Continual learning on 3D point clouds with random compressed rehearsal

M. Zamorski, Michal Stypulkowski, Konrad Karanowski, Tomasz Trzci'nski, Maciej Ziȩba
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引用次数: 2

Abstract

Contemporary deep neural networks offer state-of-the-art results when applied to visual reasoning, e.g., in the context of 3D point cloud data. Point clouds are important datatype for precise modeling of three-dimensional environments, but effective processing of this type of data proves to be challenging. In the world of large, heavily-parameterized network architectures and continuously-streamed data, there is an increasing need for machine learning models that can be trained on additional data. Unfortunately, currently available models cannot fully leverage training on additional data without losing their past knowledge. Combating this phenomenon, called catastrophic forgetting, is one of the main objectives of continual learning. Continual learning for deep neural networks has been an active field of research, primarily in 2D computer vision, natural language processing, reinforcement learning, and robotics. However, in 3D computer vision, there are hardly any continual learning solutions specifically designed to take advantage of point cloud structure. This work proposes a novel neural network architecture capable of continual learning on 3D point cloud data. We utilize point cloud structure properties for preserving a heavily compressed set of past data. By using rehearsal and reconstruction as regularization methods of the learning process, our approach achieves a significant decrease of catastrophic forgetting compared to the existing solutions on several most popular point cloud datasets considering two continual learning settings: when a task is known beforehand, and in the challenging scenario of when task information is unknown to the model.
持续学习三维点云与随机压缩排练
当代深度神经网络在应用于视觉推理时提供了最先进的结果,例如在3D点云数据的背景下。点云是三维环境精确建模的重要数据类型,但对这类数据的有效处理具有挑战性。在大型、重参数化的网络架构和连续流数据的世界中,对可以在额外数据上进行训练的机器学习模型的需求越来越大。不幸的是,目前可用的模型不能在不失去过去知识的情况下充分利用额外数据的训练。与这种被称为灾难性遗忘的现象作斗争,是持续学习的主要目标之一。深度神经网络的持续学习一直是一个活跃的研究领域,主要是在二维计算机视觉、自然语言处理、强化学习和机器人技术方面。然而,在3D计算机视觉中,几乎没有专门设计的持续学习解决方案来利用点云结构。这项工作提出了一种新的神经网络架构,能够在三维点云数据上持续学习。我们利用点云结构属性来保存一个严重压缩的过去数据集。通过使用排练和重建作为学习过程的正则化方法,我们的方法与考虑两种连续学习设置的几个最流行的点云数据集的现有解决方案相比,实现了灾难性遗忘的显著减少:当任务事先已知时,以及在任务信息对模型未知的挑战性场景中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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