Guillen Bonilla José Trinidad, Franco Rodríguez Nancy Elizabeth, Guillen Bonilla Héctor, Guillen Bonilla Alex, Rodríguez Betancourtt Verónica María, Jiménez Rodríguez Maricela, Sánchez Morales María Eugenia, Blanco Alonso Oscar
Departamento de Electro-Fotónica, Centro Universitario de Ciencias Exactas e Ingenierías, Universidad de Guadalajara, Blvd-M. García Barragán 1421, Guadalajara 44430, Jalisco, Mexico.
Departamento de Farmacología, Centro Universitario de Ciencias Exactas e Ingenierías, Universidad de Guadalajara, Blvd-M. García Barragán 1421, Guadalajara 44430, Jalisco, Mexico.
Sensors (Basel). 2023 Oct 10;23(20):8368. doi: 10.3390/s23208368.
In industrial applications based on texture classification, efficient and fast classifiers are extremely useful for quality control of industrial processes. The classifier of texture images has to satisfy two requirements: It must be efficient and fast. In this work, a texture unit is coded in parallel, and using observation windows larger than 3×3, a new texture spectrum called Texture Spectrum based on the Parallel Encoded Texture Unit (TS_PETU) is proposed, calculated, and used as a characteristic vector in a multi-class classifier, and then two image databases are classified. The first database contains images from the company Interceramic and the images were acquired under controlled conditions, and the second database contains tree stems and the images were acquired in natural environments. Based on our experimental results, the TS_PETU satisfied both requirements (efficiency and speed), was developed for binary images, and had high efficiency, and its compute time could be reduced by applying parallel coding concepts. The classification efficiency increased by using larger observational windows, and this one was selected based on the window size. Since the TS_PETU had high efficiency for Interceramic tile classification, we consider that the proposed technique has significant industrial applications.
在基于纹理分类的工业应用中,高效快速的分类器对于工业过程的质量控制极为有用。纹理图像分类器必须满足两个要求:它必须高效且快速。在这项工作中,对纹理单元进行并行编码,并使用大于3×3的观察窗口,提出、计算了一种基于并行编码纹理单元的新纹理谱(TS_PETU),并将其用作多类分类器中的特征向量,然后对两个图像数据库进行分类。第一个数据库包含来自Interceramic公司的图像,这些图像是在受控条件下获取的,第二个数据库包含树干图像,这些图像是在自然环境中获取的。基于我们的实验结果,TS_PETU满足了两个要求(效率和速度),是为二值图像开发的,具有很高的效率,并且通过应用并行编码概念可以减少其计算时间。使用更大的观察窗口提高了分类效率,并且根据窗口大小选择了该窗口。由于TS_PETU在Interceramic瓷砖分类中具有很高的效率,我们认为所提出的技术具有重要的工业应用价值。