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Region-Based Semantic Segmentation with End-to-End Training

机译:端到端训练的基于区域的语义分割

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We propose a novel method for semantic segmentation, the task of labeling each pixel in an image with a semantic class. Our method combines the advantages of the two main competing paradigms. Methods based on region classification offer proper spatial support for appearance measurements, but typically operate in two separate stages, none of which targets pixel labeling performance at the end of the pipeline. More recent fully convolutional methods are capable of end-to-end training for the final pixel labeling, but resort to fixed patches as spatial support. We show how to modify modern region-based approaches to enable end-to-end training for semantic segmentation. This is achieved via a differentiable region-to-pixel layer and a differentiable free-form Region-of-Interest pooling layer. Our method improves the state-of-the-art in terms of class-average accuracy with 64.0 % on SIFT Flow and 49.9 % on PASCAL Context, and is particularly accurate at object boundaries.
机译:我们提出了一种语义分割的新方法,即使用语义类标记图像中的每个像素。我们的方法结合了两个主要竞争范例的优点。基于区域分类的方法为外观测量提供了适当的空间支持,但是通常在两个单独的阶段中操作,这些阶段都不以流水线末端的像素标记性能为目标。最新的完全卷积方法能够对最终的像素标记进行端到端训练,但是诉诸于固定的补丁作为空间支持。我们展示了如何修改基于区域的现代方法,以实现语义分割的端到端训练。这是通过可区分的区域到像素层和可区分的自由形式的兴趣区域合并层来实现的。我们的方法在类平均准确度方面提高了最新水平,SIFT Flow的准确度为64.0%,PASCAL上下文的准确度为49.9%,并且在对象边界特别准确。

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