Scarcity of training data is one of the prominent problems for deep networks which require large amounts data. Data augmentation is a widely used method to increase the number of training samples and their variations. In this paper, we focus on improving vehicle detection performance in aerial images and propose a generative augmentation method which does not need any extra supervision than the bounding box annotations of the vehicle objects in the training dataset. The proposed method increases the performance of vehicle detection by allowing detectors to be trained with higher number of instances, especially when there are limited number of training instances. The proposed method is generic in the sense that it can be integrated with different generators. The experiments show that the method increases the Average Precision by up to 25.2% and 25.7% when integrated with Pluralistic and DeepFill respectively.
翻译:缺乏培训数据是深层网络的突出问题之一,深层网络需要大量数据。数据扩增是广泛使用的增加培训样本数量及其变异的方法。在本文中,我们侧重于提高飞行器在航空图像中的探测性能,并提出一种基因增强方法,该方法不需要比培训数据集中车辆物体的捆绑框说明额外的监督。拟议方法通过允许探测器接受更多次的培训来提高车辆探测性能,特别是在培训次数有限的情况下。拟议方法具有通用性,可以与不同的发电机相结合。实验表明,该方法在与多元学和深海法相结合时,将平均精度分别提高到25.2%和25.7%。