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Deep Learning Based Semantic Segmentation for Nighttime Image

机译:基于深度学习的夜间图像的语义分割

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Semantic segmentation of nighttime images has become an interesting research topic recently. In this work, we focus on semantic object recognition for nighttime driving scenes. The paper proposes a method to adapt the semantic models trained on daytime scenes to nighttime scenes through twilight time. In this process, the Pyramid Scene Parsing Network (PSPNet) model is suggested to provide an advanced framework for pixel prediction. The goal of the method is to reduce the cost of human annotation for nighttime scenes by transferring knowledge from typical daytime illumination conditions. Our model is trained and tested on the Cityscape dataset which is recorded in street scenes and intended for assessing the performance of vision algorithms for major tasks of semantic urban scene understanding. The proposed PSPNet model yields a mIoU record of 44.9% on nighttime driving scenes. Our experiments show that the proposed method is effective for knowledge transfer from daytime scenes to nighttime scenes without using additional human annotation. Further analysis on the proposed method has been presented in this study.
机译:夜间图像的语义分割已成为最近有趣的研究主题。在这项工作中,我们专注于夜间驾驶场景的语义对象识别。本文提出了一种调整在白天场景上培训的语义模型的方法,通过暮光之城的时间来训练。在该过程中,建议金字塔场景解析网络(PSPNET)模型为像素预测提供高级框架。该方法的目标是通过从典型的日间照明条件转移知识来降低夜间场景的人类注释的成本。我们的模型在城市景观数据集上培训并测试,该数据集被录制在街道场景中,并用于评估视觉算法的性能,以实现语义城市场景的主要任务。建议的PSPNet模型在夜间驾驶场景中产生44.9%的MiOU记录。我们的实验表明,该方法对于从白天场景到夜间场景的知识转移是有效的,而不使用额外的人类注释。本研究提出了关于所提出的方法的进一步分析。

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