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Robust Facial Landmark Detection via a Fully-Convolutional Local-Global Context Network

机译:通过全卷积局部全局上下文网络进行鲁棒的面部地标检测

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While fully-convolutional neural networks are very strong at modeling local features, they fail to aggregate global context due to their constrained receptive field. Modern methods typically address the lack of global context by introducing cascades, pooling, or by fitting a statistical model. In this work, we propose a new approach that introduces global context into a fully-convolutional neural network directly. The key concept is an implicit kernel convolution within the network. The kernel convolution blurs the output of a local-context subnet, which is then refined by a global-context subnet using dilated convolutions. The kernel convolution is crucial for the convergence of the network because it smoothens the gradients and reduces overfitting. In a postprocessing step, a simple PCA-based 2D shape model is fitted to the network output in order to filter outliers. Our experiments demonstrate the effectiveness of our approach, outperforming several state-of-the-art methods in facial landmark detection.
机译:尽管全卷积神经网络在建模局部特征方面非常强大,但由于其受约束的接收场,它们无法聚合全局上下文。现代方法通常通过引入级联,合并或拟合统计模型来解决缺少全局上下文的问题。在这项工作中,我们提出了一种将全局上下文直接引入全卷积神经网络的新方法。关键概念是网络内的隐式内核卷积。内核卷积模糊了本地上下文子网的输出,然后使用膨胀卷积由全局上下文子网进行完善。内核卷积对于网络的收敛至关重要,因为它可以平滑梯度并减少过度拟合。在后处理步骤中,将简单的基于PCA的2D形状模型拟合到网络输出中,以过滤异常值。我们的实验证明了我们方法的有效性,在面部标志检测中胜过了几种最新方法。

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