In the past few years, texture-based classification problems have proven their significance in many domains, from industrial inspection to health-related applications. New techniques and CNN-based architectures have been developed in recent years to solve texture-based classification problems. The limitation of these approaches is that none of them claims to be the best suited for all types of textures. Each technique has its advantage over a specific texture type. To address this issue, we are proposing a framework that combines existing techniques to extract texture features and displays better results than the present ones. The proposed framework works well on the most of the texture types, and in this framework, new techniques can also be added to achieve better results than existing ones. We are also presenting the SOTA results on FMD and KTH datasets by combining three existing techniques, using the proposed framework.
翻译:过去几年来,基于质地的分类问题在许多领域,从工业检查到与健康有关的应用,都证明了它们的重要性,近年来,为解决基于质地的分类问题,开发了新技术和有线电视新闻网的架构,以解决基于质地的分类问题;这些方法的局限性是,没有一种方法声称最适合所有类型的质地;每种技术都具有特定质地类型的优势;为解决这一问题,我们提出了一个框架,将现有技术结合在一起,以提取质地特征并显示比目前更好的结果;拟议的框架在大多数质地类型上运作良好,在这个框架内,还可以增加新技术,以取得比现有方法更好的结果;我们还利用拟议的框架,将三种现有技术合并在一起,介绍FMD和KTH数据集的STA结果。