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Attention-Based Network for Semantic Image Segmentation via Adversarial Learning

机译:基于注意力的网络通过对抗学习的语义图像分割

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As a fundamental research, semantic image segmentation is widely used in the computer vision system. In this paper, we explore the attention mechanism for semantic segmentation to improve the extraction and recovery of information efficiently. Mixed attention modules are designed for the segmentation task, and the attention-based network is the combination by the encoder of Xcep-tion and the decoder of residual connections. Experiments are conducted on the PASCAL VOC dataset, and the proposed method outperforms DccpLabV3Plus. In addition, the adversarial training is deployed based on the attention-based segmentation network, and the experimental results show the performance is further advanced with the addition of adversarial learning.
机译:作为基本研究,语义图像分割广泛用于计算机视觉系统。在本文中,我们探讨了语义细分的注意机制,以有效地改善信息的提取和恢复。混合注意力模块专为分割任务而设计,基于关注的网络是XCEP-Tion的编码器和残余连接的解码器的组合。实验在Pascal VOC数据集上进行,所提出的方法优于DCCPLABV3PLUS。此外,基于基于注意力的分割网络部署的对抗性培训,并且实验结果表明性能进一步提升了对抗性学习。

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