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ACNET: Attention Based Network to Exploit Complementary Features for RGBD Semantic Segmentation

机译:ACNET:基于注意力的网络可利用互补特征进行RGBD语义分割

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Compared to RGB semantic segmentation, RGBD semantic segmentation can achieve better performance by taking depth information into consideration. However, it is still problematic for contemporary segmenters to effectively exploit RGBD information since the feature distributions of RGB and depth (D) images vary significantly in different scenes. In this paper, we propose an Attention Complementary Network (ACNet) that selectively gathers features from RGB and depth branches. The main contributions lie in the Attention Complementary Module (ACM) and the architecture with three parallel branches. More precisely, ACM is a channel attention-based module that extracts weighted features from RGB and depth branches. The architecture preserves the inference of the original RGB and depth branches, and enables the fusion branch at the same time. Based on the above structures, ACNet is capable of exploiting more high-quality features from different channels. We evaluate our model on SUN-RGBD and NYUDv2 datasets, and prove that our model outperforms state-of-the-art methods. In particular, a mIoU score of 48.3% on NYUDv2 test set is achieved with ResNet50. We will release our source code based on PyTorch and the trained segmentation model at https://github.com/anheidelonghu/ACNet.
机译:与RGB语义分割相比,RGBD语义分割可以通过考虑深度信息来实现更好的性能。然而,由于RGB和深度(D)图像的特征分布在不同的场景中,当代分段器有效地利用RGBD信息仍然存在问题。在本文中,我们提出了一种关注互补网络(ACNET),从而选择性地收集RGB和深度分支的特征。主要贡献位于注意互补模块(ACM)和具有三个平行分支的架构。更准确地说,ACM是一种基于渠道的模块,可以从RGB和深度分支中提取加权功能。该体系结构保留原始RGB和深度分支的推断,并同时启用融合分支。基于上述结构,ACNET能够利用来自不同通道的更高质量的功能。我们评估我们在Sun-RGBD和Nyudv2数据集上的模型,并证明我们的模型优于最先进的方法。特别是,通过Reset50实现了Nyudv2测试集的Miou评分48.3%。我们将根据Pytorch和Https://github.com/anheidelonghu/Acnet的训练分段模型发布我们的源代码。

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