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Learning adaptive receptive fields for deep image parsing networks

机译:学习自适应接受场以进行深度图像解析网络

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In this paper, we introduce a novel approach to automatically regulate receptive fields in deep image parsing networks. Unlike previous work which placed much importance on obtaining better receptive fields using manually selected dilated convolutional kernels, our approach uses two affine transformation layers in the network’s backbone and operates on feature maps. Feature maps are inflated or shrunk by the new layer, thereby changing the receptive fields in the following layers. By use of end-to-end training, the whole framework is data-driven, without laborious manual intervention. The proposed method is generic across datasets and different tasks. We have conducted extensive experiments on both general image parsing tasks, and face parsing tasks as concrete examples, to demonstrate the method’s superior ability to regulate over manual designs.
机译:在本文中,我们介绍了一种新颖的方法来自动调节深度图像解析网络中的接收场。与以前的工作非常重视使用人工选择的膨胀卷积核来获得更好的接收场不同,我们的方法使用了网络主干中的两个仿射变换层并在特征图上进行操作。新图层会放大或缩小要素地图,从而更改后续图层中的接收场。通过使用端到端培训,整个框架由数据驱动,而无需费力的人工干预。所提出的方法是跨数据集和不同任务的通用方法。我们已经针对一般的图像解析任务和面部解析任务进行了广泛的实验,以作为具体示例,以证明该方法具有优于手动设计的出色调节能力。

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