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DANCE : A Deep Attentive Contour Model for Efficient Instance Segmentation

机译:舞蹈:高效实例分割的深度周度轮廓模型

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Contour-based instance segmentation methods are attractive due to their efficiency. However, existing contour-based methods either suffer from lossy representation, complex pipeline or difficulty in model training, resulting in sub-par mask accuracy on challenging datasets like MS-COCO. In this work, we propose a novel deep attentive contour model, named DANCE, to achieve better instance segmentation accuracy while remaining good efficiency. To this end, DANCE applies two new designs: attentive contour deformation to refine the quality of segmentation contours and segment-wise matching to ease the model training. Comprehensive experiments demonstrate DANCE excels at deforming the initial contour in a more natural and efficient way towards the real object boundaries. Effectiveness of DANCE is also validated on the COCO dataset, which achieves 38.1% mAP and outperforms all other contour-based instance segmentation models. To the best of our knowledge, DANCE is the first contour-based model that achieves comparable performance to pixel-wise segmentation models. Code is available at https://github.com/lkevinzc/dance.
机译:基于轮廓的实例分段方法由于其效率而具有吸引力。然而,现有的基于轮廓的方法遭受有损的表示,复杂的管道或模型训练的困难,导致子对掩模准确性在MS-Coco等具有挑战性的数据集上。在这项工作中,我们提出了一种新颖的深度细分轮廓模型,命名舞蹈,以实现更好的实例分割准确性,同时保持良好的效率。为此,舞蹈应用两种新设计:细心的轮廓变形,优化分割轮廓的质量和分段 - 明智匹配,以便于模型培训。综合实验展示舞蹈优势在更加自然和有效地朝向真实物体边界的初始轮廓变形。 Coco DataSet还验证了舞蹈的有效性,该数据集达到了38.1%的地图和优于所有其他基于轮廓的实例分段模型。据我们所知,舞蹈是第一个基于轮廓的模型,实现了与像素 - 明智的分割模型相当的性能。代码可在https://github.com/lkevinzc/dance提供。

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