Training neural networks to perform 3D object detection for autonomous driving requires a large amount of diverse annotated data. However, obtaining training data with sufficient quality and quantity is expensive and sometimes impossible due to human and sensor constraints. Therefore, a novel solution is needed for extending current training methods to overcome this limitation and enable accurate 3D object detection. Our solution for the above-mentioned problem combines semi-pseudo-labeling and novel 3D augmentations. For demonstrating the applicability of the proposed method, we have designed a convolutional neural network for 3D object detection which can significantly increase the detection range in comparison with the training data distribution.
翻译:为自动驾驶进行三维物体探测培训神经网络需要大量各种附加说明的数据,然而,获得质量和数量足够的培训数据费用昂贵,有时由于人和传感器的限制而不可能,因此,需要一种新的解决办法来扩大现有的培训方法,以克服这一限制,并能够准确探测三维物体。我们对上述问题的解决方案结合了半假标签和新颖的3D增强功能。为了证明拟议方法的适用性,我们设计了一个3D物体探测动态神经网络,与培训数据分布相比,可以大大增加探测范围。