Deep Neural Networks achieve state-of-the-art results in many different problem settings by exploiting vast amounts of training data. However, collecting, storing and - in the case of supervised learning - labelling the data is expensive and time-consuming. Additionally, assessing the networks' generalization abilities or predicting how the inferred output changes under input transformations is complicated since the networks are usually treated as a black box. Both of these problems can be mitigated by incorporating prior knowledge into the neural network. One promising approach, inspired by the success of convolutional neural networks in computer vision tasks, is to incorporate knowledge about symmetric geometrical transformations of the problem to solve that affect the output in a predictable way. This promises an increased data efficiency and more interpretable network outputs. In this survey, we try to give a concise overview about different approaches that incorporate geometrical prior knowledge into neural networks. Additionally, we connect those methods to 3D object detection for autonomous driving, where we expect promising results when applying those methods.
翻译:深神经网络通过利用大量培训数据,在许多不同的问题环境中取得了最先进的结果。然而,收集、储存和(在有监督的学习情况下)对数据贴标签既费钱又费时。此外,评估网络的概括能力或预测输入转换过程中的推断产出变化如何复杂,因为通常将网络作为黑盒处理。通过将先前的知识纳入神经网络可以减轻这两个问题。在计算机视觉任务中革命性神经网络的成功激励下,一个有希望的方法是,将问题对称几何转换的知识纳入到可以预测的输出中。这保证提高数据效率和更可解释的网络产出。在这项调查中,我们试图简要地概述将几何学知识纳入神经网络的不同方法。此外,我们将这些方法与3D物体自动驱动探测相连接,我们期望在应用这些方法时取得大有希望的结果。</s>