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Context Contrasted Feature and Gated Multi-scale Aggregation for Scene Segmentation

机译:用于场景分割的上下文对比特征和门控多尺度聚合

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Scene segmentation is a challenging task as it need label every pixel in the image. It is crucial to exploit discriminative context and aggregate multi-scale features to achieve better segmentation. In this paper, we first propose a novel context contrasted local feature that not only leverages the informative context but also spotlights the local information in contrast to the context. The proposed context contrasted local feature greatly improves the parsing performance, especially for inconspicuous objects and background stuff. Furthermore, we propose a scheme of gated sum to selectively aggregate multi-scale features for each spatial position. The gates in this scheme control the information flow of different scale features. Their values are generated from the testing image by the proposed network learnt from the training data so that they are adaptive not only to the training data, but also to the specific testing image. Without bells and whistles, the proposed approach achieves the state-of-the-arts consistently on the three popular scene segmentation datasets, Pascal Context, SUN-RGBD and COCO Stuff.
机译:场景分割是一项具有挑战性的任务,因为它需要标记图像中的每个像素。利用区分性上下文和聚合多尺度特征以实现更好的细分至关重要。在本文中,我们首先提出了一种新颖的上下文对比局部特​​征,该特征不仅利用了信息性上下文,而且还突出了与上下文形成对比的局部信息。所提出的上下文对比局部特​​征极大地提高了解析性能,尤其是对于不显眼的对象和背景素材而言。此外,我们提出了一个门控总和方案,以针对每个空间位置有选择地聚合多尺度特征。此方案中的门​​控制着不同比例尺特征的信息流。它们的值是由建议的网络从训练数据中从测试图像中生成的,从而使它们不仅适应训练数据,而且还适应于特定的检测图像。无需花哨的技巧,所提出的方法就可以在三个流行的场景分割数据集Pascal Context,SUN-RGBD和COCO Stuff上始终达到最新技术水平。

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