Deng Weihong, Hu Jiani, Guo Jun
IEEE Trans Pattern Anal Mach Intell. 2019 Mar;41(3):758-767. doi: 10.1109/TPAMI.2018.2800008. Epub 2018 Jan 31.
A binary descriptor typically consists of three stages: image filtering, binarization, and spatial histogram. This paper first demonstrates that the binary code of the maximum-variance filtering responses leads to the lowest bit error rate under Gaussian noise. Then, an optimal eigenfilter bank is derived from a universal assumption on the local stationary random field. Finally, compressive binary patterns (CBP) is designed by replacing the local derivative filters of local binary patterns (LBP) with these novel random-field eigenfilters, which leads to a compact and robust binary descriptor that characterizes the most stable local structures that are resistant to image noise and degradation. A scattering-like operator is subsequently applied to enhance the distinctiveness of the descriptor. Surprisingly, the results obtained from experiments on the FERET, LFW, and PaSC databases show that the scattering CBP (SCBP) descriptor, which is handcrafted by only 6 optimal eigenfilters under restrictive assumptions, outperforms the state-of-the-art learning-based face descriptors in terms of both matching accuracy and robustness. In particular, on probe images degraded with noise, blur, JPEG compression, and reduced resolution, SCBP outperforms other descriptors by a greater than 10 percent accuracy margin.
图像滤波、二值化和空间直方图。本文首先证明,在高斯噪声下,最大方差滤波响应的二进制码导致最低的误码率。然后,从局部平稳随机场的一个通用假设中推导出一个最优特征滤波器组。最后,通过用这些新颖的随机场特征滤波器替换局部二值模式(LBP)的局部导数滤波器来设计压缩二进制模式(CBP),这导致了一个紧凑且鲁棒的二进制描述符,它表征了对图像噪声和退化具有抗性的最稳定局部结构。随后应用一个类似散射的算子来增强描述符的独特性。令人惊讶的是,在FERET、LFW和PaSC数据库上的实验结果表明,在严格假设下仅由6个最优特征滤波器手工制作的散射CBP(SCBP)描述符在匹配精度和鲁棒性方面均优于当前基于学习的面部描述符。特别是,在受到噪声、模糊、JPEG压缩和分辨率降低影响的探测图像上,SCBP的准确率比其他描述符高出10%以上。