Feature Fusion Network Based on Hybrid Attention for Semantic Segmentation

Xinchen Xie, Chen Li, Lihua Tian
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Abstract

In the deep learning based real-time image semantic segmentation task, there are high requirements for the inference speed of the network. Due to the small amounts of parameters of the lightweight backbones, the calculation speed is often faster, which meets the requirements of real-time tasks. However, the ability of the lightweight networks to extract features is relatively weak, resulting in much worse segmentation accuracy than the large model. Therefore, how to make full use of the lightweight networks to extract more image information to achieve better segmentation performance has become a key problem. Here, we propose an efficient feature fusion network based on attention mechanism. First, the widely used MobileNetV2 is selected as the lightweight backbone network, and then spatial attention and channel attention are calculated for both high-resolution low-level features and low-resolution high-level features, thus the final feature map got a global receptive field. Besides, through the multi-levels supervised learning for each stage of the backbone, the multi-stage auxiliary loss function enables the network to be trained more effectively. Finally, on the cityscapes dataset, the our proposed network reached 74.12% mIoU, and the inference speed remained at 110 fps.
基于混合注意的特征融合网络语义分割
在基于深度学习的实时图像语义分割任务中,对网络的推理速度有很高的要求。由于轻型主干的参数较少,计算速度往往更快,满足实时性任务的要求。然而,轻量级网络提取特征的能力相对较弱,导致分割精度远远低于大型模型。因此,如何充分利用轻量级网络提取更多的图像信息,以达到更好的分割性能成为一个关键问题。本文提出了一种基于注意机制的高效特征融合网络。首先,选择广泛使用的MobileNetV2作为轻量级骨干网络,然后分别计算高分辨率低分辨率特征和低分辨率高分辨率特征的空间注意和通道注意,最终得到一个全局接受场的特征图。此外,通过对主干各阶段的多级监督学习,多级辅助损失函数使网络得到更有效的训练。最后,在城市景观数据集上,我们提出的网络达到了74.12%的mIoU,推理速度保持在110 fps。
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