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Revisiting Sequence-to-Sequence Video Object Segmentation with Multi-Task Loss and Skip-Memory

机译:使用多任务丢失和跳过内存重新探讨序列到序列视频对象分割

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Video Object Segmentation (VOS) is an active research area of the visual domain. One of its fundamental subtasks is semi-supervised / one-shot learning: given only the segmentation mask for the first frame, the task is to provide pixel-accurate masks for the object over the rest of the sequence. Despite much progress in the last years, we noticed that many of the existing approaches lose objects in longer sequences, especially when the object is small or briefly occluded. In this work, we build upon a sequence-to-sequence approach that employs an encoder-decoder architecture together with a memory module for exploiting the sequential data. We further improve this approach by proposing a model that manipulates multiscale spatio-temporal information using memory-equipped skip connections. Furthermore, we incorporate an auxiliary task based on distance classification which greatly enhances the quality of edges in segmentation masks. We compare our approach to the state of the art and show considerable improvement in the contour accuracy metric and the overall segmentation accuracy. Our source code and the pre-trained weights are publicly available11https://github.com/fatemehazimi990/RS2S.
机译:视频对象分段(VOS)是视域的主动研究区域。其中一个基本子组织是半监督/单次学习:仅给出第一帧的分割掩码,任务是在序列的其余部分上为物体提供像素准确的掩模。尽管过去几年有很大进展,但我们注意到许多现有方法丢失了更长序列中的物体,特别是当物体小或短暂遮挡时。在这项工作中,我们基于序列到序列方法,该方法采用编码器 - 解码器架构以及用于利用顺序数据的存储器模块。我们通过提出使用设备的跳过连接操作多尺度时空信息的模型进一步提高了这种方法。此外,我们通过距离分类纳入辅助任务,从而大大提高了分割掩模的边缘的质量。我们比较我们对现有技术的方法,并表现出相当大的改进等高精度度量和整体分割精度。我们的源代码和预先训练的重量是公开可用的 1 1 https://github.com/fatemehazimi990/rs2s。

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