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Dust Explosion Characteristic Mechanisms Analysis Based on Information Identification

机译:基于信息识别的粉尘爆炸特征机理分析

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We present a novel and practical image characteristic information architecture recognition for explosive dust detection. The Fourier transform domain of the fractional derivative is used to define the image filtering framework. The Rudin-Osher-Fatemi (ROF) model, in a bounded variation imagery function space, is selected to obtain prior noise knowledge, including the noise variance. The texture and non-texture regions of the imagery are divided based on statistical information about the local image variance. We compare our proposed modelling with other widely adopted algorithms. This comparison reveals the feature recognition accuracy involved in achieving good segmentation performance. We thus demonstrated that the noise suppression and staircase effect were better for the dust imagery, and that the overlapping particles were effectively separated. The research results indicated the correctness and feasibility of the proposed model, which provides a theoretical and experimental basis for the design of dust explosion concentration intervals.
机译:我们提出了一种新颖实用的爆炸物粉尘检测图像特征信息体系结构识别。分数导数的傅立叶变换域用于定义图像过滤框架。在有界变化图像函数空间中选择Rudin-Osher-Fatemi(ROF)模型以获得先验噪声知识,包括噪声方差。基于有关局部图像差异的统计信息,对图像的纹理和非纹理区域进行划分。我们将我们提出的模型与其他广泛采用的算法进行比较。该比较揭示了实现良好的分割性能所涉及的特征识别精度。因此,我们证明了噪声抑制和阶梯效果对于灰尘图像具有更好的效果,并且重叠的颗粒被有效地分离了。研究结果表明了该模型的正确性和可行性,为粉尘爆炸浓度区间的设计提供了理论和实验依据。

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