The growing operational capability of global Earth Observation (EO) creates new opportunities for data-driven approaches to understand and protect our planet. However, the current use of EO archives is very restricted due to the huge archive sizes and the limited exploration capabilities provided by EO platforms. To address this limitation, we have recently proposed MiLaN, a content-based image retrieval approach for fast similarity search in satellite image archives. MiLaN is a deep hashing network based on metric learning that encodes high-dimensional image features into compact binary hash codes. We use these codes as keys in a hash table to enable real-time nearest neighbor search and highly accurate retrieval. In this demonstration, we showcase the efficiency of MiLaN by integrating it with EarthQube, a browser and search engine within AgoraEO. EarthQube supports interactive visual exploration and Query-by-Example over satellite image repositories. Demo visitors will interact with EarthQube playing the role of different users that search images in a large-scale remote sensing archive by their semantic content and apply other filters.
翻译:全球地球观测(EO)日益增强的操作能力为以数据驱动的方式理解和保护我们的地球创造了新的机会。然而,由于EO平台提供的档案规模巨大,而且探索能力有限,目前对EO档案的使用非常有限。为解决这一局限性,我们最近提议了MiLAN,这是一个基于内容的图像检索方法,用于在卫星图像档案中进行快速相似的搜索。MiLAN是一个深度的散射网络,其基础是将高维图像特征编码纳入紧凑的二进制散列编码。我们用这些编码作为散列表格的钥匙,以便实时近邻搜索和高度准确检索。在这个演示中,我们展示了MILAN的效率,将其与AgoraEO内的浏览器和搜索引擎EarthQube结合起来。EarthQube支持交互式视觉探索和在卫星图像储存库中逐字根逐字。Demo访问者将与不同用户进行互动,这些用户的作用是通过其语义内容在大型遥感档案中搜索图像并应用其他过滤器。