首页> 外文期刊>IEEE Transactions on Image Processing >DeepSkeleton: Learning Multi-Task Scale-Associated Deep Side Outputs for Object Skeleton Extraction in Natural Images
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DeepSkeleton: Learning Multi-Task Scale-Associated Deep Side Outputs for Object Skeleton Extraction in Natural Images

机译:DeepSkeleton:学习多任务与比例相关的深侧输出,以自然图像中进行对象骨架提取

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摘要

Object skeletons are useful for object representation and object detection. They are complementary to the object contour, and provide extra information, such as how object scale (thickness) varies among object parts. But object skeleton extraction from natural images is very challenging, because it requires the extractor to be able to capture both local and non-local image context in order to determine the scale of each skeleton pixel. In this paper, we present a novel fully convolutional network with multiple scale-associated side outputs to address this problem. By observing the relationship between the receptive field sizes of the different layers in the network and the skeleton scales they can capture, we introduce two scale-associated side outputs to each stage of the network. The network is trained by multi-task learning, where one task is skeleton localization to classify whether a pixel is a skeleton pixel or not, and the other is skeleton scale prediction to regress the scale of each skeleton pixel. Supervision is imposed at different stages by guiding the scale-associated side outputs toward the ground-truth skeletons at the appropriate scales. The responses of the multiple scale-associated side outputs are then fused in a scale-specific way to detect skeleton pixels using multiple scales effectively. Our method achieves promising results on two skeleton extraction datasets, and significantly outperforms other competitors. In addition, the usefulness of the obtained skeletons and scales (thickness) are verified on two object detection applications: foreground object segmentation and object proposal detection.
机译:对象骨架对于对象表示和对象检测很有用。它们与对象轮廓互补,并提供了额外的信息,例如对象比例(厚度)在对象部分之间如何变化。但是从自然图像中提取对象骨架非常具有挑战性,因为它要求提取器能够捕获本地和非本地图像上下文,以确定每个骨架像素的比例。在本文中,我们提出了一种新颖的完全卷积网络,该网络具有多个与比例相关的侧面输出,可以解决此问题。通过观察网络中不同层的接收场大小与它们可以捕获的骨架尺度之间的关系,我们为网络的每个阶段引入了两个与尺度相关的侧面输出。该网络通过多任务学习进行训练,其中一项任务是骨骼定位,以对像素是否为骨骼像素进行分类,另一项任务是骨骼比例预测,以回归每个骨骼像素的比例。通过以适当的比例将与比例相关的侧面输出引向真实的骨骼,可以在不同的阶段进行监督。然后,以特定于比例的方式融合多个与比例相关的侧面输出的响应,以有效地使用多个比例来检测骨骼像素。我们的方法在两个骨骼提取数据集上取得了可喜的结果,并且明显优于其他竞争对手。另外,在两个对象检测应用程序上验证了所获得的骨架和比例尺(厚度)的有用性:前景对象分割和对象建议检测。

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