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Deeply-fused Attentive Network for Stereo Matching

机译:对立体声匹配的深层融合网络

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In this paper, we propose a novel learning-based network for stereo matching called DF-Net, which makes three main contributions that are experimentally shown to have practical merit. Firstly, we further increase the accuracy by using the deeply fused spatial pyramid pooling (DF-SPP) module, which can acquire the continuous multi-scale context information in both parallel and cascade manners. Secondly, we introduce channel attention block to dynamically boost the informative features. Finally, we propose a stacked encoder-decoder structure with 3D attention gate for cost regularization. More precisely, the module fuses the coding features to their next encoder-decoder structure under the supervision of attention gate with long-range skip connection, and thus exploit deep and hierarchical context information for disparity prediction. The performance on SceneFlow and KITTI datasets shows that our model is able to generate better results against several state-of-the-art algorithms.
机译:在本文中,我们提出了一种用于DF-Net的立体匹配的基于新的基于学习的网络,这使得实验证明具有实际优点的三个主要贡献。 首先,我们通过使用深度熔合的空间金字塔汇集(DF-SPP)模块进一步提高了精度,这可以在并行和级联方式中获取连续的多尺度上下文信息。 其次,我们介绍了通道注意力块,动态提升信息功能。 最后,我们提出了一种具有3D注意栅极的堆叠编码器解码器结构,用于成本正则化。 更确切地说,该模块在带有远程跳过连接的注意门的监督下将编码特征融合到其下一个编码器解码器结构,从而利用了差异预测的深层和分层上下文信息。 SceneFlow和Kitti Datasets的表现表明,我们的模型能够对几种最先进的算法产生更好的结果。

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