Vieira Jardel, Abreu Eduardo, Florindo Joao B
Unidade Acadêmica Especial de Matemática e Tecnologia, Universidade Federal de Goiás, Av. Dr. Lamartine Pinto de Avelar 1120, St. Universitário, 75704-020 Catalão, Goiás Brasil.
Institute of Mathematics, Statistics and Scientific Computing, University of Campinas, Rua Sérgio Buarque de Holanda, 651, Cidade Universitária "Zeferino Vaz" - Distr. Barão Geraldo, CEP 13083-859 Campinas, SP Brasil.
Multimed Tools Appl. 2023;82(3):3581-3604. doi: 10.1007/s11042-022-12048-2. Epub 2022 Jul 11.
This work proposes a novel method based on a pseudo-parabolic diffusion process to be employed for texture recognition. The proposed operator is applied over a range of time scales giving rise to a family of images transformed by nonlinear filters. Therefore each of those images are encoded by a local descriptor (we use local binary patterns for that purpose) and they are summarized by a simple histogram, yielding in this way the image feature vector. Three main novelties are presented in this manuscript: (1) The introduction of a pseudo-parabolic model associated with the signal component of binary patterns to the process of texture recognition and a real-world application to the problem of identifying plant species based on the leaf surface image. (2) We also introduce a simple and efficient discrete pseudo-parabolic differential operator based on finite differences as texture descriptors. While the work in [26] uses complete local binary patterns, here we use the original version of the local binary pattern operator. (3) We also discuss, in more general terms, the possibilities of exploring pseudo-parabolic models for image analysis as they balance two types of processing that are fundamental for pattern recognition, i.e., they smooth undesirable details (possibly noise) at the same time that highlight relevant borders and discontinuities anisotropically. Besides the practical application, the proposed approach is also tested on the classification of well established benchmark texture databases. In both cases, it is compared with several state-of-the-art methodologies employed for texture recognition. Our proposal outperforms those methods in terms of classification accuracy, confirming its competitiveness. The good performance can be justified to a large extent by the ability of the pseudo-parabolic operator to smooth possibly noisy details inside homogeneous regions of the image at the same time that it preserves discontinuities that convey critical information for the object description. Such results also confirm that model-based approaches like the proposed one can still be competitive with the omnipresent learning-based approaches, especially when the user does not have access to a powerful computational structure and a large amount of labeled data for training.
这项工作提出了一种基于伪抛物型扩散过程的新颖方法,用于纹理识别。所提出的算子应用于一系列时间尺度,产生由非线性滤波器变换的一族图像。因此,这些图像中的每一个都由局部描述符进行编码(我们为此使用局部二值模式),并通过简单的直方图进行汇总,从而生成图像特征向量。本论文提出了三个主要的新颖之处:(1)将与二值模式的信号分量相关的伪抛物型模型引入纹理识别过程,并将其实际应用于基于叶片表面图像识别植物物种的问题。(2)我们还引入了一种基于有限差分的简单高效的离散伪抛物型微分算子作为纹理描述符。虽然文献[26]中的工作使用完整的局部二值模式,但在这里我们使用局部二值模式算子的原始版本。(3)我们还更广泛地讨论了探索伪抛物型模型用于图像分析的可能性,因为它们平衡了模式识别中两种基本的处理方式,即它们在平滑不期望的细节(可能是噪声)的同时,各向异性地突出相关的边界和不连续性。除了实际应用外,所提出的方法还在成熟的基准纹理数据库分类上进行了测试。在这两种情况下,都将其与用于纹理识别的几种最新方法进行了比较。我们的方法在分类准确率方面优于那些方法,证实了其竞争力。这种良好的性能在很大程度上可以归因于伪抛物型算子能够在平滑图像均匀区域内可能存在的噪声细节的同时,保留传达对象描述关键信息的不连续性。这些结果也证实了像所提出的这种基于模型的方法仍然可以与无处不在的基于学习的方法竞争,特别是当用户无法获得强大的计算结构和大量用于训练的标注数据时。