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Smoothed Dilated Convolutions for Improved Dense Prediction

机译:平滑扩张的卷曲,以改善致密预测

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摘要

Dilated convolutions, also known as atrous convolutions, have been widely explored in deep convolutional neural networks (DCNNs) for various tasks like semantic image segmentation, object detection, audio generation, video modeling, and machine translation. However, dilated convolutions suffer from the gridding artifacts, which hampers the performance of DCNNs with dilated convolutions. In this work, we propose two simple yet effective degridding methods by studying a decomposition of dilated convolutions. Unlike existing models, which explore solutions by focusing on a block of cascaded dilated convolutional layers, our methods address the gridding artifacts by smoothing the dilated convolution itself. By analyzing them in both the original operation and the decomposition views, we further point out that the two degridding approaches are intrinsically related and define separable and shared (SS) operations, which generalize the proposed methods. We evaluate our methods thoroughly on two datasets and visualize the smoothing effect through effective receptive field analysis. Experimental results show that our methods yield significant and consistent improvements on the performance of DCNNs with dilated convolutions, while adding negligible amounts of extra training parameters.
机译:扩张的卷积,也被称为不受欢迎的卷积,在深度卷积神经网络(DCNNS)中被广泛探索了各种任务,如语义图像分割,对象检测,音频发电,视频建模和机器翻译等各种任务。然而,扩张的卷轴患有网格伪像,其妨碍了DCNN与扩张卷积的性能。在这项工作中,我们通过研究扩张卷积的分解提出了两种简单但有效的劣化方法。与现有模型不同,通过专注于级联扩张的卷积层块来探索解决方案,我们的方法通过平滑扩张的卷积本身来解决网格伪像。通过在原始操作和分解视图中分析它们,我们进一步指出了两种降级方法本质上相关并定义可分离和共享(SS)操作,这概括了所提出的方法。我们通过有效的接受场分析彻底评估我们的方法,并通过有效的接受场分析来可视化平滑效果。实验结果表明,我们的方法对DCNN与扩张卷积的性能进行了显着且一致的改进,同时增加了额外的额外训练参数。

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