Flotation condition recognition based on multi-scale convolutional neural network and LBP algorithm
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摘要: 针对泡沫浮选加药状态检测困难、识别效率低和主观性强等问题,提出了一种结合多尺度卷积神经网络(CNN)特征及改进局部二值模式(LBP)计算方法的核随机权神经网络(K-RVFLNs)浮选工况识别方法。首先,对泡沫浮选图像进行非下采样Shearlet多尺度分解,将原始图像分解为不同频率尺度,设计多通道CNN网络对多尺度图像进行特征提取; 再通过改进LBP算法提取特征作为补充,将CNN提取的图像特征与LBP特征进行融合; 最后,通过核随机权神经网络映射到更高维空间进行分类决策,实现浮选加药状态的精确识别。实验结果表明,采用多尺度CNN及LBP-TOP特征融合的方法识别的精度比传统LBP算法提高了5.34 %,比采用单CNN特征的方法提高了3.76 %,结合K-RVFLNs实现浮选工况分类准确率高达96.38 %,识别精度和稳定性较现有方法有较大提升,且减少了人工干预,有利于提高生产效率。
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关键词:
- 图像处理 /
- 卷积神经网络 /
- 非下采样Shearlet变换 /
- 局部二值模式 /
- 随机权神经网络
Abstract: Aiming at the problems of difficult detection, low recognition efficiency and strong subjectivity of foam flotation dosing state, a flotation condition recognition method of nuclear random-weight neural networks(K-RVFLNs)combining multi-scale CNN characteristics and improved local binary patterns(LBP)calculation methods is proposed.Firstly, non-downsampling Shearlet multi-scale decomposition(NSST)is performed on the bubble flotation image, the original image is decomposed into different frequency scales, and a multi-channel CNN network is designed to extract features from the multi-scale image.By improving the LBP algorithm to extract features as a supplement, the image features extracted by CNN are fused with LBP features; Finally, the classification decision is made by mapping to a higher dimensional space by the nuclear stochastic right neural network, and the accurate identification of flotation dosing state is realized.Experimental results show that the method of multi-scale CNN and LBP-TOP feature fusion is 5.34 % higher than that of the traditional LBP algorithm, 3.76 % higher than that of single CNN feature recognition method, and the accuracy of flotation condition classification is as high as 96.38 % in combination with K-RVFLNs, and the recognition accuracy and stability are greatly improved compared with the existing methods, and this method reduces manual intervention and is conducive to improving production efficiency. -
表 1 不同方法的识别效果
Table 1. Recognition effect of different methods
类别 特征提取方法 分类算法 运行时间/s 准确率/% 方法1 气泡大小和形状的联合分布 最小二乘分类 1.053 85.62 方法2 泡沫大小分布、灰度特征、纹理特征 支持向量机 1.851 84.61 方法3 泡沫纹理特征 自适应权重支持向量机 2.158 89.78 方法4 气 K均值聚类 3.614 93.21 方法5 双模态特征提取 随机权神经网络 2.892 95.98 方法6 Alexnet网络迁移学习 随机森林 2.023 93.41 方法7 轻量型卷积神经网络模块 多层感知器 2.821 93.56 本文方法 NSST-CNN特征+LBP-TOP特征 核随机权神经网络 3.028 96.38 -
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