IPC-Net: 3D Point-Cloud Segmentation Using Deep Inter-Point Convolutional Layers

F. Marulanda, P. Libin, T. Verstraeten, A. Nowé
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引用次数: 4

Abstract

Over the last decade, the demand for better segmentation and classification algorithms in 3D spaces has significantly grown due to the popularity of new 3D sensor technologies and advancements in the field of robotics. Point-clouds are one of the most popular representations to store a digital description of 3D shapes. However, point-clouds are stored in irregular and unordered structures, which limits the direct use of segmentation algorithms such as Convolutional Neural Networks. The objective of our work is twofold: First, we aim to provide a full analysis of the PointNet architecture to illustrate which features are being extracted from the point-clouds. Second, to propose a new network architecture called IPC-Net to improve the state-of-the-art point cloud architectures. We show that IPC-Net extracts a larger set of unique features allowing the model to produce more accurate segmentations compared to the PointNet architecture. In general, our approach outperforms PointNet on every family of 3D geometries on which the models were tested. A high generalisation improvement was observed on every 3D shape, especially on the rockets dataset. Our experiments demonstrate that our main contribution, inter-point activation on the network's layers, is essential to accurately segment 3D point-clouds.
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使用深度点间卷积层的三维点云分割
在过去的十年中,由于新的3D传感器技术的普及和机器人领域的进步,对3D空间中更好的分割和分类算法的需求显着增长。点云是存储三维形状的数字描述的最流行的表示之一。然而,点云存储在不规则和无序的结构中,这限制了卷积神经网络等分割算法的直接使用。我们工作的目标是双重的:首先,我们的目标是提供PointNet架构的完整分析,以说明从点云中提取了哪些特征。第二,提出一种新的网络架构IPC-Net,以改进目前最先进的点云架构。我们表明,与PointNet架构相比,IPC-Net提取了更大的独特特征集,使模型能够产生更准确的分割。总的来说,我们的方法在测试模型的每个3D几何图形上都优于PointNet。在每个3D形状上都观察到高泛化改进,特别是在火箭数据集上。我们的实验表明,我们的主要贡献,网络层上的点间激活,对于准确分割3D点云是必不可少的。
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