论文标题

通过快速的视频序列细分,在不利天气条件下进行稳健的语义细分

Robust Semantic Segmentation in Adverse Weather Conditions by means of Fast Video-Sequence Segmentation

论文作者

Pfeuffer, Andreas, Dietmayer, Klaus

论文摘要

在良好的天气条件下,诸如语义细分之类的计算机视觉任务效果很好,但是如果天气变糟,则在这些条件下会有问题。在不利天气条件下获得更强大和可靠的结果的一种可能性是使用视频分割方法,而不是常用的单图像分割方法。视频细分方法除了当前的图像信息外,还捕获了先前视频框架的时间信息,因此,它们对干扰更强大,尤其是在视频序列的几帧中出现的情况下。但是,由于网络中的复发结构的计算昂贵,因此通常不再基于经常性神经网络的视频细分方法不再应用于实时应用程序。例如,与基本ICNET相比,LSTM-ICNET的推理时间在单分割方法ICNET中的适当位置放置在适当位置的推理时间。因此,在这项工作中,LSTM-ICNET是通过修改网络的复发单元来加速的,从而使其再次实时能够。在不同的数据集和各种天气条件上进行的实验表明,这些修改可以减少约23%的推理时间,而它们的性能与LSTM-ICNET相似,并且在不利的天气条件下极大地表现了单分割方法。

Computer vision tasks such as semantic segmentation perform very well in good weather conditions, but if the weather turns bad, they have problems to achieve this performance in these conditions. One possibility to obtain more robust and reliable results in adverse weather conditions is to use video-segmentation approaches instead of commonly used single-image segmentation methods. Video-segmentation approaches capture temporal information of the previous video-frames in addition to current image information, and hence, they are more robust against disturbances, especially if they occur in only a few frames of the video-sequence. However, video-segmentation approaches, which are often based on recurrent neural networks, cannot be applied in real-time applications anymore, since their recurrent structures in the network are computational expensive. For instance, the inference time of the LSTM-ICNet, in which recurrent units are placed at proper positions in the single-segmentation approach ICNet, increases up to 61 percent compared to the basic ICNet. Hence, in this work, the LSTM-ICNet is sped up by modifying the recurrent units of the network so that it becomes real-time capable again. Experiments on different datasets and various weather conditions show that the inference time can be decreased by about 23 percent by these modifications, while they achieve similar performance than the LSTM-ICNet and outperform the single-segmentation approach enormously in adverse weather conditions.

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