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“Bag of visual words” and latent semantic analysis-based burning state recognition for rotary kiln sintering process

机译:基于视觉包和潜在语义分析的回转窑烧结过程燃烧状态识别

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For the sintering process of rotary kiln, the accurate recognition of burning zone state is considered to be the most critical issue. Due to the harsh environment inside the kiln and the limitation of the measuring device, the measurement is still a challenging task. Recently, flame image-based state recognition has received considerate attention. However, the recognition accuracy of previous image segmentation-based methods is hard to guarantee due to the disturbance from smoke and dust. In this study, a new method for burning state recognition without the need of image segmentation is proposed, with the goal of achieving more reliable state recognition. Firstly, scale invariant feature transform (SIFT) operator is employed to extract key feature points of flame image, and then “bag of visual words” is applied to vector quantize the SIFT descriptors, and term frequency-inverse document frequency weight is used to form the indexing table to reduce the dimensionality of feature representation. After obtaining such table, latent semantic analysis (LSA) is used to map the original “images-visual words” space to a latent semantic space to mitigate the problem of synonymy. Previously, very little attention has been paid to the saliency of topics. In our work, a topic selection procedure based on Mahalanobis separability measure is proposed, with the goal of making up the lack of location information to select topics that possess the maximum discriminative power to enhance classification performance. The contribution of our new burning state recognition method is threefold. Firstly, SIFT descriptor is robust to characterize local zones of flame image than the features extracted from image segmentation-based methods. Secondly, “bag of visual words” representation for flame images combined with LSA is feasible to recognize the burning state which has never been used before. Thirdly, our topic selection approach is not only to --generate a more meaningful topic subset, but also to improve classification performance. The proposed new method is validated through extensive experimental studies.
机译:对于回转窑的烧结过程,准确识别燃烧区状态被认为是最关键的问题。由于窑内的恶劣环境和测量设备的局限性,测量仍然是一项艰巨的任务。最近,基于火焰图像的状态识别受到了广泛的关注。然而,由于烟雾和灰尘的干扰,难以保证先前基于图像分割的方法的识别准确性。在这项研究中,提出了一种不需要图像分割的燃烧状态识别的新方法,目的是实现更可靠的状态识别。首先,使用尺度不变特征变换(SIFT)算子提取火焰图像的关键特征点,然后应用“视觉词袋”对SIFT描述子进行矢量量化,并使用词频逆文档频率权重来形成索引表以减少特征表示的维数。获取此类表后,使用潜在语义分析(LSA)将原始的“图像-视觉单词”空间映射到潜在语义空间,以缓解同义词问题。以前,很少关注主题的显着性。在我们的工作中,提出了一种基于马氏距离可分性度量的主题选择程序,其目的是弥补位置信息的不足,从而无法选择具有最大判别力的主题来增强分类性能。我们新的燃烧状态识别方法的贡献是三方面的。首先,与从基于图像分割的方法中提取的特征相比,SIFT描述符在表征火焰图像的局部区域方面具有较强的鲁棒性。其次,结合LSA的火焰图像的“视觉单词袋”表示法可用于识别以前从未使用过的燃烧状态。第三,我们的主题选择方法不仅是- -- 生成更有意义的主题子集,还可以提高分类性能。通过大量的实验研究验证了所提出的新方法。

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