IEEE Trans Image Process. 2016 Apr;25(4):1556-65. doi: 10.1109/TIP.2016.2526902. Epub 2016 Feb 8.
Semi-variogram estimators and distortion measures of signal spectra are utilized in this paper for image texture retrieval. On the use of the complete Brodatz database, most high retrieval rates are reportedly based on multiple features and the combinations of multiple algorithms, while the classification using single features is still a challenge to the retrieval of diverse texture images. The semi-variogram, which is theoretically sound and the cornerstone of spatial statistics, has the characteristics shared between true randomness and complete determinism and, therefore, can be used as a useful tool for both the structural and statistical analysis of texture images. Meanwhile, spectral distortion measures derived from the theory of linear predictive coding provide a rigorously mathematical model for signal-based similarity matching and have been proven useful for many practical pattern classification systems. Experimental results obtained from testing the proposed approach using the complete Brodatz database, and the the University of Illinois at Urbana-Champaign texture database suggests the effectiveness of the proposed approach as a single-feature-based dissimilarity measure for real-time texture retrieval.
本文利用半变异函数估计器和信号频谱失真度量来进行图像纹理检索。在使用完整的布罗达茨(Brodatz)数据库的情况下,据报道,大多数高检索率都是基于多种特征和多种算法的组合,而使用单一特征进行分类仍然是对不同纹理图像检索的挑战。半变异函数是空间统计学的理论基础,具有真实随机性和完全确定性之间的共同特征,因此可以作为纹理图像结构和统计分析的有用工具。同时,源自线性预测编码理论的频谱失真度量为基于信号的相似性匹配提供了严格的数学模型,并已被证明对许多实际模式分类系统有用。使用完整的布罗达茨数据库和伊利诺伊大学厄巴纳-香槟分校纹理数据库进行测试所获得的实验结果表明,该方法作为基于单一特征的实时纹理检索相似度度量的有效性。