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Multilevel feature fusion dilated convolutional network for semantic segmentation

机译:用于语义分割的多级特征融合扩张卷积网络

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Recently, convolutional neural network (CNN) has led to significant improvement in the field of computer vision, especially the improvement of the accuracy and speed of semantic segmentation tasks, which greatly improved robot scene perception. In this article, we propose a multilevel feature fusion dilated convolution network (Refine-DeepLab). By improving the space pyramid pooling structure, we propose a multiscale hybrid dilated convolution module, which captures the rich context information and effectively alleviates the contradiction between the receptive field size and the dilated convolution operation. At the same time, the high-level semantic information and low-level semantic information obtained through multi-level and multi-scale feature extraction can effectively improve the capture of global information and improve the performance of large-scale target segmentation. The encoder–decoder gradually recovers spatial information while capturing high-level semantic information, resulting in sharper object boundaries. Extensive experiments verify the effectiveness of our proposed Refine-DeepLab model, evaluate our approaches thoroughly on the PASCAL VOC 2012 data set without MS COCO data set pretraining, and achieve a state-of-art result of 81.73% mean interaction-over-union in the validate set.
机译:最近,卷积神经网络(CNN)导致计算机愿景领域的显着改善,尤其是改善语义分割任务的准确性和速度,这大大提高了机器人场景感知。在本文中,我们提出了一种多级特征融合扩张卷积网络(Refine-Deeblab)。通过改善空间金字塔池结构,我们提出了一种多尺度混合扩张卷积模块,其捕获丰富的上下文信息,并有效地减轻了接受场大小与扩张卷积操作之间的矛盾。同时,通过多级别和多尺度特征提取获得的高电平语义信息和低级语义信息可以有效地改善全局信息的捕获,提高大规模目标分割的性能。编码器 - 解码器在捕获高电平语义信息的同时逐渐恢复空间信息,从而导致对象边界。广泛的实验验证了我们提出的refine-deeblab模型的有效性,在没有MS Coco数据集预介质的情况下彻底评估我们的方法,无需MS Coco数据设置预押,并实现了81.73%的最先进的互动联盟的结果验证集。

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