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Limited Receptive Field Network for Real-Time Driving Scene Semantic Segmentation

机译:有限的接收现场网络,用于实时驾驶场景语义分割

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Most existing real time semantic segmentation models focus on leveraging global context information and large receptive field. However, these undoubtedly introduce more computational cost and limit the inference speed. Inspired by the mechanism of human eyes, we propose a novel Limited Receptive Field Network (LRFNet) which achieves a good balance between the segmentation speed and accuracy. Specifically, we design two sub-encoders: the fine encoder which encodes sufficient context information, and the coarse encoder which supplements spatial information. In order to recover high-resolution accurate outputs, we fuse the features from the two sub-encoders followed by a lightweight decoder. Extensive comparative evaluations demonstrate the advantages of our LRFNet model for real-time driving scene semantic segmentation task over many state-of-the-art methods on two standard benchmarks (Cityscapes, CamVid).
机译:大多数现有的实时语义细分模型专注于利用全球背景信息和大型接收领域。但是,这些无疑引入了更多的计算成本并限制推广速度。灵感来自人眼机制,我们提出了一种新的有限接收领域网络(LRFNET),该网络(LRFNET)在分割速度和准确性之间实现了良好的平衡。具体而言,我们设计了两个子编码器:编码足够的上下文信息的精细编码器,以及补充空间信息的粗编码器。为了恢复高分辨率准确的输出,我们融合了两个子编码器的功能,然后是轻量级解码器。广泛的比较评估表明我们的LRFNET模型在两个标准基准上的许多最先进的方法(Citycapes,Camvid)上的许多最先进方法的实时驾驶场景语义分割任务的优势。

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