基于Gabor滤波和特征火焰图像的回转窑烧结状态识别

Weitao Li, K. Mao, T. Chai, Hong Zhang, Hong Wang
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引用次数: 6

摘要

烧成状态的准确识别是回转窑烧结过程控制的关键。近年来,基于火焰图像的燃烧状态识别备受关注。然而,现有的大多数方法都需要精确的图像分割,由于窑内烟尘造成图像质量差,这是一个很大的挑战。在本研究中,我们开发了一种更可靠的无图像分割问题的燃烧状态识别方法。从操作员的经验来看,更容易识别的火焰和物质区域将有助于后续的特征提取和燃烧状态识别。基于此,我们提出将基于Gabor滤波的纹理分析作为预处理,进一步提高识别效果,然后基于特征火焰图像分解提取全局特征,最后使用模式分类器识别燃烧状态。我们的方法有三个优点。首先,我们的Gabor滤波器选择方法可以生成一个紧凑的滤波器组,以更好地区分roi,并为后续工作提供帮助。其次,特征火焰图像方法提供了图像的全局特征,具有较大的类可分性,因此可以获得更准确的分类性能。第三,该方法比基于图像分割的方法和基于温度的方法具有更强的鲁棒性和可靠性。实验研究表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gabor filter and eigen-flame image-based burning state recognition for sintering process of rotary kiln
Accurate recognition of burning state is critical in sintering process control of rotary kiln. Recently, flame image-based burning state recognition has received much attention. However, most of the existing methods demand accurate image segmentation, which is quite challenging due to poor image quality caused by smoke and dust inside the kiln. In this study, we develop a more reliable method for burning state recognition without image segmentation issue. From the experience of operators, more discriminable flame and material zones will facilitate the subsequent feature extraction and burning state recognition. Motivated by this knowledge, we propose to include texture analysis based on Gabor filter as a pre-processing to improve the recognition result further and then extract global features based on eigen-flame images decomposition, and finally recognize the burning state using pattern classifier. The advantages of our method are threefold. Firstly, our Gabor filter selection approach can generate a compact filter bank to distinguish ROIs much more and offers help to facilitate the sequel. Secondly, the eigen-flame image method provides global features of an image with large class separability and hence can lead to more accurate classification performance. Thirdly, the new method is more robust and reliable than image segmentation-based methods and temperature-based method. Experimental studies show the effectiveness of our method.
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