Remote sensing (RS) images are usually stored in compressed format to reduce the storage size of the archives. Thus, existing content-based image retrieval (CBIR) systems in RS require decoding images before applying CBIR (which is computationally demanding in the case of large-scale CBIR problems). To address this problem, in this paper, we present a joint framework that simultaneously learns RS image compression and indexing. Thus, it eliminates the need for decoding RS images before applying CBIR. The proposed framework is made up of two modules. The first module compresses RS images based on an auto-encoder architecture. The second module produces hash codes with a high discrimination capability by employing soft pairwise, bit-balancing and classification loss functions. We also introduce a two stage learning strategy with gradient manipulation techniques to obtain image representations that are compatible with both RS image indexing and compression. Experimental results show the efficacy of the proposed framework when compared to widely used approaches in RS. The code of the proposed framework is available at https://git.tu-berlin.de/rsim/RS-JCIF.
翻译:遥感(RS)图像通常以压缩格式存储,以减少档案的存储规模,因此,在应用CBIR(对于大规模CBIR问题,计算要求很高)之前,RSS现有基于内容的图像检索系统需要解码图像(CBIR),为了解决这一问题,本文件提出了同时学习RS图像压缩和索引的联合框架,从而消除了在应用CBIR之前解码RS图像的需要。拟议框架由两个模块组成。第一个模块根据自动编码结构压缩RS图像。第二个模块通过使用软对对对、位平衡和分类损失功能,生成具有高度歧视能力的集成代码。我们还引入了两个阶段学习战略,采用梯度操纵技术,以获得与RS图像索引和压缩兼容的图像显示。实验结果显示,与RS广泛使用的方法相比,拟议框架的有效性。拟议框架的代码见https://git.tu-berlin.de/rsim/RS-JIF。