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Data Augmentation Using Part Analysis for Shape Classification

机译:使用零件分析进行形状分类的数据增强

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Deep Convolutional Neural Networks have shown drastic improvements in the performance of various Computer Vision tasks. However, shape classification is a problem that has not seen state-of-the-art results using CNNs. The problem is due to lack of large amounts of data to learn to handle multiple variations such as noise, pose variations, part articulations and affine deformations present in the shapes. In this paper, we introduce a new technique for augmenting 2D shape data that uses part articulations. This utilizes a novel articulation cut detection method to determine putative shape parts. Standard off-the-shelf CNN models trained with our novel data augmentation technique on standard 2D shape datasets yielded significant improvements over the state-of-the-art in most experiments and our data augmentation approach has the potential to be extended to other problems such as Image Classification and Object Detection.
机译:深度卷积神经网络已在各种计算机视觉任务的性能方面取得了显着改善。但是,形状分类是一个尚未使用CNN获得最新结果的问题。该问题是由于缺乏大量数据来学习以处理形状中存在的多种变化(例如噪声,姿势变化,部分关节运动和仿射变形)而引起的。在本文中,我们介绍了一种使用零件关节来增强2D形状数据的新技术。这利用了新颖的咬合切口检测方法来确定推定的形状部分。在大多数实验中,使用我们新颖的数据增强技术在标准2D形状数据集上训练的标准现成CNN模型与大多数现有技术相比,产生了重大改进,并且我们的数据增强方法有可能扩展到其他问题,例如作为图像分类和目标检测。

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