Large-scale remote sensing (RS) image search and retrieval have recently attracted great attention, due to the rapid evolution of satellite systems, that results in a sharp growing of image archives. An exhaustive search through linear scan from such archives is time demanding and not scalable in operational applications. To overcome such a problem, this paper introduces hashing-based approximate nearest neighbor search for fast and accurate image search and retrieval in large RS data archives. The hashing aims at mapping high-dimensional image feature vectors into compact binary hash codes, which are indexed into a hash table that enables real-time search and accurate retrieval. Such binary hash codes can also significantly reduce the amount of memory required for storing the RS images in the auxiliary archives. In particular, in this paper, we introduce in RS two kernel-based nonlinear hashing methods. The first hashing method defines hash functions in the kernel space by using only ...
Thomas ReatoBegüm DemirLorenzo Bruzzone
Peng LiXiaoyu ZhangXiaobin ZhuPeng Ren
Xu TangChao LiuJingjing MaXiangrong ZhangFang LiuLicheng Jiao
Xu TangYuqun YangJingjing MaYiu‐ming CheungChao LiuFang LiuXiangrong ZhangLicheng Jiao