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Recurrent Fully Convolutional Networks for Video Segmentation

机译:递归全卷积网络的视频分割

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Image segmentation is an important step in most visual tasks. While convolutional neural networks have shown to perform well on single image segmentation, to our knowledge, no study has been done on leveraging recurrent gated architectures for video segmentation. Accordingly, we propose and implement a novel method for online segmentation of video sequences that incorporates temporal data. The network is built from a fully convolutional network and a recurrent unit that works on a sliding window over the temporal data. We use convolutional gated recurrent unit that preserves the spatial information and reduces the parameters learned. Our method has the advantage that it can work in an online fashion instead of operating over the whole input batch of video frames. The network is tested on video segmentation benchmarks in Segtrack V2 and Davis. It proved to have 5% improvement in Segtrack and 3% improvement in Davis in F-measure over a plain fully convolutional network.
机译:图像分割是大多数视觉任务中的重要步骤。尽管卷积神经网络已显示在单图像分割上表现良好,但据我们所知,还没有关于利用递归门控架构进行视频分割的研究。因此,我们提出并实现了一种新的方法,该方法对包含时间数据的视频序列进行在线分割。该网络由全卷积网络和循环单元构建,该循环单元在时间数据上的滑动窗口上工作。我们使用卷积门控循环单元来保留空间信息并减少学习到的参数。我们的方法的优势在于,它可以以在线方式工作,而不是对整个输入视频帧进行操作。该网络已在Segtrack V2和Davis中的视频分段基准上进行了测试。事实证明,在一个普通的全卷积网络上,F-measure的Segtrack改善了5%,Davis改善了3%。

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