Alkhatib Mohammad, Hafiane Adel
IEEE Trans Image Process. 2019 Nov;28(11):5407-5418. doi: 10.1109/TIP.2019.2916742. Epub 2019 May 20.
Texture is an important characteristic for different computer vision tasks and applications. Local binary pattern (LBP) is considered one of the most efficient texture descriptors yet. However, LBP has some notable limitations, in particular its sensitivity to noise. In this paper, we address these criteria by introducing a novel texture descriptor, robust adaptive median binary pattern (RAMBP). RAMBP is based on a process involving classification of noisy pixels, adaptive analysis window, scale analysis, and a comparison of image medians. The proposed method handles images with highly noisy textures and increases the discriminative properties by capturing microstructure and macrostructure texture information. The method was evaluated on popular texture datasets for classification and retrieval tasks and under different high noise conditions. Without any training or prior knowledge of the noise type, RAMBP achieved the best classification compared to state-of-the-art techniques. It scored more than 90% under 50% impulse noise densities, more than 95% under Gaussian noised textures with a standard deviation σ = 5 , more than 99% under Gaussian blurred textures with a standard deviation σ = 1.25 , and more than 90% for mixed noise. The proposed method yielded competitive results and proved to be one of the best descriptors in noise-free texture classification. Furthermore, RAMBP showed high performance for the problem of noisy texture retrieval providing high scores of recall and precision measures for textures with high noise levels. Finally, compared with the state-of-the-art methods, RAMBP achieves a good running time with low feature dimensionality.
纹理是不同计算机视觉任务和应用中的一个重要特征。局部二值模式(LBP)被认为是目前最有效的纹理描述符之一。然而,LBP存在一些显著的局限性,特别是其对噪声的敏感性。在本文中,我们通过引入一种新颖的纹理描述符——鲁棒自适应中值二值模式(RAMBP)来解决这些问题。RAMBP基于一个涉及噪声像素分类、自适应分析窗口、尺度分析以及图像中值比较的过程。所提出的方法能够处理具有高噪声纹理的图像,并通过捕获微观结构和宏观结构纹理信息来提高判别特性。该方法在流行的纹理数据集上针对分类和检索任务以及在不同的高噪声条件下进行了评估。在没有任何关于噪声类型的训练或先验知识的情况下,与现有技术相比,RAMBP实现了最佳分类。在50%脉冲噪声密度下得分超过90%,在标准差σ = 5的高斯噪声纹理下得分超过95%,在标准差σ = 1.25的高斯模糊纹理下得分超过99%,在混合噪声下得分超过90%。所提出的方法产生了具有竞争力的结果,并被证明是无噪声纹理分类中最好的描述符之一。此外,RAMBP在噪声纹理检索问题上表现出高性能,为高噪声水平的纹理提供了高召回率和精确率指标。最后,与现有方法相比,RAMBP在低特征维度下实现了良好的运行时间。