Tiwari Shamik, Sharma Akhilesh Kumar, Abdul Aziz Izzatdin, Gupta Deepak, Jain Antima, Mahdin Hairulnizam, Athithan Senthil, Hidayat Rahmat
School of Computer Science & Engineering, IILM University, Gurugram, India.
Department of Data Science & Engineering, School of Information Security & Data Science, Manipal University Jaipur, Jaipur, Rajasthan, India.
PLoS One. 2025 Jan 10;20(1):e0315135. doi: 10.1371/journal.pone.0315135. eCollection 2025.
Texture is a significant component used for several applications in content-based image retrieval. Any texture classification method aims to map an anonymously textured input image to one of the existing texture classes. Extensive ranges of methods for labeling image texture were proposed earlier. However, computing the performance of these methods in the presence of various degradations is always an open area of discussion. Image noise is always a dominant factor among various image degradation factors, affecting the performance of these methods and making texture classification challenging. Therefore, it is essential to investigate the interpretation of these methods in the presence of prominent degradation factors such as noise. Applications for Segmentation-Based Fractal Texture Features (SFTF) include image classification, texture generation, and medical image analysis. They are beneficial for examining textures with intricate, erratic patterns that are difficult to characterize using conventional statistical techniques accurately. This paper assesses two texture feature extraction methods based on SFTF and statistical moment-based texture features in the presence and absence of Gaussian noise. The SFTF and statistical moments-based handcrafted features are passed to a multilayer feed-forward neural network for classification. These models are evaluated on natural textures from Kylberg Texture Dataset 1.0. The results show the superiority of segmentation-based fractal analysis over other approaches. The average accuracy rates using the SFTF are 99% and 97% in the absence and presence of Gaussian noise, respectively.
纹理是基于内容的图像检索中用于多种应用的重要组成部分。任何纹理分类方法都旨在将一张匿名纹理输入图像映射到现有的纹理类别之一。早期提出了大量用于标记图像纹理的方法。然而,在存在各种退化的情况下计算这些方法的性能一直是一个开放的讨论领域。在各种图像退化因素中,图像噪声始终是一个主导因素,它会影响这些方法的性能并使纹理分类具有挑战性。因此,研究这些方法在存在诸如噪声等突出退化因素时的解释至关重要。基于分割的分形纹理特征(SFTF)的应用包括图像分类、纹理生成和医学图像分析。它们有助于检查具有复杂、不规则图案的纹理,而使用传统统计技术很难准确表征这些纹理。本文评估了基于SFTF和基于统计矩的纹理特征这两种纹理特征提取方法在有无高斯噪声情况下的性能。基于SFTF和统计矩的手工特征被传递到一个多层前馈神经网络进行分类。这些模型在来自Kylberg纹理数据集1.0的自然纹理上进行评估。结果表明基于分割的分形分析优于其他方法。在无高斯噪声和有高斯噪声的情况下,使用SFTF的平均准确率分别为99%和97%。