We present a method to search for a probe (or query) image representation against a large gallery in the encrypted domain. We require that the probe and gallery images be represented in terms of a fixed-length representation, which is typical for representations obtained from learned networks. Our encryption scheme is agnostic to how the fixed-length representation is obtained and can therefore be applied to any fixed-length representation in any application domain. Our method, dubbed HERS (Homomorphically Encrypted Representation Search), operates by (i) compressing the representation towards its estimated intrinsic dimensionality with minimal loss of accuracy (ii) encrypting the compressed representation using the proposed fully homomorphic encryption scheme, and (iii) efficiently searching against a gallery of encrypted representations directly in the encrypted domain, without decrypting them. Numerical results on large galleries of face, fingerprint, and object datasets such as ImageNet show that, for the first time, accurate and fast image search within the encrypted domain is feasible at scale (500 seconds; $275\times$ speed up over state-of-the-art for encrypted search against a gallery of 100 million). Code is available at https://github.com/human-analysis/hers-encrypted-image-search
翻译:我们提出了一个方法,用来在加密域内的大画廊上寻找探测器(或查询)图像代表。我们要求探测器和画廊图像以固定长度代表方式代表,这是从学习网络中获得的典型代表方式。我们的加密方案对如何获得固定长度代表方式是不可知的,因此可以适用于任何应用域中的任何固定长度代表方式。我们的方法称为HERS(人工加密代表方式搜索),其操作方式是:(一) 将代表形式压缩到其估计的内在维度,并尽可能降低准确性;(二) 使用拟议的完全同色加密办法加密压缩代表方式,并(三) 在加密域直接对加密代表方式的画廊进行高效搜索,而不对其进行解密。在脸部、指纹和图像网等任何物体数据集的大型画廊上,其数字显示,在加密域内进行准确和快速图像搜索,首次可以达到规模(500秒;275美元时间,用于在最短的精确程度上加快艺术水平,用于对100万英美的画廊进行加密搜索。