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CurveNet:Curvature-Based Multitask Learning Deep Networks for 3D Object Recognition

机译:授权:基于曲率的多任务学习3D对象识别的深网络

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In computer vision fields,3D object recognition is one of the most important tasks for many real-world applications.Three-dimensional convolutional neural networks(CNNs)have demonstrated their advantages in 3D object recognition.In this paper,we propose to use the principal curvature directions of 3D objects(using a CAD model)to represent the geometric features as inputs for the 3D CNN.Our framework,namely CurveNet,learns perceptually relevant salient features and predicts object class labels.Curvature directions incorporate complex surface information of a 3D object,which helps our framework to produce more precise and discriminative features for object recognition.Multitask learning is inspired by sharing features between two related tasks,where we consider pose classification as an auxiliary task to enable our CurveNet to better generalize object label classification.Experimental results show that our proposed framework using curvature vectors performs better than voxels as an input for 3D object classification.We further improved the performance of CurveNet by combining two networks with both curvature direction and voxels of a 3D object as the inputs.A Cross-Stitch module was adopted to learn effective shared features across multiple representations.We evaluated our methods using three publicly available datasets and achieved competitive performance in the 3D object recognition task.
机译:在计算机视觉领域,3D对象识别是许多真实应用程序最重要的任务之一。三维卷积神经网络(CNNS)已经证明了它们在3D对象识别中的优势。在本文中,我们建议使用本金3D对象的曲率方向(使用CAD模型)将几何特征表示为3D CNN的输入.OR框架,即授权,学习感知上相关的突出特征,并预测对象类标签.Curvature方向包含3D对象的复杂表面信息,这有助于我们的框架为对象识别产生更多的精确度和辨别特征.MultiTask学习是通过在两个相关任务之间共享功能的启发,我们认为将姿势分类为辅助任务,以使我们的豪华性能够更好地概括对象标签分类。实验结果显示我们使用曲率矢量的建议框架比体素更好地作为输入执行对于3D对象分类,我们通过将两个网络与两个曲率方向和3D对象的体素相结合,进一步提高了素材的性能作为输入。采用跨针模块来学习多个表示的有效共享特征。我们评估了我们的方法使用三个公共数据集并在3D对象识别任务中实现了竞争性能。

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