论文标题
训练有素的模型融合用于使用门控网络的对象检测
Trained Model Fusion for Object Detection using Gating Network
论文作者
论文摘要
计算机视觉中转移学习的主要方法试图使源域一对一地调整到目标域。但是,这种情况很难应用于视频监视系统等真实应用程序。由于这些系统在每个位置都安装了许多摄像头,因此很难识别适当的源域。在本文中,我们介绍了一种新的转移学习方案,该方案具有各种源域和一个目标域,假设视频监视系统集成。另外,我们提出了一种新颖的方法,用于通过融合在各种源域进行训练的模型来自动生产高精度模型。特别是,我们展示了如何将门控网络应用于对象检测任务的融合源域,这是一种新方法。我们通过对交通监视数据集的实验来证明我们的方法的有效性。
The major approaches of transfer learning in computer vision have tried to adapt the source domain to the target domain one-to-one. However, this scenario is difficult to apply to real applications such as video surveillance systems. As those systems have many cameras installed at each location regarded as source domains, it is difficult to identify the proper source domain. In this paper, we introduce a new transfer learning scenario that has various source domains and one target domain, assuming video surveillance system integration. Also, we propose a novel method for automatically producing a high accuracy model by fusing models trained at various source domains. In particular, we show how to apply a gating network to fuse source domains for object detection tasks, which is a new approach. We demonstrate the effectiveness of our method through experiments on traffic surveillance datasets.