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3D Object Recognition with Ensemble Learning—A Study of Point Cloud-Based Deep Learning Models

机译:集成学习的3D对象识别-基于点云的深度学习模型的研究

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In this study, we present an analysis of model-based ensemble learning for 3D point-cloud object classification. An ensemble of multiple model instances is known to outperform a single model instance, but there is little study of the topic of ensemble learning for 3D point clouds. First, an ensemble of multiple model instances trained on the same part of the ModelNet40 dataset was tested for seven deep learning, point cloud-based classification algorithms: PointNet, PointNet++, SO-Net, KCNet, DeepSets, DGCNN, and PointCNN. Second, the ensemble of different architectures was tested. Results of our experiments show that the tested ensemble learning methods improve over state-of-the-art on the ModelNet40 dataset, from 92.65% to 93.64% for the ensemble of single architecture instances, 94.03% for two different architectures, and 94.15% for five different architectures. We show that the ensemble of two models with different architectures can be as effective as the ensemble of 10 models with the same architecture. Third, a study on classic bagging (i.e. with different subsets used for training multiple model instances) was tested and sources of ensemble accuracy growth were investigated for best-performing architecture, i.e. SO-Net. We measure the inference time of all 3D classification architectures on a Nvidia Jetson TX2, a common embedded computer for mobile robots, to allude to the use of these models in real-life applications.
机译:在这项研究中,我们对3D点云对象分类的基于模型的集成学习进行了分析。已知多个模型实例的集成要优于单个模型实例,但是对3D点云的集成学习这一主题的研究很少。首先,对在ModelNet40数据集的同一部分上训练的多个模型实例的集合进行了测试,以测试七种基于点云的深度学习分类算法:PointNet,PointNet ++,SO-Net,KCNet,DeepSets,DGCNN和PointCNN。其次,测试了不同体系结构的合奏。我们的实验结果表明,经过测试的集成学习方法相对于ModelNet40数据集的最新水平有所提高,单个体系结构实例的集成从92.65%提高到93.64%,两个不同体系结构的集成从94.03%提高到94.15%。五个不同的架构。我们表明,具有不同体系结构的两个模型的集合可以与具有相同体系结构的10个模型的集合一样有效。第三,测试了一项关于经典袋装的研究(即使用不同的子集来训练多个模型实例),并研究了整体准确性增长的来源,以获取最佳性能的体系结构,即SO-Net。我们在Nvidia Jetson TX2(用于移动机器人的通用嵌入式计算机)上测量所有3D分类架构的推断时间,以暗示这些模型在现实应用中的使用。

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