reduction in memory demand compared to the analysis based SToRM model, and (b) the spatial regularization brought in by the CNN model. We also introduce efficient progressive approaches to minimize the computational complexity of the algorithm.

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