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A Video Semantic Segmentation Method Based on FCN and Data Argumentation

机译:基于FCN和数据论证的视频语义分割方法

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Video semantic segmentation is an important and fundamental problem in computer vision. It has broad application prospects in the fields of mobile robot, drone, intelligent driving and monitoring. With the development of neural networks, the models commonly adopted are all based on full convolutional network (FCN). However, current methods are limited by a small training set, which makes it difficult to improve the segmentation accuracy. In this paper, we propose a robust method that uses different data argumentation methods to increase the data set according to different characteristics of the scene. On the basis of analyzing different video features, targeted data argumentation techniques are selected to increase training samples. Experimental results show that data argumentation techniques can significantly improve the accuracy of video semantic segmentation compared with traditional training methods that ignore video features.
机译:视频语义分割是计算机愿景中的一个重要且基本的问题。它在移动机器人,无人机,智能驾驶和监控领域具有广泛的应用前景。随着神经网络的发展,通常采用的模型全部基于完整的卷积网络(FCN)。然而,目前的方法受小型训练集的限制,这使得难以提高分割精度。在本文中,我们提出了一种强大的方法,该方法使用不同的数据论证方法来增加根据场景的不同特征的数据集。在分析不同的视频特征的基础上,选择有针对性的数据论证技术来增加训练样本。实验结果表明,与忽略视频特征的传统训练方法相比,数据论证技术可以显着提高视频语义细分的准确性。

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