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EdgeNet: Deep metric learning for 3D shapes

机译:Edgenet:3D形状深度度量学习

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We introduce EdgeNet, a metric learning architecture for extracting semantic local shape features, directly applicable to a wide range of shape analysis applications such as point matching, object classification, shape segmentation, and partial registration. EdgeNet is based on a novel technique to keep edge-wise correspondences in the deep feature space and encodes the local structure into the learned features. It is trained under the supervision of edge-wise correspondences by using the 3D coordinates. The training loss combines a bi-triplet loss to enforce feature variations between the semantic matching points in the feature space, a transformation loss to encourage consistency between corresponding edges after alignment transformation, and a smoothness loss guarantees the flatness between the nearest points in the feature space. The learned features are proved to encode local content, structure, and asymmetry for 3D shapes. Our network can be adapted to either 3D meshes or point clouds. We compare the performance of the EdgeNet with existing state-of-the-art approaches and demonstrate the efficiency and efficacy of EdgeNet in three shape analysis tasks, including shape segmentation, partial matching, and shape retrieval. (C) 2019 Elsevier B.V. All rights reserved.
机译:我们介绍Edgenet,一个用于提取语义局部形状特征的度量学习架构,可直接适用于各种形状分析应用,例如点匹配,对象分类,形状分割和部分注册。 Edgenet基于一种新颖的技术来保持深度特征空间中的边缘和对应的对应关系,并将本地结构编码为学习特征。通过使用3D坐标,在边缘方向的监督下进行培训。训练损失结合了双倍三态丢失来强制特征空间中的语义匹配点之间的特征变化,转换丢失,以鼓励对准变换后相应边缘之间的一致性,并且平滑度损失保证了特征中最接近点之间的平坦度空间。证明了学习的特征来编码3D形状的本地内容,结构和不对称性。我们的网络可以适用于3D网格或点云。我们将Edgenet与现有最先进的方法的性能进行比较,并展示Edgenet在三种形状分析任务中的效率和功效,包括形状分割,部分匹配和形状检索。 (c)2019 Elsevier B.v.保留所有权利。

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