A robust fake satellite image detection method, called Geo-DefakeHop, is proposed in this work. Geo-DefakeHop is developed based on the parallel subspace learning (PSL) methodology. PSL maps the input image space into several feature subspaces using multiple filter banks. By exploring response differences of different channels between real and fake images for a filter bank, Geo-DefakeHop learns the most discriminant channels and uses their soft decision scores as features. Then, Geo-DefakeHop selects a few discriminant features from each filter bank and ensemble them to make a final binary decision. Geo-DefakeHop offers a light-weight high-performance solution to fake satellite images detection. Its model size is analyzed, which ranges from 0.8 to 62K parameters. Furthermore, it is shown by experimental results that it achieves an F1-score higher than 95\% under various common image manipulations such as resizing, compression and noise corruption.
翻译:在这项工作中,提议了一种称为Geo-DefakeHop的强有力的假卫星图像探测方法。Geo-DefakeHop是根据平行的子空间学习方法开发的。PSL将输入图像空间映射成多个使用多个过滤器库的特性子空间。Geo-DefakeHop通过为过滤库探索真实图像和假图像之间不同渠道的反应差异,为过滤器库学习最相异的渠道,并使用其软决定分数作为特征。然后,Geo-DefakeHop从每个过滤库中选择了几个磁性特征,并合起来作出最后的二进制决定。Geo-DefakeHop为假卫星图像探测提供了一种轻量度高性能的解决方案。对模型大小进行了分析,范围在0.8至62K参数之间。此外,实验结果显示,在各种常见的图像操纵下,如重新定位、压缩和噪声腐败,其F1-芯数超过95 ⁇ 。