Aerial-view geo-localization tends to determine an unknown position through matching the drone-view image with the geo-tagged satellite-view image. This task is mostly regarded as an image retrieval problem. The key underpinning this task is to design a series of deep neural networks to learn discriminative image descriptors. However, existing methods meet large performance drops under realistic weather, such as rain and fog, since they do not take the domain shift between the training data and multiple test environments into consideration. To minor this domain gap, we propose a Multiple-environment Self-adaptive Network (MuSe-Net) to dynamically adjust the domain shift caused by environmental changing. In particular, MuSe-Net employs a two-branch neural network containing one multiple-environment style extraction network and one self-adaptive feature extraction network. As the name implies, the multiple-environment style extraction network is to extract the environment-related style information, while the self-adaptive feature extraction network utilizes an adaptive modulation module to dynamically minimize the environment-related style gap. Extensive experiments on two widely-used benchmarks, i.e., University-1652 and CVUSA, demonstrate that the proposed MuSe-Net achieves a competitive result for geo-localization in multiple environments. Furthermore, we observe that the proposed method also shows great potential to the unseen extreme weather, such as mixing the fog, rain and snow.
翻译:空中视图地理定位往往通过将无人机视图图像与地理标记卫星视图图像相匹配来确定一个未知位置。 任务大多被视为图像检索问题。 任务的关键在于设计一系列深神经网络以学习歧视性图像描述器。 但是, 现有方法在现实天气( 如雨和雾)下满足了巨大的性能下降, 因为它们不考虑培训数据与多重测试环境之间的域变。 为了缩小这一域差, 我们提议建立一个多环境自适应网络( MuSe- Net) 以动态地调整环境变化引起的域变。 特别是, MuSe- Net 使用一个包含多环境风格提取网络和一个自我适应性特征提取网络的两层神经网络。 正如这个名称所暗示的那样, 多环境风格提取网络将提取与环境相关的信息, 而自适应性特征提取网络则利用适应性调控调模块, 以动态的方式将环境相关差异降到最小。 在两种广泛使用的基准上进行广泛的实验, 包括多环境采样提取网络和自适应性地平流, 大学 也展示了我们所拟议的高额观测的地理- 。 。