点云分析中神经网络的再标定

Ignacio Sarasua, Sebastian Pölsterl, C. Wachinger
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引用次数: 1

摘要

空间和通道重新校准已经成为计算机视觉中一个非常重要的概念。它们捕获远程依赖关系的能力对于那些提取局部特征的网络(如cnn)尤其有用。虽然重新校准在图像分析中得到了广泛的研究,但它还没有被用于形状表示。在这项工作中,我们引入了三维点云的深度神经网络重新校准模块。我们提出了一组重新校准块,扩展了挤压和激励块[11],可以添加到任何网络中进行3D点云分析,通过分层组合来自多个局部邻域的特征来构建全局描述符。我们进行了两组实验来验证我们的方法。首先,我们展示了我们提出的模块的好处和多功能性,将它们纳入三个最先进的3D点云分析网络:pointnet++ [22], DGCNN[29]和RSCNN[18]。我们在两个任务上评估每个网络:ModelNet40上的对象分类和ShapeNet上的对象部分分割。我们的结果表明,与基线方法相比,ModelNet40的精度提高了1%。在第二组实验中,我们研究了重新校准块对阿尔茨海默病(AD)诊断的益处。我们的研究结果表明,我们提出的方法诊断AD的准确率提高了2%,通过事件时间分析预测AD发病的一致性指数提高了2.3%。综上所述,重新校准提高了点云架构的精度,而只增加了最小的参数数量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recalibration of Neural Networks for Point Cloud Analysis
Spatial and channel re-calibration have become powerful concepts in computer vision. Their ability to capture long-range dependencies is especially useful for those networks that extract local features, such as CNNs. While recalibration has been widely studied for image analysis, it has not yet been used on shape representations. In this work, we introduce re-calibration modules on deep neural networks for 3D point clouds. We propose a set of re-calibration blocks that extend Squeeze and Excitation blocks [11] and that can be added to any network for 3D point cloud analysis that builds a global descriptor by hierarchically combining features from multiple local neighborhoods. We run two sets of experiments to validate our approach. First, we demonstrate the benefit and versatility of our proposed modules by incorporating them into three state-of-the-art networks for 3D point cloud analysis: PointNet++ [22], DGCNN [29], and RSCNN [18]. We evaluate each network on two tasks: object classification on ModelNet40, and object part segmentation on ShapeNet. Our results show an improvement of up to 1% in accuracy for ModelNet40 compared to the baseline method. In the second set of experiments, we investigate the benefits of re-calibration blocks on Alzheimer’s Disease (AD) diagnosis. Our results demonstrate that our proposed methods yield a 2% increase in accuracy for diagnosing AD and a 2.3% increase in concordance index for predicting AD onset with time-to-event analysis. Concluding, re-calibration improves the accuracy of point cloud architectures, while only minimally increasing the number of parameters.
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